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Summary of Metabolomics

Author and Curator: Larry H. Bernstein, MD, FCAP 

This concludes the series on metabolomics, a rapidly developing science that is interconnected with a group termed – OMICS: proteomics, transcriptomics, genomics, and metabolomics.  This chapter is most representative of the many important studies being done in the field, which ranges most widely because it has opened doors into nutrition and nutritional supplements, plant biochemistry, agricultural crops and breeding, animal breeding, worldwide malnutrition, diabetes, cancer, neurosciences, circulatory, respiratory, and musculosletal disorders, infectious diseases and immune system disorders.  Obviously, it is not possible to cover the full range of activity, but metabolomics is most comprehensive in exploring the full range of metabolic changes that occur in health during the full age range from development to the geriatric years.  It can be integrated well with gene expression, proteomics studies, and epidemiological investigations.

The subchapters are given here:

7.1   Extracellular evaluation of intracellular flux in yeast cells  

 http://pharmaceuticalintelligence.com/2014/08/25/extracellular-evaluation-of-intracellular-flux-in-yeast-cells/

 7.2    Metabolomic analysis of two leukemia cell lines. I.  

         http://pharmaceuticalintelligence.com/2014/08/23/metabolomic-analysis-of-two-leukemia-cell-lines-_i/

  7.3   Metabolomic analysis of two leukemia cell lines. II.

           http://pharmaceuticalintelligence.com/2014/08/24/metabolomic-analysis-of-two-leukemia-cell-lines-ii/

  7.4   Buffering of genetic modules involved in tricarboxylic acid cycle metabolism provides homeostatic
regulation
  

           http://pharmaceuticalintelligence.com/2014/08/27/buffering-of-genetic-modules-involved-in-tricarboxylic-acid-cycle-metabolism-provides-homeomeostatic-regulation/

  7.5   Metabolomics, Metabonomics and Functional Nutrition: the next step in nutritional metabolism and
biotherapeutics

 http://pharmaceuticalintelligence.com/2014/08/22/metabolomics-metabonomics-and-functional-nutrition-the-next-step-in-nutritional-metabolism-and-biotherapeutics/

    7.6    Isoenzymes in cell metabolic pathways

 http://pharmaceuticalintelligence.com/2014/10/06/isoenzymes-in-cell-metabolic-pathways/

7.7   A Brief Curation of Proteomics, Metabolomics, and Metabolism

http://pharmaceuticalintelligence.com/2014/10/03/a-brief-curation-of-proteomics-metabolomics-and-metabolism/

   7.8   Metabolomics is about Metabolic Systems Integration

     http://pharmaceuticalintelligence.com/2014/10/13/metabolomics-is-about-metabolic-systems-integration/

 7.9  Mechanisms of Drug Resistance

   http://pharmaceuticalintelligence.com/2014/10/09/mechanisms-of-drug-resistance/

7.10  Development Of Super-Resolved Fluorescence Microscopy

    http://pharmaceuticalintelligence.com/2014/10/12/development-of-super-resolved-fluorescence-microscopy  

7.11  Metabolic Reactions Need Just Enough

 http://pharmaceuticalintelligence.com/2014/10/14/metabolic-reactions-need-just-enough/

7.12  Metabolomics Summary and Perspective

   This chapter will be followed by an exploration of disease and pharmaceutical directed studies using these methods  8. Impairments in pathological states: endocrine disorders; stress
hypermetabolism; cancer.

Networking metabolites and diseases

P Braun, E Rietman, and M Vidal
Center for Cancer Systems Biology and Department of Cancer Biology, Dana-Farber Cancer Institute, and Department of Genetics, Harvard Medical School,  Boston, MA; and Physical Sciences Inc., Andover, MA 01810
PNAS July 22, 2008; 105(29): 9849–9850.    http://pnas.org/cgi/doi/10.1073/pnas.0805644105

Biological systems are increasingly viewed and analyzed as

  • highly complex networks of interlinked macromolecules and metabolites.

Network analysis has been applied to

  • interactome maps of protein–protein, protein–DNA, and protein–RNA interactions
  • as well as transcriptional, metabolic, and genetic data.

Such network views of biological systems should facilitate the detection of

  • nonlinear long-range effects of perturbations, for example, by mutations, and
  • help identification of unanticipated indirect causal connections.

Diseasome and Drug-Target Network

Recently, Goh et al. (1) constructed a ‘‘diseasome’’ network in which

  • two diseases are linked to each other if
  • they share at least one gene, in which mutations are associated with both diseases.

In the resulting network, related disease families cluster tightly together, thus

  • phenotypically defining functional modules.

Importantly, for the first time this study applied concepts from network biology to human diseases,

  • thus opening the door for discovering causal relationships between
  • disregulated networks and resulting ailments.

Subsequently Yilderim et al. (2) linked drugs to protein targets in a drug–target network,

  • which could then be overlaid with the diseasome network.

One notable finding was the recent trend toward the development of

  • new compounds directly targeted at disease gene products, whereas previous drugs,
  • often found by trial and error, appear to target proteins only indirectly related to
  • the actual disease molecular mechanisms.

An important question that remains in this emerging field of network analysis consists of

  • investigating the extent to which directly targeting the product of mutated genes is an efficient approach or
  • whether targeting network properties instead, and
  • thereby accounting for indirect nonlinear effects of system perturbations by drugs, may prove more fruitful.

However, to answer such questions it is important to have a good understanding of the various influences that can lead to diseases.

Metabolic Connections

One group of diseases that was very poorly connected in the original diseasome network was the family of metabolic diseases.

In this issue of PNAS, Lee et al. (3) hypothesize that metabolic diseases may instead be connected

  • via metabolites and common reactions.

To investigate this hypothesis Lee et al. first constructed a metabolic network from data available in

  • two manually curated databases detailing well known
  1. metabolic reactions,
  2. the involved metabolites, and
  3. catalyzing enzymes.

In addition, gene–disease associations were identified by using the Online Mendelian Inheritance in Man (OMIM) database (http://ncbi.nlm.nih.gov/sites/
entrez?dbomim&itooltoolbar). In a last step,

  • a metabolic disease network (MDN) was constructed by connecting
  • two diseases if their associated genes are linked in the metabolic network
  • by a common metabolite or metabolites used in a common reaction.

Metabolites are not only linked by common reactions, but

  • on a larger scale by coupled fluxes within a metabolic network,
  • which may also influence disease phenotypes.

An increase in the concentration of one metabolite may increase several fluxes

  • across reaction pathways that use this compound, which
  • may lead to diverse phenotypes and distinct diseases.

The fluxes within the metabolic network are calculated by using

  • the Flux Coupling Finder method described by Nikolaev et al. (4) and Burgard et al. (5),
  • which is based on the assumption that pools of metabolites are conserved.

To functionally validate the network, coexpression correlations are measured for genes

  • linked by adjacent reactions and those linked by fluxes.

Interestingly, the average coexpression correlation for flux-coupled genes (0.31)

  • is higher than that for genes simply catalyzing adjacent reactions (0.24)
    (compared with 0.10 for all gene pairs in the network).

If the links between diseases identified in the MDN are functionally and causally relevant

  • it should be expected that linked diseases occur more frequently in the same individual.

To test this hypothesis, Lee et al. (3) measured the co-occurrence of diseases in patients by using detailed Medicare information

  • of 13 million patients and 32 million hospital visits within a 3-year period.

A comorbidity index was computed to measure the degree to which one disease

  • will increase the likelihood of a second disease in the same patient.

The average comorbidity for all genes is 0.0008 (Pearson correlation coefficient),

  • which increases 3-fold to 0.0027 when disease pairs that are metabolically linked are analyzed,
  • which is highly statistically significant (P 108).

When diseases are analyzed that are directionally coupled by a flux (see ref. 3 for details),

  • the correlation increases to 0.0062.

Thus, whereas 17% of all diseases in the network show significant comorbidity, this fraction

  • nearly doubles to 31% for metabolically linked diseases.

Further analysis reveals that comorbidity effects can be detected up to three links (metabolites, reactions)

  • apart from each other with statistical significance, but not farther away.

In the MDN, several highly connected hubs, e.g., hypertension and hemolytic anemia, are

  • linked to many different co-occurring diseases not unexpected for such complex diseases
  • that can result from many different genetic alterations or variants.

Importantly, though, most of the connections to the different linked diseases

  • are mediated by diverse connections in the metabolic network.

Thus, in the future such insights may be helpful for finer classification of the complex hub disease.

Furthermore, depending on the onset of the complex (hub) disease in relation to the associated diseases,

  • such relationships may potentially be used to systematically
  • stratify patients and develop targeted treatments acting on
  • the underlying metabolic links.

Returning to the starting point of their study, Lee et al. (3) next investigated

  • whether metabolic diseases are better linked through the metabolic network
  • than they are in the previously described gene–disease network.

When purely metabolic diseases are considered, the comorbidity is, in fact,

  • best predicted by metabolic links.

Interestingly, when all diseases linked to metabolic enzymes are considered,

  • which involves many diseases that are merely related to metabolic diseases through multifunctional enzymes,
  • the gene and metabolic networks are nearly equally predictive of comorbidity,
  • indicating that as a general approach information from
  • many different biological dimensions should be integrated to identify the most relevant connections.

Together, all these findings support the initial hypothesis that metabolic diseases are linked by metabolic networks.

Practically, alteration of one metabolite or one reaction can have numerous repercussions in the network,

  • each of which can manifest as different diseases that frequently occur together in affected patients.

Radoslav Bozov

  1. Glycine, as the only amino acid having no isomer driven central carbon allowing for hing occupancy of ‘free’
    motifs, where quark (proton) ‘fluxes’ play at, is a one – step away observable (1) from synthesis of pyrimidines
    to glyoxylate mitochondrial ‘shunt’ entangling at least two differential compartments longly objected by
    Japanese metabolomics study groups.
  2. One carbon systems emerge out of a glycoprotein ‘complex’, pyrimidine synthase pathway, that possesses
    significant similarity to  BRCA2 and most other transcription factors suggesting that protein allocation is
    coorchestrated by modifications and spatially transforming construes as an outcome of energy processing.
    Directly deduced by TCS, life cannot exist without mutations, as mutations and chromatin states appear to
    be a sort of energy hold and release ‘gates’.
  3. Phosphorylations and small molecules as such as cGMP, cAMP play a role of decompression machinery
    for amplifying bio signal processing C-S, C-N, C-O, interference open systems.  By decompression
    of one relative discrete space, another one becomes compressed, which gets uncertainty of absolute energy
    processing within space scalar wise into vector objected space represented by chromatin remodeling processes,
    possibly seen as network identities information.
  4. Unifying network and quantum theory possess implications to relativity concepts and energy relevant computational methodology.
 translational medicine

translational medicine

Shifts in steady-state profiles caused by kinetic perturbations

Shifts in steady-state profiles caused by kinetic perturbations

mapping metabolomic data using three different approaches

mapping metabolomic data using three different approaches

network genetics metabotypes -  integrated metabolome and interactome mapping (iMIM)

network genetics metabotypes – integrated metabolome and interactome mapping (iMIM)

metabol leukem cell lines

metabol leukem cell lines

Metabolome Informatics Research

Metabolome Informatics Research

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Summary to Metabolomics

Summary to Metabolomics

Author and Curator: Larry H. Bernstein, MD, FCAP 

This concludes a long step-by-step journey into rediscovering biological processes from the genome as a framework to the remodeled and reconstituted cell through a number of posttranscription and posttranslation processes that modify the proteome and determine the metabolome.  The remodeling process continues over a lifetime. The process requires a balance between nutrient intake, energy utilization for work in the lean body mass, energy reserves, endocrine, paracrine and autocrine mechanisms, and autophagy.  It is true when we look at this in its full scope – What a creature is man?

http://masspec.scripps.edu/metabo_science/recommended_readings.php
 Recommended Readings and Historical Perspectives

Metabolomics is the scientific study of chemical processes involving metabolites. Specifically, metabolomics is the “systematic study of the unique chemical fingerprints that specific cellular processes leave behind”, the study of their small-molecule metabolite profiles.[1] The metabolome represents the collection of all metabolites in a biological cell, tissue, organ or organism, which are the end products of cellular processes.[2] mRNA gene expression data and proteomic analyses reveal the set of gene products being produced in the cell, data that represents one aspect of cellular function. Conversely, metabolic profiling can give an instantaneous snapshot of the physiology of that cell. One of the challenges of systems biology and functional genomics is to integrate proteomic, transcriptomic, and metabolomic information to provide a better understanding of cellular biology.

The term “metabolic profile” was introduced by Horning, et al. in 1971 after they demonstrated that gas chromatography-mass spectrometry (GC-MS) could be used to measure compounds present in human urine and tissue extracts. The Horning group, along with that of Linus Pauling and Arthur B. Robinson led the development of GC-MS methods to monitor the metabolites present in urine through the 1970s.

Concurrently, NMR spectroscopy, which was discovered in the 1940s, was also undergoing rapid advances. In 1974, Seeley et al. demonstrated the utility of using NMR to detect metabolites in unmodified biological samples.This first study on muscle highlighted the value of NMR in that it was determined that 90% of cellular ATP is complexed with magnesium. As sensitivity has improved with the evolution of higher magnetic field strengths and magic angle spinning, NMR continues to be a leading analytical tool to investigate metabolism. Efforts to utilize NMR for metabolomics have been influenced by the laboratory of Dr. Jeremy Nicholson at Birkbeck College, University of London and later at Imperial College London. In 1984, Nicholson showed 1H NMR spectroscopy could potentially be used to diagnose diabetes mellitus, and later pioneered the application of pattern recognition methods to NMR spectroscopic data.

In 2005, the first metabolomics web database, METLIN, for characterizing human metabolites was developed in the Siuzdak laboratory at The Scripps Research Institute and contained over 10,000 metabolites and tandem mass spectral data. As of September 2012, METLIN contains over 60,000 metabolites as well as the largest repository of tandem mass spectrometry data in metabolomics.

On 23 January 2007, the Human Metabolome Project, led by Dr. David Wishart of the University of Alberta, Canada, completed the first draft of the human metabolome, consisting of a database of approximately 2500 metabolites, 1200 drugs and 3500 food components. Similar projects have been underway in several plant species, most notably Medicago truncatula and Arabidopsis thaliana for several years.

As late as mid-2010, metabolomics was still considered an “emerging field”. Further, it was noted that further progress in the field depended in large part, through addressing otherwise “irresolvable technical challenges”, by technical evolution of mass spectrometry instrumentation.

Metabolome refers to the complete set of small-molecule metabolites (such as metabolic intermediates, hormones and other signaling molecules, and secondary metabolites) to be found within a biological sample, such as a single organism. The word was coined in analogy with transcriptomics and proteomics; like the transcriptome and the proteome, the metabolome is dynamic, changing from second to second. Although the metabolome can be defined readily enough, it is not currently possible to analyse the entire range of metabolites by a single analytical method. The first metabolite database(called METLIN) for searching m/z values from mass spectrometry data was developed by scientists at The Scripps Research Institute in 2005. In January 2007, scientists at the University of Alberta and the University of Calgary completed the first draft of the human metabolome. They catalogued approximately 2500 metabolites, 1200 drugs and 3500 food components that can be found in the human body, as reported in the literature. This information, available at the Human Metabolome Database (www.hmdb.ca) and based on analysis of information available in the current scientific literature, is far from complete.

Each type of cell and tissue has a unique metabolic ‘fingerprint’ that can elucidate organ or tissue-specific information, while the study of biofluids can give more generalized though less specialized information. Commonly used biofluids are urine and plasma, as they can be obtained non-invasively or relatively non-invasively, respectively. The ease of collection facilitates high temporal resolution, and because they are always at dynamic equilibrium with the body, they can describe the host as a whole.

Metabolites are the intermediates and products of metabolism. Within the context of metabolomics, a metabolite is usually defined as any molecule less than 1 kDa in size.
A primary metabolite is directly involved in the normal growth, development, and reproduction. A secondary metabolite is not directly involved in those processes.  By contrast, in human-based metabolomics, it is more common to describe metabolites as being either endogenous (produced by the host organism) or exogenous. Metabolites of foreign substances such as drugs are termed xenometabolites. The metabolome forms a large network of metabolic reactions, where outputs from one enzymatic chemical reaction are inputs to other chemical reactions.

Metabonomics is defined as “the quantitative measurement of the dynamic multiparametric metabolic response of living systems to pathophysiological stimuli or genetic modification”. The word origin is from the Greek μεταβολή meaning change and nomos meaning a rule set or set of laws. This approach was pioneered by Jeremy Nicholson at Imperial College London and has been used in toxicology, disease diagnosis and a number of other fields. Historically, the metabonomics approach was one of the first methods to apply the scope of systems biology to studies of metabolism.

There is a growing consensus that ‘metabolomics’ places a greater emphasis on metabolic profiling at a cellular or organ level and is primarily concerned with normal endogenous metabolism. ‘Metabonomics’ extends metabolic profiling to include information about perturbations of metabolism caused by environmental factors (including diet and toxins), disease processes, and the involvement of extragenomic influences, such as gut microflora. This is not a trivial difference; metabolomic studies should, by definition, exclude metabolic contributions from extragenomic sources, because these are external to the system being studied.

Toxicity assessment/toxicology. Metabolic profiling (especially of urine or blood plasma samples) detects the physiological changes caused by toxic insult of a chemical (or mixture of chemicals).

Functional genomics. Metabolomics can be an excellent tool for determining the phenotype caused by a genetic manipulation, such as gene deletion or insertion. Sometimes this can be a sufficient goal in itself—for instance, to detect any phenotypic changes in a genetically-modified plant intended for human or animal consumption. More exciting is the prospect of predicting the function of unknown genes by comparison with the metabolic perturbations caused by deletion/insertion of known genes.

Nutrigenomics is a generalised term which links genomics, transcriptomics, proteomics and metabolomics to human nutrition. In general a metabolome in a given body fluid is influenced by endogenous factors such as age, sex, body composition and genetics as well as underlying pathologies. The large bowel microflora are also a very significant potential confounder of metabolic profiles and could be classified as either an endogenous or exogenous factor. The main exogenous factors are diet and drugs. Diet can then be broken down to nutrients and non- nutrients.

http://en.wikipedia.org/wiki/Metabolomics

Jose Eduardo des Salles Roselino

The problem with genomics was it was set as explanation for everything. In fact, when something is genetic in nature the genomic reasoning works fine. However, this means whenever an inborn error is found and only in this case the genomic knowledge afterwards may indicate what is wrong and not the completely way to put biology upside down by reading everything in the DNA genetic as well as non-genetic problems.

Coordination of the transcriptome and metabolome by the circadian clock PNAS 2012

Coordination of the transcriptome and metabolome by the circadian clock PNAS 2012

analysis of metabolomic data and differential metabolic regulation for fetal lungs, and maternal blood plasma

conformational changes leading to substrate efflux.img

conformational changes leading to substrate efflux.img

The cellular response is defined by a network of chemogenomic response signatures.

The cellular response is defined by a network of chemogenomic response signatures.

Dynamic Construct of the –Omics

Dynamic Construct of the –Omics

 genome cartoon

genome cartoon

central dogma phenotype

central dogma phenotype

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Introduction to Metabolomics

Introduction to Metabolomics

Author: Larry H. Bernstein, MD, FCAP

 

This is the first volume of the Series D: e-Books on BioMedicine – Metabolomics, Immunology, Infectious Diseases.  It is written for comprehension at the third year medical student level, or as a reference for licensing board exams, but it is also written for the education of a first time bachalaureate degree reader in the biological sciences.  Hopefully, it can be read with great interest by the undergraduate student who is undecided in the choice of a career.

In the Preface, I failed to disclose that the term Metabolomics applies to plants, animals, bacteria, and both prokaryotes and eukaryotes.  The metabolome for each organism is unique, but from an evolutionary perspective has metabolic pathways in common, and expressed in concert with the environment that these living creatures exist. The metabolome of each has adaptive accommodation with suppression and activation of pathways that are functional and necessary in balance, for its existence.  Was it William Faulkner who said in his Nobel Prize acceptance that mankind shall not merely exist, but survive? That seems to be the overlying theme for all of life. If life cannot persist, a surviving “remnant” might continue. The history of life may well be etched into the genetic code, some of which is not expressed.

This work is apportioned into chapters in a sequence that is first directed at the major sources for the energy and the structure of life, in the carbohydrates, lipids, and fats, which are sourced from both plants and animals, and depending on their balance, results in an equilibrium, and a disequilibrium we refer to as disease.  There is also a need to consider the nonorganic essentials which are derived from the soil, from water, and from the energy of the sun and the air we breathe, or in the case of water-bound metabolomes, dissolved gases.

In addition to the basic essential nutrients and their metabolic utilization, they are under cellular metabolic regulation that is tied to signaling pathways.  In addition, the genetic expression of the organism is under regulatory control by the interaction of RNAs that interact with the chromatin genetic framework, with exosomes, and with protein modulators.This is referred to as epigenetics, but there are also drivers of metabolism that are shaped by the interactions between enzymes and substartes, and are related to the tertiary structure of a protein.  The framework for diseases in a separate chapter.  Pharmaceutical interventions that are designed to modulate specific metabolic targets are addressed as the pathways are unfolded. Neutraceuticals and plant based nutrition are covered in Chapter 8.

Chapter 1: Metabolic Pathways

Chapter 2. Lipid Metabolism

Chapter 3. Cell Signaling

Chapter 4. Protein Synthesis and Degradation

Chapter 5: Sub-cellular Structure

Chapter 6: Proteomics

Chapter 7: Metabolomics

Chapter 8. Impairments in Pathological States: Endocrine Disorders; Stress Hypermetabolism and Cancer

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Preface to Metabolomics as a Discipline in Medicine

Author: Larry H. Bernstein, MD, FCAP

 

The family of ‘omics fields has rapidly outpaced its siblings over the decade since
the completion of the Human Genome Project.  It has derived much benefit from
the development of Proteomics, which has recently completed a first draft of the
human proteome.  Since genomics, transcriptomics, and proteomics, have matured
considerably, it has become apparent that the search for a driver or drivers of cellular signaling and metabolic pathways could not depend on a full clarity of the genome. There have been unresolved issues, that are not solely comprehended from assumptions about mutations.

The most common diseases affecting mankind are derangements in metabolic
pathways, develop at specific ages periods, and often in adulthood or in the
geriatric period, and are at the intersection of signaling pathways.  Moreover,
the organs involved and systemic features are heavily influenced by physical
activity, and by the air we breathe and the water we drink.

The emergence of the new science is also driven by a large body of work
on protein structure, mechanisms of enzyme action, the modulation of gene
expression, the pH dependent effects on protein binding and conformation.
Beyond what has just been said, a significant portion of DNA has been
designated as “dark matter”. It turns out to have enormous importance in
gene regulation, even though it is not transcriptional, effected in a
modulatory way by “noncoding RNAs.  Metabolomics is the comprehensive
analysis of small molecule metabolites. These might be substrates of
sequenced enzyme reactions, or they might be “inhibiting” RNAs just
mentioned.  In either case, they occur in the substructures of the cell
called organelles, the cytoplasm, and in the cytoskeleton.

The reactions are orchestrated, and they can be modified with respect to
the flow of metabolites based on pH, temperature, membrane structural
modifications, and modulators.  Since most metabolites are generated by
enzymatic proteins that result from gene expression, and metabolites give
organisms their biochemical characteristics, the metabolome links
genotype with phenotype.

Metabolomics is still developing, and the continued development has
relied on two major events. The first is chromatographic separation and
mass  spectroscopy (MS), MS/MS, as well as advances in fluorescence
ultrasensitive optical photonic methods, and the second, as crucial,
is the developments in computational biology. The continuation of
this trend brings expectations of an impact on pharmaceutical and
on neutraceutical developments, which will have an impact on medical
practice. What has lagged behind, and may continue to contribute to the
lag is the failure to develop a suitable electronic medical record to
assist the physician in decisions confronted with so much as yet,
hidden data, the ready availability of which could guide more effective
diagnosis and management of the patient. Put all of this together, and
we can meet series challenges as the research community
interprets and integrates the complex data they are acquiring.

.

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Metabolomics Summary and Perspective

Metabolomics Summary and Perspective

Author and Curator: Larry H Bernstein, MD, FCAP 

 

This is the final article in a robust series on metabolism, metabolomics, and  the “-OMICS-“ biological synthesis that is creating a more holistic and interoperable view of natural sciences, including the biological disciplines, climate science, physics, chemistry, toxicology, pharmacology, and pathophysiology with as yet unforeseen consequences.

There have been impressive advances already in the research into developmental biology, plant sciences, microbiology, mycology, and human diseases, most notably, cancer, metabolic , and infectious, as well as neurodegenerative diseases.

Acknowledgements:

I write this article in honor of my first mentor, Harry Maisel, Professor and Emeritus Chairman of Anatomy, Wayne State University, Detroit, MI and to my stimulating mentors, students, fellows, and associates over many years:

Masahiro Chiga, MD, PhD, Averill A Liebow, MD, Nathan O Kaplan, PhD, Johannes Everse, PhD, Norio Shioura, PhD, Abraham Braude, MD, Percy J Russell, PhD, Debby Peters, Walter D Foster, PhD, Herschel Sidransky, MD, Sherman Bloom, MD, Matthew Grisham, PhD, Christos Tsokos, PhD,  IJ Good, PhD, Distinguished Professor, Raool Banagale, MD, Gustavo Reynoso, MD,Gustave Davis, MD, Marguerite M Pinto, MD, Walter Pleban, MD, Marion Feietelson-Winkler, RD, PhD,  John Adan,MD, Joseph Babb, MD, Stuart Zarich, MD,  Inder Mayall, MD, A Qamar, MD, Yves Ingenbleek, MD, PhD, Emeritus Professor, Bette Seamonds, PhD, Larry Kaplan, PhD, Pauline Y Lau, PhD, Gil David, PhD, Ronald Coifman, PhD, Emeritus Professor, Linda Brugler, RD, MBA, James Rucinski, MD, Gitta Pancer, Ester Engelman, Farhana Hoque, Mohammed Alam, Michael Zions, William Fleischman, MD, Salman Haq, MD, Jerard Kneifati-Hayek, Madeleine Schleffer, John F Heitner, MD, Arun Devakonda,MD, Liziamma George,MD, Suhail Raoof, MD, Charles Oribabor,MD, Anthony Tortolani, MD, Prof and Chairman, JRDS Rosalino, PhD, Aviva Lev Ari, PhD, RN, Rosser Rudolph, MD, PhD, Eugene Rypka, PhD, Jay Magidson, PhD, Izaak Mayzlin, PhD, Maurice Bernstein, PhD, Richard Bing, Eli Kaplan, PhD, Maurice Bernstein, PhD.

This article has EIGHT parts, as follows:

Part 1

Metabolomics Continues Auspicious Climb

Part 2

Biologists Find ‘Missing Link’ in the Production of Protein Factories in Cells

Part 3

Neuroscience

Part 4

Cancer Research

Part 5

Metabolic Syndrome

Part 6

Biomarkers

Part 7

Epigenetics and Drug Metabolism

Part 8

Pictorial

genome cartoon

genome cartoon

 iron metabolism

iron metabolism

personalized reference range within population range

personalized reference range within population range

Part 1.  MetabolomicsSurge

metagraph  _OMICS

metagraph _OMICS

Metabolomics Continues Auspicious Climb

Jeffery Herman, Ph.D.
GEN May 1, 2012 (Vol. 32, No. 9)

Aberrant biochemical and metabolite signaling plays an important role in

  • the development and progression of diseased tissue.

This concept has been studied by the science community for decades. However, with relatively

  1. recent advances in analytical technology and bioinformatics as well as
  2. the development of the Human Metabolome Database (HMDB),

metabolomics has become an invaluable field of research.

At the “International Conference and Exhibition on Metabolomics & Systems Biology” held recently in San Francisco, researchers and industry leaders discussed how

  • the underlying cellular biochemical/metabolite fingerprint in response to
  1. a specific disease state,
  2. toxin exposure, or
  3. pharmaceutical compound
  • is useful in clinical diagnosis and biomarker discovery and
  • in understanding disease development and progression.

Developed by BASF, MetaMap® Tox is

  • a database that helps identify in vivo systemic effects of a tested compound, including
  1. targeted organs,
  2. mechanism of action, and
  3. adverse events.

Based on 28-day systemic rat toxicity studies, MetaMap Tox is composed of

  • differential plasma metabolite profiles of rats
  • after exposure to a large variety of chemical toxins and pharmaceutical compounds.

“Using the reference data,

  • we have developed more than 110 patterns of metabolite changes, which are
  • specific and predictive for certain toxicological modes of action,”

said Hennicke Kamp, Ph.D., group leader, department of experimental toxicology and ecology at BASF.

With MetaMap Tox, a potential drug candidate

  • can be compared to a similar reference compound
  • using statistical correlation algorithms,
  • which allow for the creation of a toxicity and mechanism of action profile.

“MetaMap Tox, in the context of early pre-clinical safety enablement in pharmaceutical development,” continued Dr. Kamp,

  • has been independently validated “
  • by an industry consortium (Drug Safety Executive Council) of 12 leading biopharmaceutical companies.”

Dr. Kamp added that this technology may prove invaluable

  • allowing for quick and accurate decisions and
  • for high-throughput drug candidate screening, in evaluation
  1. on the safety and efficacy of compounds
  2. during early and preclinical toxicological studies,
  3. by comparing a lead compound to a variety of molecular derivatives, and
  • the rapid identification of the most optimal molecular structure
  • with the best efficacy and safety profiles might be streamlined.
Dynamic Construct of the –Omics

Dynamic Construct of the –Omics

Targeted Tandem Mass Spectrometry

Biocrates Life Sciences focuses on targeted metabolomics, an important approach for

  • the accurate quantification of known metabolites within a biological sample.

Originally used for the clinical screening of inherent metabolic disorders from dried blood-spots of newborn children, Biocrates has developed

  • a tandem mass spectrometry (MS/MS) platform, which allows for
  1. the identification,
  2. quantification, and
  3. mapping of more than 800 metabolites to specific cellular pathways.

It is based on flow injection analysis and high-performance liquid chromatography MS/MS.

Clarification of Pathway-Specific Inhibition by Fourier Transform Ion Cyclotron Resonance.Mass Spectrometry-Based Metabolic Phenotyping Studies F5.large

common drug targets

common drug targets

The MetaDisIDQ® Kit is a

  • “multiparamatic” diagnostic assay designed for the “comprehensive assessment of a person’s metabolic state” and
  • the early determination of pathophysiological events with regards to a specific disease.

MetaDisIDQ is designed to quantify

  • a diverse range of 181 metabolites involved in major metabolic pathways
  • from a small amount of human serum (10 µL) using isotopically labeled internal standards,

This kit has been demonstrated to detect changes in metabolites that are commonly associated with the development of

  • metabolic syndrome, type 2 diabetes, and diabetic nephropathy,

Dr. Dallman reports that data generated with the MetaDisIDQ kit correlates strongly with

  • routine chemical analyses of common metabolites including glucose and creatinine

Biocrates has also developed the MS/MS-based AbsoluteIDQ® kits, which are

  • an “easy-to-use” biomarker analysis tool for laboratory research.

The kit functions on MS machines from a variety of vendors, and allows for the quantification of 150-180 metabolites.

The SteroIDQ® kit is a high-throughput standardized MS/MS diagnostic assay,

  • validated in human serum, for the rapid and accurate clinical determination of 16 known steroids.

Initially focusing on the analysis of steroid ranges for use in hormone replacement therapy, the SteroIDQ Kit is expected to have a wide clinical application.

Hormone-Resistant Breast Cancer

Scientists at Georgetown University have shown that

  • breast cancer cells can functionally coordinate cell-survival and cell-proliferation mechanisms,
  • while maintaining a certain degree of cellular metabolism.

To grow, cells need energy, and energy is a product of cellular metabolism. For nearly a century, it was thought that

  1. the uncoupling of glycolysis from the mitochondria,
  2. leading to the inefficient but rapid metabolism of glucose and
  3. the formation of lactic acid (the Warburg effect), was

the major and only metabolism driving force for unchecked proliferation and tumorigenesis of cancer cells.

Other aspects of metabolism were often overlooked.

“.. we understand now that

  • cellular metabolism is a lot more than just metabolizing glucose,”

said Robert Clarke, Ph.D., professor of oncology and physiology and biophysics at Georgetown University. Dr. Clarke, in collaboration with the Waters Center for Innovation at Georgetown University (led by Albert J. Fornace, Jr., M.D.), obtained

  • the metabolomic profile of hormone-sensitive and -resistant breast cancer cells through the use of UPLC-MS.

They demonstrated that breast cancer cells, through a rather complex and not yet completely understood process,

  1. can functionally coordinate cell-survival and cell-proliferation mechanisms,
  2. while maintaining a certain degree of cellular metabolism.

This is at least partly accomplished through the upregulation of important pro-survival mechanisms; including

  • the unfolded protein response;
  • a regulator of endoplasmic reticulum stress and
  • initiator of autophagy.

Normally, during a stressful situation, a cell may

  • enter a state of quiescence and undergo autophagy,
  • a process by which a cell can recycle organelles
  • in order to maintain enough energy to survive during a stressful situation or,

if the stress is too great,

  • undergo apoptosis.

By integrating cell-survival mechanisms and cellular metabolism

  • advanced ER+ hormone-resistant breast cancer cells
  • can maintain a low level of autophagy
  • to adapt and resist hormone/chemotherapy treatment.

This adaptation allows cells

  • to reallocate important metabolites recovered from organelle degradation and
  • provide enough energy to also promote proliferation.

With further research, we can gain a better understanding of the underlying causes of hormone-resistant breast cancer, with

  • the overall goal of developing effective diagnostic, prognostic, and therapeutic tools.

NMR

Over the last two decades, NMR has established itself as a major tool for metabolomics analysis. It is especially adept at testing biological fluids. [Bruker BioSpin]

Historically, nuclear magnetic resonance spectroscopy (NMR) has been used for structural elucidation of pure molecular compounds. However, in the last two decades, NMR has established itself as a major tool for metabolomics analysis. Since

  • the integral of an NMR signal is directly proportional to
  • the molar concentration throughout the dynamic range of a sample,

“the simultaneous quantification of compounds is possible

  • without the need for specific reference standards or calibration curves,” according to Lea Heintz of Bruker BioSpin.

NMR is adept at testing biological fluids because of

  1.  high reproducibility,
  2. standardized protocols,
  3. low sample manipulation, and
  4. the production of a large subset of data,

Bruker BioSpin is presently involved in a project for the screening of inborn errors of metabolism in newborn children from Turkey, based on their urine NMR profiles. More than 20 clinics are participating to the project that is coordinated by INFAI, a specialist in the transfer of advanced analytical technology into medical diagnostics. The construction of statistical models are being developed

  • for the detection of deviations from normality, as well as
  • automatic quantification methods for indicative metabolites

Bruker BioSpin recently installed high-resolution magic angle spinning NMR (HRMAS-NMR) systems that can rapidly analyze tissue biopsies. The main objective for HRMAS-NMR is to establish a rapid and effective clinical method to assess tumor grade and other important aspects of cancer during surgery.

Combined NMR and Mass Spec

There is increasing interest in combining NMR and MS, two of the main analytical assays in metabolomic research, as a means

  • to improve data sensitivity and to
  • fully elucidate the complex metabolome within a given biological sample.
  •  to realize a potential for cancer biomarker discovery in the realms of diagnosis, prognosis, and treatment.

.

Using combined NMR and MS to measure the levels of nearly 250 separate metabolites in the patient’s blood, Dr. Weljie and other researchers at the University of Calgary were able to rapidly determine the malignancy of a  pancreatic lesion (in 10–15% of the cases, it is difficult to discern between benign and malignant), while avoiding unnecessary surgery in patients with benign lesions.

When performing NMR and MS on a single biological fluid, ultimately “we are,” noted Dr. Weljie,

  1. “splitting up information content, processing, and introducing a lot of background noise and error and
  2. then trying to reintegrate the data…
    It’s like taking a complex item, with multiple pieces, out of an IKEA box and trying to repackage it perfectly into another box.”

By improving the workflow between the initial splitting of the sample, they improved endpoint data integration, proving that

  • a streamlined approach to combined NMR/MS can be achieved,
  • leading to a very strong, robust and precise metabolomics toolset.

Metabolomics Research Picks Up Speed

Field Advances in Quest to Improve Disease Diagnosis and Predict Drug Response

John Morrow Jr., Ph.D.
GEN May 1, 2011 (Vol. 31, No. 9)

As an important discipline within systems biology, metabolomics is being explored by a number of laboratories for

  • its potential in pharmaceutical development.

Studying metabolites can offer insights into the relationships between genotype and phenotype, as well as between genotype and environment. In addition, there is plenty to work with—there are estimated to be some 2,900 detectable metabolites in the human body, of which

  1. 309 have been identified in cerebrospinal fluid,
  2. 1,122 in serum,
  3. 458 in urine, and
  4. roughly 300 in other compartments.

Guowang Xu, Ph.D., a researcher at the Dalian Institute of Chemical Physics.  is investigating the causes of death in China,

  • and how they have been changing over the years as the country has become a more industrialized nation.
  •  the increase in the incidence of metabolic disorders such as diabetes has grown to affect 9.7% of the Chinese population.

Dr. Xu,  collaborating with Rainer Lehman, Ph.D., of the University of Tübingen, Germany, compared urinary metabolites in samples from healthy individuals with samples taken from prediabetic, insulin-resistant subjects. Using mass spectrometry coupled with electrospray ionization in the positive mode, they observed striking dissimilarities in levels of various metabolites in the two groups.

“When we performed a comprehensive two-dimensional gas chromatography, time-of-flight mass spectrometry analysis of our samples, we observed several metabolites, including

  • 2-hydroxybutyric acid in plasma,
  •  as potential diabetes biomarkers,” Dr. Xu explains.

In other, unrelated studies, Dr. Xu and the German researchers used a metabolomics approach to investigate the changes in plasma metabolite profiles immediately after exercise and following a 3-hour and 24-hour period of recovery. They found that

  • medium-chain acylcarnitines were the most distinctive exercise biomarkers, and
  • they are released as intermediates of partial beta oxidation in human myotubes and mouse muscle tissue.

Dr. Xu says. “The traditional approach of assessment based on a singular biomarker is being superseded by the introduction of multiple marker profiles.”

Typical of the studies under way by Dr. Kaddurah-Daouk and her colleaguesat Duke University

  • is a recently published investigation highlighting the role of an SNP variant in
  • the glycine dehydrogenase gene on individual response to antidepressants.
  •  patients who do not respond to the selective serotonin uptake inhibitors citalopram and escitalopram
  • carried a particular single nucleotide polymorphism in the GD gene.

“These results allow us to pinpoint a possible

  • role for glycine in selective serotonin reuptake inhibitor response and
  • illustrate the use of pharmacometabolomics to inform pharmacogenomics.

These discoveries give us the tools for prognostics and diagnostics so that

  • we can predict what conditions will respond to treatment.

“This approach to defining health or disease in terms of metabolic states opens a whole new paradigm.

By screening hundreds of thousands of molecules, we can understand

  • the relationship between human genetic variability and the metabolome.”

Dr. Kaddurah-Daouk talks about statins as a current

  • model of metabolomics investigations.

It is now known that the statins  have widespread effects, altering a range of metabolites. To sort out these changes and develop recommendations for which individuals should be receiving statins will require substantial investments of energy and resources into defining the complex web of biochemical changes that these drugs initiate.
Furthermore, Dr. Kaddurah-Daouk asserts that,

  • “genetics only encodes part of the phenotypic response.

One needs to take into account the

  • net environment contribution in order to determine
  • how both factors guide the changes in our metabolic state that determine the phenotype.”

Interactive Metabolomics

Researchers at the University of Nottingham use diffusion-edited nuclear magnetic resonance spectroscopy to assess the effects of a biological matrix on metabolites. Diffusion-edited NMR experiments provide a way to

  • separate the different compounds in a mixture
  • based on the differing translational diffusion coefficients (which reflect the size and shape of the molecule).

The measurements are carried out by observing

  • the attenuation of the NMR signals during a pulsed field gradient experiment.

Clare Daykin, Ph.D., is a lecturer at the University of Nottingham, U.K. Her field of investigation encompasses “interactive metabolomics,”which she defines as

“the study of the interactions between low molecular weight biochemicals and macromolecules in biological samples ..

  • without preselection of the components of interest.

“Blood plasma is a heterogeneous mixture of molecules that

  1. undergo a variety of interactions including metal complexation,
  2. chemical exchange processes,
  3. micellar compartmentation,
  4. enzyme-mediated biotransformations, and
  5. small molecule–macromolecular binding.”

Many low molecular weight compounds can exist

  • freely in solution,
  • bound to proteins, or
  • within organized aggregates such as lipoprotein complexes.

Therefore, quantitative comparison of plasma composition from

  • diseased individuals compared to matched controls provides an incomplete insight to plasma metabolism.

“It is not simply the concentrations of metabolites that must be investigated,

  • but their interactions with the proteins and lipoproteins within this complex web.

Rather than targeting specific metabolites of interest, Dr. Daykin’s metabolite–protein binding studies aim to study

  • the interactions of all detectable metabolites within the macromolecular sample.

Such activities can be studied through the use of diffusion-edited nuclear magnetic resonance (NMR) spectroscopy, in which one can assess

  • the effects of the biological matrix on the metabolites.

“This can lead to a more relevant and exact interpretation

  • for systems where metabolite–macromolecule interactions occur.”

Diffusion-edited NMR experiments provide a way to separate the different compounds in a mixture based on

  • the differing translational diffusion coefficients (which reflect the size and shape of the molecule).

The measurements are carried out by observing

  • the attenuation of the NMR signals during a pulsed field gradient experiment.

Pushing the Limits

It is widely recognized that many drug candidates fail during development due to ancillary toxicity. Uwe Sauer, Ph.D., professor, and Nicola Zamboni, Ph.D., researcher, both at the Eidgenössische Technische Hochschule, Zürich (ETH Zürich), are applying

  • high-throughput intracellular metabolomics to understand
  • the basis of these unfortunate events and
  • head them off early in the course of drug discovery.

“Since metabolism is at the core of drug toxicity, we developed a platform for

  • measurement of 50–100 targeted metabolites by
  • a high-throughput system consisting of flow injection
  • coupled to tandem mass spectrometry.”

Using this approach, Dr. Sauer’s team focused on

  • the central metabolism of the yeast Saccharomyces cerevisiae, reasoning that
  • this core network would be most susceptible to potential drug toxicity.

Screening approximately 41 drugs that were administered at seven concentrations over three orders of magnitude, they observed changes in metabolome patterns at much lower drug concentrations without attendant physiological toxicity.

The group carried out statistical modeling of about

  • 60 metabolite profiles for each drug they evaluated.

This data allowed the construction of a “profile effect map” in which

  • the influence of each drug on metabolite levels can be followed, including off-target effects, which
  • provide an indirect measure of the possible side effects of the various drugs.

Dr. Sauer says.“We have found that this approach is

  • at least 100 times as fast as other omics screening platforms,”

“Some drugs, including many anticancer agents,

  • disrupt metabolism long before affecting growth.”
killing cancer cells

killing cancer cells

Furthermore, they used the principle of 13C-based flux analysis, in which

  • metabolites labeled with 13C are used to follow the utilization of metabolic pathways in the cell.

These 13C-determined intracellular responses of metabolic fluxes to drug treatment demonstrate

  • the functional performance of the network to be rather robust,
conformational changes leading to substrate efflux.

conformational changes leading to substrate efflux.

leading Dr. Sauer to the conclusion that

  • the phenotypic vigor he observes to drug challenges
  • is achieved by a flexible make up of the metabolome.

Dr. Sauer is confident that it will be possible to expand the scope of these investigations to hundreds of thousands of samples per study. This will allow answers to the questions of

  • how cells establish a stable functioning network in the face of inevitable concentration fluctuations.

Is Now the Hour?

There is great enthusiasm and agitation within the biotech community for

  • metabolomics approaches as a means of reversing the dismal record of drug discovery

that has accumulated in the last decade.

While the concept clearly makes sense and is being widely applied today, there are many reasons why drugs fail in development, and metabolomics will not be a panacea for resolving all of these questions. It is too early at this point to recognize a trend or a track record, and it will take some time to see how this approach can aid in drug discovery and shorten the timeline for the introduction of new pharmaceutical agents.

Degree of binding correlated with function

Degree of binding correlated with function

Diagram_of_a_two-photon_excitation_microscope_

Diagram_of_a_two-photon_excitation_microscope_

Part 2.  Biologists Find ‘Missing Link’ in the Production of Protein Factories in Cells

Biologists at UC San Diego have found

  • the “missing link” in the chemical system that
  • enables animal cells to produce ribosomes

—the thousands of protein “factories” contained within each cell that

  • manufacture all of the proteins needed to build tissue and sustain life.
‘Missing Link’

‘Missing Link’

Their discovery, detailed in the June 23 issue of the journal Genes & Development, will not only force

  • a revision of basic textbooks on molecular biology, but also
  • provide scientists with a better understanding of
  • how to limit uncontrolled cell growth, such as cancer,
  • that might be regulated by controlling the output of ribosomes.

Ribosomes are responsible for the production of the wide variety of proteins that include

  1. enzymes;
  2. structural molecules, such as hair,
  3. skin and bones;
  4. hormones like insulin; and
  5. components of our immune system such as antibodies.

Regarded as life’s most important molecular machine, ribosomes have been intensively studied by scientists (the 2009 Nobel Prize in Chemistry, for example, was awarded for studies of its structure and function). But until now researchers had not uncovered all of the details of how the proteins that are used to construct ribosomes are themselves produced.

In multicellular animals such as humans,

  • ribosomes are made up of about 80 different proteins
    (humans have 79 while some other animals have a slightly different number) as well as
  • four different kinds of RNA molecules.

In 1969, scientists discovered that

  • the synthesis of the ribosomal RNAs is carried out by specialized systems using two key enzymes:
  • RNA polymerase I and RNA polymerase III.

But until now, scientists were unsure if a complementary system was also responsible for

  • the production of the 80 proteins that make up the ribosome.

That’s essentially what the UC San Diego researchers headed by Jim Kadonaga, a professor of biology, set out to examine. What they found was the missing link—the specialized

  • system that allows ribosomal proteins themselves to be synthesized by the cell.

Kadonaga says that he and coworkers found that ribosomal proteins are synthesized via

  • a novel regulatory system with the enzyme RNA polymerase II and
  • a factor termed TRF2,”

“For the production of most proteins,

  1. RNA polymerase II functions with
  2. a factor termed TBP,
  3. but for the synthesis of ribosomal proteins, it uses TRF2.”
  •  this specialized TRF2-based system for ribosome biogenesis
  • provides a new avenue for the study of ribosomes and
  • its control of cell growth, and

“it should lead to a better understanding and potential treatment of diseases such as cancer.”

Coordination of the transcriptome and metabolome

Coordination of the transcriptome and metabolome

the potential advantages conferred by distal-site protein synthesis

the potential advantages conferred by distal-site protein synthesis

Other authors of the paper were UC San Diego biologists Yuan-Liang Wang, Sascha Duttke and George Kassavetis, and Kai Chen, Jeff Johnston, and Julia Zeitlinger of the Stowers Institute for Medical Research in Kansas City, Missouri. Their research was supported by two grants from the National Institutes of Health (1DP2OD004561-01 and R01 GM041249).

Turning Off a Powerful Cancer Protein

Scientists have discovered how to shut down a master regulatory transcription factor that is

  • key to the survival of a majority of aggressive lymphomas,
  • which arise from the B cells of the immune system.

The protein, Bcl6, has long been considered too complex to target with a drug since it is also crucial

  • to the healthy functioning of many immune cells in the body, not just B cells gone bad.

The researchers at Weill Cornell Medical College report that it is possible

  • to shut down Bcl6 in diffuse large B-cell lymphoma (DLBCL)
  • while not affecting its vital function in T cells and macrophages
  • that are needed to support a healthy immune system.

If Bcl6 is completely inhibited, patients might suffer from systemic inflammation and atherosclerosis. The team conducted this new study to help clarify possible risks, as well as to understand

  • how Bcl6 controls the various aspects of the immune system.

The findings in this study were inspired from

  • preclinical testing of two Bcl6-targeting agents that Dr. Melnick and his Weill Cornell colleagues have developed
  • to treat DLBCLs.

These experimental drugs are

  • RI-BPI, a peptide mimic, and
  • the small molecule agent 79-6.

“This means the drugs we have developed against Bcl6 are more likely to be

  • significantly less toxic and safer for patients with this cancer than we realized,”

says Ari Melnick, M.D., professor of hematology/oncology and a hematologist-oncologist at NewYork-Presbyterian Hospital/Weill Cornell Medical Center.

Dr. Melnick says the discovery that

  • a master regulatory transcription factor can be targeted
  • offers implications beyond just treating DLBCL.

Recent studies from Dr. Melnick and others have revealed that

  • Bcl6 plays a key role in the most aggressive forms of acute leukemia, as well as certain solid tumors.

Bcl6 can control the type of immune cell that develops in the bone marrow—playing many roles

  • in the development of B cells, T cells, macrophages, and other cells—including a primary and essential role in
  • enabling B-cells to generate specific antibodies against pathogens.

According to Dr. Melnick, “When cells lose control of Bcl6,

  • lymphomas develop in the immune system.

Lymphomas are ‘addicted’ to Bcl6, and therefore

  • Bcl6 inhibitors powerfully and quickly destroy lymphoma cells,” .

The big surprise in the current study is that rather than functioning as a single molecular machine,

  • Bcl6 functions like a Swiss Army knife,
  • using different tools to control different cell types.

This multifunction paradigm could represent a general model for the functioning of other master regulatory transcription factors.

“In this analogy, the Swiss Army knife, or transcription factor, keeps most of its tools folded,

  • opening only the one it needs in any given cell type,”

He makes the following analogy:

  • “For B cells, it might open and use the knife tool;
  • for T cells, the cork screw;
  • for macrophages, the scissors.”

“this means that you only need to prevent the master regulator from using certain tools to treat cancer. You don’t need to eliminate the whole knife,” . “In fact, we show that taking out the whole knife is harmful since

  • the transcription factor has many other vital functions that other cells in the body need.”

Prior to these study results, it was not known that a master regulator could separate its functions so precisely. Researchers hope this will be a major benefit to the treatment of DLBCL and perhaps other disorders that are influenced by Bcl6 and other master regulatory transcription factors.

The study is published in the journal Nature Immunology, in a paper titled “Lineage-specific functions of Bcl-6 in immunity and inflammation are mediated by distinct biochemical mechanisms”.

Part 3. Neuroscience

Vesicles influence function of nerve cells 
Oct, 06 2014        source: http://feeds.sciencedaily.com

Neurons (blue) which have absorbed exosomes (green) have increased levels of the enzyme catalase (red), which helps protect them against peroxides.

Neurons (blue) which have absorbed exosomes (green) have increased levels of the enzyme catalase (red), which helps protect them against peroxides.

Neurons (blue) which have absorbed exosomes (green) have increased levels of the enzyme catalase (red), which helps protect them against peroxides.

Tiny vesicles containing protective substances

  • which they transmit to nerve cells apparently
  • play an important role in the functioning of neurons.

As cell biologists at Johannes Gutenberg University Mainz (JGU) have discovered,

  • nerve cells can enlist the aid of mini-vesicles of neighboring glial cells
  • to defend themselves against stress and other potentially detrimental factors.

These vesicles, called exosomes, appear to stimulate the neurons on various levels:

  • they influence electrical stimulus conduction,
  • biochemical signal transfer, and
  • gene regulation.

Exosomes are thus multifunctional signal emitters

  • that can have a significant effect in the brain.
Exosome

Exosome

The researchers in Mainz already observed in a previous study that

  • oligodendrocytes release exosomes on exposure to neuronal stimuli.
  • these are absorbed by the neurons and improve neuronal stress tolerance.

Oligodendrocytes, a type of glial cell, form an

  • insulating myelin sheath around the axons of neurons.

The exosomes transport protective proteins such as

  • heat shock proteins,
  • glycolytic enzymes, and
  • enzymes that reduce oxidative stress from one cell type to another,
  • but also transmit genetic information in the form of ribonucleic acids.

“As we have now discovered in cell cultures, exosomes seem to have a whole range of functions,” explained Dr. Eva-Maria Krmer-Albers. By means of their transmission activity, the small bubbles that are the vesicles

  • not only promote electrical activity in the nerve cells, but also
  • influence them on the biochemical and gene regulatory level.

“The extent of activities of the exosomes is impressive,” added Krmer-Albers. The researchers hope that the understanding of these processes will contribute to the development of new strategies for the treatment of neuronal diseases. Their next aim is to uncover how vesicles actually function in the brains of living organisms.

http://labroots.com/user/news/article/id/217438/title/vesicles-influence-function-of-nerve-cells

The above story is based on materials provided by Universitt Mainz.

Universitt Mainz. “Vesicles influence function of nerve cells.” ScienceDaily. ScienceDaily, 6 October 2014. www.sciencedaily.com/releases/2014/10/141006174214.htm

Neuroscientists use snail research to help explain “chemo brain”

10/08/2014
It is estimated that as many as half of patients taking cancer drugs experience a decrease in mental sharpness. While there have been many theories, what causes “chemo brain” has eluded scientists.

In an effort to solve this mystery, neuroscientists at The University of Texas Health Science Center at Houston (UTHealth) conducted an experiment in an animal memory model and their results point to a possible explanation. Findings appeared in The Journal of Neuroscience.

In the study involving a sea snail that shares many of the same memory mechanisms as humans and a drug used to treat a variety of cancers, the scientists identified

  • memory mechanisms blocked by the drug.

Then, they were able to counteract or

  • unblock the mechanisms by administering another agent.

“Our research has implications in the care of people given to cognitive deficits following drug treatment for cancer,” said John H. “Jack” Byrne, Ph.D., senior author, holder of the June and Virgil Waggoner Chair and Chairman of the Department of Neurobiology and Anatomy at the UTHealth Medical School. “There is no satisfactory treatment at this time.”

Byrne’s laboratory is known for its use of a large snail called Aplysia californica to further the understanding of the biochemical signaling among nerve cells (neurons).  The snails have large neurons that relay information much like those in humans.

When Byrne’s team compared cell cultures taken from normal snails to

  • those administered a dose of a cancer drug called doxorubicin,

the investigators pinpointed a neuronal pathway

  • that was no longer passing along information properly.

With the aid of an experimental drug,

  • the scientists were able to reopen the pathway.

Unfortunately, this drug would not be appropriate for humans, Byrne said. “We want to identify other drugs that can rescue these memory mechanisms,” he added.

According the American Cancer Society, some of the distressing mental changes cancer patients experience may last a short time or go on for years.

Byrne’s UT Health research team includes co-lead authors Rong-Yu Liu, Ph.D., and Yili Zhang, Ph.D., as well as Brittany Coughlin and Leonard J. Cleary, Ph.D. All are affiliated with the W.M. Keck Center for the Neurobiology of Learning and Memory.

Byrne and Cleary also are on the faculty of The University of Texas Graduate School of Biomedical Sciences at Houston. Coughlin is a student at the school, which is jointly operated by UT Health and The University of Texas MD Anderson Cancer Center.

The study titled “Doxorubicin Attenuates Serotonin-Induced Long-Term Synaptic Facilitation by Phosphorylation of p38 Mitogen-Activated Protein Kinase” received support from National Institutes of Health grant (NS019895) and the Zilkha Family Discovery Fellowship.

Doxorubicin Attenuates Serotonin-Induced Long-Term Synaptic Facilitation by Phosphorylation of p38 Mitogen-Activated Protein Kinase

Source: Univ. of Texas Health Science Center at Houston

http://www.rdmag.com/news/2014/10/neuroscientists-use-snail-research-help-explain-E2_9_Cchemo-brain

Doxorubicin Attenuates Serotonin-Induced Long-Term Synaptic Facilitation by Phosphorylation of p38 Mitogen-Activated Protein Kinase

Rong-Yu Liu*,  Yili Zhang*,  Brittany L. Coughlin,  Leonard J. Cleary, and  John H. Byrne   +Show Affiliations
The Journal of Neuroscience, 1 Oct 2014, 34(40): 13289-13300;
http://dx.doi.org:/10.1523/JNEUROSCI.0538-14.2014

Doxorubicin (DOX) is an anthracycline used widely for cancer chemotherapy. Its primary mode of action appears to be

  • topoisomerase II inhibition, DNA cleavage, and free radical generation.

However, in non-neuronal cells, DOX also inhibits the expression of

  • dual-specificity phosphatases (also referred to as MAPK phosphatases) and thereby
  1. inhibits the dephosphorylation of extracellular signal-regulated kinase (ERK) and
  2. p38 mitogen-activated protein kinase (p38 MAPK),
  3. two MAPK isoforms important for long-term memory (LTM) formation.

Activation of these kinases by DOX in neurons, if present,

  • could have secondary effects on cognitive functions, such as learning and memory.

The present study used cultures of rat cortical neurons and sensory neurons (SNs) of Aplysia

  • to examine the effects of DOX on levels of phosphorylated ERK (pERK) and
  • phosphorylated p38 (p-p38) MAPK.

In addition, Aplysia neurons were used to examine the effects of DOX on

  • long-term enhanced excitability, long-term synaptic facilitation (LTF), and
  • long-term synaptic depression (LTD).

DOX treatment led to elevated levels of

  • pERK and p-p38 MAPK in SNs and cortical neurons.

In addition, it increased phosphorylation of

  • the downstream transcriptional repressor cAMP response element-binding protein 2 in SNs.

DOX treatment blocked serotonin-induced LTF and enhanced LTD induced by the neuropeptide Phe-Met-Arg-Phe-NH2. The block of LTF appeared to be attributable to

  • overriding inhibitory effects of p-p38 MAPK, because
  • LTF was rescued in the presence of an inhibitor of p38 MAPK
    (SB203580 [4-(4-fluorophenyl)-2-(4-methylsulfinylphenyl)-5-(4-pyridyl)-1H-imidazole]) .

These results suggest that acute application of DOX might impair the formation of LTM via the p38 MAPK pathway.
Terms: Aplysia chemotherapy ERK  p38 MAPK serotonin synaptic plasticity

Technology that controls brain cells with radio waves earns early BRAIN grant

10/08/2014

bright spots = cells with increased calcium after treatment with radio waves,  allows neurons to fire

bright spots = cells with increased calcium after treatment with radio waves, allows neurons to fire

BRAIN control: The new technology uses radio waves to activate or silence cells remotely. The bright spots above represent cells with increased calcium after treatment with radio waves, a change that would allow neurons to fire.

A proposal to develop a new way to

  • remotely control brain cells

from Sarah Stanley, a research associate in Rockefeller University’s Laboratory of Molecular Genetics, headed by Jeffrey M. Friedman, is

  • among the first to receive funding from U.S. President Barack Obama’s BRAIN initiative.

The project will make use of a technique called

  • radiogenetics that combines the use of radio waves or magnetic fields with
  • nanoparticles to turn neurons on or off.

The National Institutes of Health is one of four federal agencies involved in the BRAIN (Brain Research through Advancing Innovative Neurotechnologies) initiative. Following in the ambitious footsteps of the Human Genome Project, the BRAIN initiative seeks

  • to create a dynamic map of the brain in action,

a goal that requires the development of new technologies. The BRAIN initiative working group, which outlined the broad scope of the ambitious project, was co-chaired by Rockefeller’s Cori Bargmann, head of the Laboratory of Neural Circuits and Behavior.

Stanley’s grant, for $1.26 million over three years, is one of 58 projects to get BRAIN grants, the NIH announced. The NIH’s plan for its part of this national project, which has been pitched as “America’s next moonshot,” calls for $4.5 billion in federal funds over 12 years.

The technology Stanley is developing would

  • enable researchers to manipulate the activity of neurons, as well as other cell types,
  • in freely moving animals in order to better understand what these cells do.

Other techniques for controlling selected groups of neurons exist, but her new nanoparticle-based technique has a

  • unique combination of features that may enable new types of experimentation.
  • it would allow researchers to rapidly activate or silence neurons within a small area of the brain or
  • dispersed across a larger region, including those in difficult-to-access locations.

Stanley also plans to explore the potential this method has for use treating patients.

“Francis Collins, director of the NIH, has discussed

  • the need for studying the circuitry of the brain,
  • which is formed by interconnected neurons.

Our remote-control technology may provide a tool with which researchers can ask new questions about the roles of complex circuits in regulating behavior,” Stanley says.
Rockefeller University’s Laboratory of Molecular Genetics
Source: Rockefeller Univ.

Part 4.  Cancer

Two Proteins Found to Block Cancer Metastasis

Why do some cancers spread while others don’t? Scientists have now demonstrated that

  • metastatic incompetent cancers actually “poison the soil”
  • by generating a micro-environment that blocks cancer cells
  • from settling and growing in distant organs.

The “seed and the soil” hypothesis proposed by Stephen Paget in 1889 is now widely accepted to explain how

  • cancer cells (seeds) are able to generate fertile soil (the micro-environment)
  • in distant organs that promotes cancer’s spread.

However, this concept had not explained why some tumors do not spread or metastasize.

The researchers, from Weill Cornell Medical College, found that

  • two key proteins involved in this process work by
  • dramatically suppressing cancer’s spread.

The study offers hope that a drug based on these

  • potentially therapeutic proteins, prosaposin and Thrombospondin 1 (Tsp-1),

might help keep human cancer at bay and from metastasizing.

Scientists don’t understand why some tumors wouldn’t “want” to spread. It goes against their “job description,” says the study’s senior investigator, Vivek Mittal, Ph.D., an associate professor of cell and developmental biology in cardiothoracic surgery and director of the Neuberger Berman Foundation Lung Cancer Laboratory at Weill Cornell Medical College. He theorizes that metastasis occurs when

  • the barriers that the body throws up to protect itself against cancer fail.

But there are some tumors in which some of the barriers may still be intact. “So that suggests

  • those primary tumors will continue to grow, but that
  • an innate protective barrier still exists that prevents them from spreading and invading other organs,”

The researchers found that, like typical tumors,

  • metastasis-incompetent tumors also send out signaling molecules
  • that establish what is known as the “premetastatic niche” in distant organs.

These niches composed of bone marrow cells and various growth factors have been described previously by others including Dr. Mittal as the fertile “soil” that the disseminated cancer cell “seeds” grow in.

Weill Cornell’s Raúl Catena, Ph.D., a postdoctoral fellow in Dr. Mittal’s laboratory, found an important difference between the tumor types. Metastatic-incompetent tumors

  • systemically increased expression of Tsp-1, a molecule known to fight cancer growth.
  • increased Tsp-1 production was found specifically in the bone marrow myeloid cells
  • that comprise the metastatic niche.

These results were striking, because for the first time Dr. Mittal says

  • the bone marrow-derived myeloid cells were implicated as
  • the main producers of Tsp-1,.

In addition, Weill Cornell and Harvard researchers found that

  • prosaposin secreted predominantly by the metastatic-incompetent tumors
  • increased expression of Tsp-1 in the premetastatic lungs.

Thus, Dr. Mittal posits that prosaposin works in combination with Tsp-1

  • to convert pro-metastatic bone marrow myeloid cells in the niche
  • into cells that are not hospitable to cancer cells that spread from a primary tumor.
  • “The very same myeloid cells in the niche that we know can promote metastasis
  • can also be induced under the command of the metastatic incompetent primary tumor to inhibit metastasis,”

The research team found that

  • the Tsp-1–inducing activity of prosaposin
  • was contained in only a 5-amino acid peptide region of the protein, and
  • this peptide alone induced Tsp-1 in the bone marrow cells and
  • effectively suppressed metastatic spread in the lungs
  • in mouse models of breast and prostate cancer.

This 5-amino acid peptide with Tsp-1–inducing activity

  • has the potential to be used as a therapeutic agent against metastatic cancer,

The scientists have begun to test prosaposin in other tumor types or metastatic sites.

Dr. Mittal says that “The clinical implications of the study are:

  • “Not only is it theoretically possible to design a prosaposin-based drug or drugs
  • that induce Tsp-1 to block cancer spread, but
  • you could potentially create noninvasive prognostic tests
  • to predict whether a cancer will metastasize.”

The study was reported in the April 30 issue of Cancer Discovery, in a paper titled “Bone Marrow-Derived Gr1+ Cells Can Generate a Metastasis-Resistant Microenvironment Via Induced Secretion of Thrombospondin-1”.

Disabling Enzyme Cripples Tumors, Cancer Cells

First Step of Metastasis

First Step of Metastasis

Published: Sep 05, 2013  http://www.technologynetworks.com/Metabolomics/news.aspx?id=157138

Knocking out a single enzyme dramatically cripples the ability of aggressive cancer cells to spread and grow tumors.

The paper, published in the journal Proceedings of the National Academy of Sciences, sheds new light on the importance of lipids, a group of molecules that includes fatty acids and cholesterol, in the development of cancer.

Researchers have long known that cancer cells metabolize lipids differently than normal cells. Levels of ether lipids – a class of lipids that are harder to break down – are particularly elevated in highly malignant tumors.

“Cancer cells make and use a lot of fat and lipids, and that makes sense because cancer cells divide and proliferate at an accelerated rate, and to do that,

  • they need lipids, which make up the membranes of the cell,”

said study principal investigator Daniel Nomura, assistant professor in UC Berkeley’s Department of Nutritional Sciences and Toxicology. “Lipids have a variety of uses for cellular structure, but what we’re showing with our study is that

  • lipids can send signals that fuel cancer growth.”

In the study, Nomura and his team tested the effects of reducing ether lipids on human skin cancer cells and primary breast tumors. They targeted an enzyme,

  • alkylglycerone phosphate synthase, or AGPS,
  • known to be critical to the formation of ether lipids.

The researchers confirmed that

  1. AGPS expression increased when normal cells turned cancerous.
  2. inactivating AGPS substantially reduced the aggressiveness of the cancer cells.

“The cancer cells were less able to move and invade,” said Nomura.

The researchers also compared the impact of

  • disabling the AGPS enzyme in mice that had been injected with cancer cells.

Nomura. observes -“Among the mice that had the AGPS enzyme inactivated,

  • the tumors were nonexistent,”

“The mice that did not have this enzyme

  • disabled rapidly developed tumors.”

The researchers determined that

  • inhibiting AGPS expression depleted the cancer cells of ether lipids.
  • AGPS altered levels of other types of lipids important to the ability of the cancer cells to survive and spread, including
    • prostaglandins and acyl phospholipids.

“What makes AGPS stand out as a treatment target is that the enzyme seems to simultaneously

  • regulate multiple aspects of lipid metabolism
  • important for tumor growth and malignancy.”

Future steps include the

  • development of AGPS inhibitors for use in cancer therapy,

“This study sheds considerable light on the important role that AGPS plays in ether lipid metabolism in cancer cells, and it suggests that

  • inhibitors of this enzyme could impair tumor formation,”

said Benjamin Cravatt, Professor and Chair of Chemical Physiology at The Scripps Research Institute, who is not part of the UC.

Agilent Technologies Thought Leader Award Supports Translational Research Program
Published: Mon, March 04, 2013

The award will support Dr DePinho’s research into

  • metabolic reprogramming in the earliest stages of cancer.

Agilent Technologies Inc. announces that Dr. Ronald A. DePinho, a world-renowned oncologist and researcher, has received an Agilent Thought Leader Award.

DePinho is president of the University of Texas MD Anderson Cancer Center. DePinho and his team hope to discover and characterize

  • alterations in metabolic flux during tumor initiation and maintenance, and to identify biomarkers for early detection of pancreatic cancer together with
  • novel therapeutic targets.

Researchers on his team will work with scientists from the university’s newly formed Institute of Applied Cancer Sciences.

The Agilent Thought Leader Award provides funds to support personnel as well as a state-of-the-art Agilent 6550 iFunnel Q-TOF LC/MS system.

“I am extremely pleased to receive this award for metabolomics research, as the survival rates for pancreatic cancer have not significantly improved over the past 20 years,” DePinho said. “This technology will allow us to

  • rapidly identify new targets that drive the formation, progression and maintenance of pancreatic cancer.

Discoveries from this research will also lead to

  • the development of effective early detection biomarkers and novel therapeutic interventions.”

“We are proud to support Dr. DePinho’s exciting translational research program, which will make use of

  • metabolomics and integrated biology workflows and solutions in biomarker discovery,”

said Patrick Kaltenbach, Agilent vice president, general manager of the Liquid Phase Division, and the executive sponsor of this award.

The Agilent Thought Leader Program promotes fundamental scientific advances by support of influential thought leaders in the life sciences and chemical analysis fields.

The covalent modifier Nedd8 is critical for the activation of Smurf1 ubiquitin ligase in tumorigenesis

Ping Xie, Minghua Zhang, Shan He, Kefeng Lu, Yuhan Chen, Guichun Xing, et al.
Nature Communications
  2014; 5(3733).  http://dx.doi.org:/10.1038/ncomms4733

Neddylation, the covalent attachment of ubiquitin-like protein Nedd8, of the Cullin-RING E3 ligase family

  • regulates their ubiquitylation activity.

However, regulation of HECT ligases by neddylation has not been reported to date. Here we show that

  • the C2-WW-HECT ligase Smurf1 is activated by neddylation.

Smurf1 physically interacts with

  1. Nedd8 and Ubc12,
  2. forms a Nedd8-thioester intermediate, and then
  3. catalyses its own neddylation on multiple lysine residues.

Intriguingly, this autoneddylation needs

  • an active site at C426 in the HECT N-lobe.

Neddylation of Smurf1 potently enhances

  • ubiquitin E2 recruitment and
  • augments the ubiquitin ligase activity of Smurf1.

The regulatory role of neddylation

  • is conserved in human Smurf1 and yeast Rsp5.

Furthermore, in human colorectal cancers,

  • the elevated expression of Smurf1, Nedd8, NAE1 and Ubc12
  • correlates with cancer progression and poor prognosis.

These findings provide evidence that

  • neddylation is important in HECT ubiquitin ligase activation and
  • shed new light on the tumour-promoting role of Smurf1.
 Swinging domains in HECT E3

Swinging domains in HECT E3

Subject terms: Biological sciences Cancer Cell biology

Figure 1: Smurf1 expression is elevated in colorectal cancer tissues.

Smurf1 expression is elevated in colorectal cancer tissues.

Smurf1 expression is elevated in colorectal cancer tissues.

(a) Smurf1 expression scores are shown as box plots, with the horizontal lines representing the median; the bottom and top of the boxes representing the 25th and 75th percentiles, respectively; and the vertical bars representing the ra

Figure 2: Positive correlation of Smurf1 expression with Nedd8 and its interacting enzymes in colorectal cancer.

Positive correlation of Smurf1 expression with Nedd8 and its interacting enzymes in colorectal cancer

Positive correlation of Smurf1 expression with Nedd8 and its interacting enzymes in colorectal cancer

(a) Representative images from immunohistochemical staining of Smurf1, Ubc12, NAE1 and Nedd8 in the same colorectal cancer tumour. Scale bars, 100 μm. (bd) The expression scores of Nedd8 (b, n=283 ), NAE1 (c, n=281) and Ubc12 (d, n=19…

Figure 3: Smurf1 interacts with Ubc12.

Smurf1 interacts with Ubc12

Smurf1 interacts with Ubc12

(a) GST pull-down assay of Smurf1 with Ubc12. Both input and pull-down samples were subjected to immunoblotting with anti-His and anti-GST antibodies. Smurf1 interacted with Ubc12 and UbcH5c, but not with Ubc9. (b) Mapping the regions…

Figure 4: Nedd8 is attached to Smurf1through C426-catalysed autoneddylation.

Nedd8 is attached to Smurf1through C426-catalysed autoneddylation

Nedd8 is attached to Smurf1through C426-catalysed autoneddylation

(a) Covalent neddylation of Smurf1 in vitro.Purified His-Smurf1-WT or C699A proteins were incubated with Nedd8 and Nedd8-E1/E2. Reactions were performed as described in the Methods section. Samples were analysed by western blotting wi…

Figure 5: Neddylation of Smurf1 activates its ubiquitin ligase activity.

Neddylation of Smurf1 activates its ubiquitin ligase activity.

Neddylation of Smurf1 activates its ubiquitin ligase activity.

(a) In vivo Smurf1 ubiquitylation assay. Nedd8 was co-expressed with Smurf1 WT or C699A in HCT116 cells (left panels). Twenty-four hours post transfection, cells were treated with MG132 (20 μM, 8 h). HCT116 cells were transfected with…

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The deubiquitylase USP33 discriminates between RALB functions in autophagy and innate immune response

M Simicek, S Lievens, M Laga, D Guzenko, VN. Aushev, et al.
Nature Cell Biology 2013; 15, 1220–1230    http://dx.doi.org:/10.1038/ncb2847

The RAS-like GTPase RALB mediates cellular responses to nutrient availability or viral infection by respectively

  • engaging two components of the exocyst complex, EXO84 and SEC5.
  1. RALB employs SEC5 to trigger innate immunity signalling, whereas
  2. RALB–EXO84 interaction induces autophagocytosis.

How this differential interaction is achieved molecularly by the RAL GTPase remains unknown.

We found that whereas GTP binding

  • turns on RALB activity,

ubiquitylation of RALB at Lys 47

  • tunes its activity towards a particular effector.

Specifically, ubiquitylation at Lys 47

  • sterically inhibits RALB binding to EXO84, while
  • facilitating its interaction with SEC5.

Double-stranded RNA promotes

  • RALB ubiquitylation and
  • SEC5–TBK1 complex formation.

In contrast, nutrient starvation

  • induces RALB deubiquitylation
  • by accumulation and relocalization of the deubiquitylase USP33
  • to RALB-positive vesicles.

Deubiquitylated RALB

  • promotes the assembly of the RALB–EXO84–beclin-1 complexes
  • driving autophagosome formation. Thus,
  • ubiquitylation within the effector-binding domain
  • provides the switch for the dual functions of RALB in
    • autophagy and innate immune responses.

Part 5. Metabolic Syndrome

Single Enzyme is Necessary for Development of Diabetes

Published: Aug 20, 2014 http://www.technologynetworks.com/Metabolomics/news.aspx?ID=169416

12-LO enzyme promotes the obesity-induced oxidative stress in the pancreatic cells.

An enzyme called 12-LO promotes the obesity-induced oxidative stress in the pancreatic cells that leads

  • to pre-diabetes, and diabetes.

12-LO’s enzymatic action is the last step in

  • the production of certain small molecules that harm the cell,

according to a team from Indiana University School of Medicine, Indianapolis.

The findings will enable the development of drugs that can interfere with this enzyme, preventing or even reversing diabetes. The research is published ahead of print in the journal Molecular and Cellular Biology.

In earlier studies, these researchers and their collaborators at Eastern Virginia Medical School showed that

  • 12-LO (which stands for 12-lipoxygenase) is present in these cells
  • only in people who become overweight.

The harmful small molecules resulting from 12-LO’s enzymatic action are known as HETEs, short for hydroxyeicosatetraenoic acid.

  1. HETEs harm the mitochondria, which then
  2. fail to produce sufficient energy to enable
  3. the pancreatic cells to manufacture the necessary quantities of insulin.

For the study, the investigators genetically engineered mice that

  • lacked the gene for 12-LO exclusively in their pancreas cells.

Mice were either fed a low-fat or high-fat diet.

Both the control mice and the knockout mice on the high fat diet

  • developed obesity and insulin resistance.

The investigators also examined the pancreatic beta cells of both knockout and control mice, using both microscopic studies and molecular analysis. Those from the knockout mice were intact and healthy, while

  • those from the control mice showed oxidative damage,
  • demonstrating that 12-LO and the resulting HETEs
  • caused the beta cell failure.

Mirmira notes that fatty diet used in the study was the Western Diet, which comprises mostly saturated-“bad”-fats. Based partly on a recent study of related metabolic pathways, he says that

  • the unsaturated and mono-unsaturated fats-which comprise most fats in the healthy,
  • relatively high fat Mediterranean diet-are unlikely to have the same effects.

“Our research is the first to show that 12-LO in the beta cell

  • is the culprit in the development of pre-diabetes, following high fat diets,” says Mirmira.

“Our work also lends important credence to the notion that

  • the beta cell is the primary defective cell in virtually all forms of diabetes and pre-diabetes.”

A New Player in Lipid Metabolism Discovered

Published: Aug18, 2014  http://www.technologynetworks.com/Metabolomics/news.aspx?ID=169356

Specially engineered mice gained no weight, and normal counterparts became obese

  • on the same high-fat, obesity-inducing Western diet.

Specially engineered mice that lacked a particular gene did not gain weight

  • when fed a typical high-fat, obesity-inducing Western diet.

Yet, these mice ate the same amount as their normal counterparts that became obese.

The mice were engineered with fat cells that lacked a gene called SEL1L,

  • known to be involved in the clearance of mis-folded proteins
  • in the cell’s protein making machinery called the endoplasmic reticulum (ER).

When mis-folded proteins are not cleared but accumulate,

  • they destroy the cell and contribute to such diseases as
  1. mad cow disease,
  2. Type 1 diabetes and
  3. cystic fibrosis.

“The million-dollar question is why don’t these mice gain weight? Is this related to its inability to clear mis-folded proteins in the ER?” said Ling Qi, associate professor of molecular and biochemical nutrition and senior author of the study published online July 24 in Cell Metabolism. Haibo Sha, a research associate in Qi’s lab, is the paper’s lead author.

Interestingly, the experimental mice developed a host of other problems, including

  • postprandial hypertriglyceridemia,
  • and fatty livers.

“Although we are yet to find out whether these conditions contribute to the lean phenotype, we found that

  • there was a lipid partitioning defect in the mice lacking SEL1L in fat cells,
  • where fat cells cannot store fat [lipids], and consequently
  • fat goes to the liver.

During the investigation of possible underlying mechanisms, we discovered

  • a novel function for SEL1L as a regulator of lipid metabolism,” said Qi.

Sha said “We were very excited to find that

  • SEL1L is required for the intracellular trafficking of
  • lipoprotein lipase (LPL), acting as a chaperone,” .

and added that “Using several tissue-specific knockout mouse models,

  • we showed that this is a general phenomenon,”

Without LPL, lipids remain in the circulation;

  • fat and muscle cells cannot absorb fat molecules for storage and energy combustion,

People with LPL mutations develop

  • postprandial hypertriglyceridemia similar to
  • conditions found in fat cell-specific SEL1L-deficient mice, said Qi.

Future work will investigate the

  • role of SEL1L in human patients carrying LPL mutations and
  • determine why fat cell-specific SEL1L-deficient mice remain lean under Western diets, said Sha.

Co-authors include researchers from Cedars-Sinai Medical Center in Los Angeles; Wageningen University in the Netherlands; Georgia State University; University of California, Los Angeles; and the Medical College of Soochow University in China.

The study was funded by the U.S. National Institutes of Health, the Netherlands Organization for Health Research and Development National Institutes of Health, the Cedars-Sinai Medical Center, Chinese National Science Foundation, the American Diabetes Association, Cornell’s Center for Vertebrate Genomics and the Howard Hughes Medical Institute.

Part 6. Biomarkers

Biomarkers Take Center Stage

Josh P. Roberts
GEN May 1, 2013 (Vol. 33, No. 9)  http://www.genengnews.com/

While work with biomarkers continues to grow, scientists are also grappling with research-related bottlenecks, such as

  1. affinity reagent development,
  2. platform reproducibility, and
  3. sensitivity.

Biomarkers by definition indicate some state or process that generally occurs

  • at a spatial or temporal distance from the marker itself, and

it would not be an exaggeration to say that biomedicine has become infatuated with them:

  1. where to find them,
  2. when they may appear,
  3. what form they may take, and
  4. how they can be used to diagnose a condition or
  5. predict whether a therapy may be successful.

Biomarkers are on the agenda of many if not most industry gatherings, and in cases such as Oxford Global’s recent “Biomarker Congress” and the GTC “Biomarker Summit”, they hold the naming rights. There, some basic principles were built upon, amended, and sometimes challenged.

In oncology, for example, biomarker discovery is often predicated on the premise that

  • proteins shed from a tumor will traverse to and persist in, and be detectable in, the circulation.

By quantifying these proteins—singularly or as part of a larger “signature”—the hope is

  1. to garner information about the molecular characteristics of the cancer
  2. that will help with cancer detection and
  3. personalization of the treatment strategy.

Yet this approach has not yet turned into the panacea that was hoped for. Bottlenecks exist in

  • affinity reagent development,
  • platform reproducibility, and
  • sensitivity.

There is also a dearth of understanding of some of the

  • fundamental principles of biomarker biology that we need to know the answers to,

said Parag Mallick, Ph.D., whose lab at Stanford University is “working on trying to understand where biomarkers come from.”

There are dogmas saying that

  • circulating biomarkers come solely from secreted proteins.

But Dr. Mallick’s studies indicate that fully

  • 50% of circulating proteins may come from intracellular sources or
  • proteins that are annotated as such.

“We don’t understand the processes governing

  • which tumor-derived proteins end up in the blood.”

Other questions include “how does the size of a tumor affect how much of a given protein will be in the blood?”—perhaps

  • the tumor is necrotic at the center, or
  • it’s hypervascular or hypovascular.

He points out “The problem is that these are highly nonlinear processes at work, and

  • there is a large number of factors that might affect the answer to that question,” .

Their research focuses on using

  1. mass spectrometry and
  2. computational analysis
  • to characterize the biophysical properties of the circulating proteome, and
  • relate these to measurements made of the tumor itself.

Furthermore, he said – “We’ve observed that the proteins that are likely to

  • first show up and persist in the circulation, ..
  • are more stable than proteins that don’t,”
  • “we can quantify how significant the effect is.”

The goal is ultimately to be able to

  1. build rigorous, formal mathematical models that will allow something measured in the blood
  2. to be tied back to the molecular biology taking place in the tumor.

And conversely, to use those models

  • to predict from a tumor what will be found in the circulation.

“Ultimately, the models will allow you to connect the dots between

  • what you measure in the blood and the biology of the tumor.”

Bound for Affinity Arrays

Affinity reagents are the main tools for large-scale protein biomarker discovery. And while this has tended to mean antibodies (or their derivatives), other affinity reagents are demanding a place in the toolbox.

Affimers, a type of affinity reagent being developed by Avacta, consist of

  1. a biologically inert, biophysically stable protein scaffold
  2. containing three variable regions into which
  3. distinct peptides are inserted.

The resulting three-dimensional surface formed by these peptides

  • interacts and binds to proteins and other molecules in solution,
  • much like the antigen-binding site of antibodies.

Unlike antibodies, Affimers are relatively small (13 KDa),

  • non-post-translationally modified proteins
  • that can readily be expressed in bacterial culture.

They may be made to bind surfaces through unique residues

  • engineered onto the opposite face of the Affimer,
  • allowing the binding site to be exposed to the target in solution.

“We don’t seem to see in what we’ve done so far

  • any real loss of activity or functionality of Affimers when bound to surfaces—

they’re very robust,” said CEO Alastair Smith, Ph.D.

Avacta is taking advantage of this stability and its large libraries of Affimers to develop

  • very large affinity microarrays for
  • drug and biomarker discovery.

To date they have printed arrays with around 20–25,000 features, and Dr. Smith is “sure that we can get toward about 50,000 on a slide,” he said. “There’s no real impediment to us doing that other than us expressing the proteins and getting on with it.”

Customers will be provided with these large, complex “naïve” discovery arrays, readable with standard equipment. The plan is for the company to then “support our customers by providing smaller arrays with

  • the Affimers that are binding targets of interest to them,” Dr. Smith foretold.

And since the intellectual property rights are unencumbered,

  • Affimers in those arrays can be licensed to the end users
  • to develop diagnostics that can be validated as time goes on.

Around 20,000-Affimer discovery arrays were recently tested by collaborator Professor Ann Morgan of the University of Leeds with pools of unfractionated serum from patients with symptoms of inflammatory disease. The arrays

  • “rediscovered” elevated C-reactive protein (CRP, the clinical gold standard marker)
  • as well as uncovered an additional 22 candidate biomarkers.
  • other candidates combined with CRP, appear able to distinguish between different diseases such as
  1. rheumatoid arthritis,
  2. psoriatic arthritis,
  3. SLE, or
  4. giant cell arteritis.

Epigenetic Biomarkers

Methylation of adenine

Sometimes biomarkers are used not to find disease but

  • to distinguish healthy human cell types, with
  •  examples being found in flow cytometry and immunohistochemistry.

These widespread applications, however, are difficult to standardize, being

  • subject to arbitrary or subjective gating protocols and other imprecise criteria.

Epiontis instead uses an epigenetic approach. “What we need is a unique marker that is

  • demethylated only in one cell type and
  • methylated in all the other cell types,”

Each cell of the right cell type will have

  • two demethylated copies of a certain gene locus,
  • allowing them to be enumerated by quantitative PCR.

The biggest challenge is finding that unique epigenetic marker. To do so they look through the literature for proteins and genes described as playing a role in the cell type’s biology, and then

  • look at the methylation patterns to see if one can be used as a marker,

They also “use customized Affymetrix chips to look at the

  • differential epigenetic status of different cell types on a genomewide scale.”

explained CBO and founder Ulrich Hoffmueller, Ph.D.

The company currently has a panel of 12 assays for 12 immune cell types. Among these is an assay for

  • regulatory T (Treg) cells that queries the Foxp3 gene—which is uniquely demethylated in Treg
  • even though it is transiently expressed in activated T cells of other subtypes.

Also assayed are Th17 cells, difficult to detect by flow cytometry because

  • “the cells have to be stimulated in vitro,” he pointed out.

Developing New Assays for Cancer Biomarkers

Researchers at Myriad RBM and the Cancer Prevention Research Institute of Texas are collaborating to develop

  • new assays for cancer biomarkers on the Myriad RBM Multi-Analyte Profile (MAP) platform.

The release of OncologyMAP 2.0 expanded Myriad RBM’s biomarker menu to over 250 analytes, which can be measured from a small single sample, according to the company. Using this menu, L. Stephen et al., published a poster, “Analysis of Protein Biomarkers in Prostate and Colorectal Tumor Lysates,” which showed the results of

  • a survey of proteins relevant to colorectal (CRC) and prostate (PC) tumors
  • to identify potential proteins of interest for cancer research.

The study looked at CRC and PC tumor lysates and found that 102 of the 115 proteins showed levels above the lower limit of quantification.

  • Four markers were significantly higher in PC and 10 were greater in CRC.

For most of the analytes, duplicate sections of the tumor were similar, although some analytes did show differences. In four of the CRC analytes, tumor number four showed differences for CEA and tumor number 2 for uPA.

Thirty analytes were shown to be

  • different in CRC tumor compared to its adjacent tissue.
  • Ten of the analytes were higher in adjacent tissue compared to CRC.
  • Eighteen of the markers examined demonstrated  —-

significant correlations of CRC tumor concentration to serum levels.

“This suggests.. that the Oncology MAP 2.0 platform “provides a good method for studying changes in tumor levels because many proteins can be assessed with a very small sample.”

Clinical Test Development with MALDI-ToF

While there have been many attempts to translate results from early discovery work on the serum proteome into clinical practice, few of these efforts have progressed past the discovery phase.

Matrix-assisted laser desorption/ionization-time of flight (MALDI-ToF) mass spectrometry on unfractionated serum/plasma samples offers many practical advantages over alternative techniques, and does not require

  • a shift from discovery to development and commercialization platforms.

Biodesix claims it has been able to develop the technology into

  • a reproducible, high-throughput tool to
  • routinely measure protein abundance from serum/plasma samples.

“.. we improved data-analysis algorithms to

  • reproducibly obtain quantitative measurements of relative protein abundance from MALDI-ToF mass spectra.

Heinrich Röder, CTO points out that the MALDI-ToF measurements

  • are combined with clinical outcome data using
  • modern learning theory techniques
  • to define specific disease states
  • based on a patient’s serum protein content,”

The clinical utility of the identification of these disease states can be investigated through a retrospective analysis of differing sample sets. For example, Biodesix clinically validated its first commercialized serum proteomic test, VeriStrat®, in 85 different retrospective sample sets.

Röder adds that “It is becoming increasingly clear that

  • the patients whose serum is characterized as VeriStrat Poor show
  • consistently poor outcomes irrespective of
  1. tumor type,
  2. histology, or
  3. molecular tumor characteristics,”

MALDI-ToF mass spectrometry, in its standard implementation,

  • allows for the observation of around 100 mostly high-abundant serum proteins.

Further, “while this does not limit the usefulness of tests developed from differential expression of these proteins,

  • the discovery potential would be greatly enhanced
  • if we could probe deeper into the proteome
  • while not giving up the advantages of the MALDI-ToF approach,”

Biodesix reports that its new MALDI approach, Deep MALDI™, can perform

  • simultaneous quantitative measurement of more than 1,000 serum protein features (or peaks) from 10 µL of serum in a high-throughput manner.
  • it increases the observable signal noise ratio from a few hundred to over 50,000,
  • resulting in the observation of many lower-abundance serum proteins.

Breast cancer, a disease now considered to be a collection of many complexes of symptoms and signatures—the dominant ones are labeled Luminal A, Luminal B, Her2, and Basal— which suggests different prognose, and

  • these labels are considered too simplistic for understanding and managing a woman’s cancer.

Studies published in the past year have looked at

  1. somatic mutations,
  2. gene copy number aberrations,
  3. gene expression abnormalities,
  4. protein and miRNA expression, and
  5. DNA methylation,

coming up with a list of significantly mutated genes—hot spots—in different categories of breast cancers. Targeting these will inevitably be the focus of much coming research.

“We’ve been taking these large trials and profiling these on a variety of array or sequence platforms. We think we’ll get

  1. prognostic drivers
  2. predictive markers for taxanes and
  3. monoclonal antibodies and
  4. tamoxifen and aromatase inhibitors,”
    explained Brian Leyland-Jones, Ph.D., director of Edith Sanford Breast Cancer Research. “We will end up with 20–40 different diseases, maybe more.”

Edith Sanford Breast Cancer Research is undertaking a pilot study in collaboration with The Scripps Research Institute, using a variety of tests on 25 patients to see how the information they provide complements each other, the overall flow, and the time required to get and compile results.

Laser-captured tumor samples will be subjected to low passage whole-genome, exome, and RNA sequencing (with targeted resequencing done in parallel), and reverse-phase protein and phosphorylation arrays, with circulating nucleic acids and circulating tumor cells being queried as well. “After that we hope to do a 100- or 150-patient trial when we have some idea of the best techniques,” he said.

Dr. Leyland-Jones predicted that ultimately most tumors will be found

  • to have multiple drivers,
  • with most patients receiving a combination of two, three, or perhaps four different targeted therapies.

Reduce to Practice

According to Randox, the evidence Investigator is a sophisticated semi-automated biochip sys­tem designed for research, clinical, forensic, and veterinary applications.

Once biomarkers that may have an impact on therapy are discovered, it is not always routine to get them into clinical practice. Leaving regulatory and financial, intellectual property and cultural issues aside, developing a diagnostic based on a biomarker often requires expertise or patience that its discoverer may not possess.

Andrew Gribben is a clinical assay and development scientist at Randox Laboratories, based in Northern Ireland, U.K. The company utilizes academic and industrial collaborators together with in-house discovery platforms to identify biomarkers that are

  • augmented or diminished in a particular pathology
  • relative to appropriate control populations.

Biomarkers can be developed to be run individually or

  • combined into panels of immunoassays on its multiplex biochip array technology.

Specificity can also be gained—or lost—by the affinity of reagents in an assay. The diagnostic potential of Heart-type fatty acid binding protein (H-FABP) abundantly expressed in human myocardial cells was recognized by Jan Glatz of Maastricht University, The Netherlands, back in 1988. Levels rise quickly within 30 minutes after a myocardial infarction, peaking at 6–8 hours and return to normal within 24–30 hours. Yet at the time it was not known that H-FABP was a member of a multiprotein family, with which the polyclonal antibodies being used in development of an assay were cross-reacting, Gribben related.

Randox developed monoclonal antibodies specific to H-FABP, funded trials investigating its use alone, and multiplexed with cardiac biomarker assays, and, more than 30 years after the biomarker was identified, in 2011, released a validated assay for H-FABP as a biomarker for early detection of acute myocardial infarction.

Ultrasensitive Immunoassays for Biomarker Development

Research has shown that detection and monitoring of biomarker concentrations can provide

  • insights into disease risk and progression.

Cytokines have become attractive biomarkers and candidates

  • for targeted therapies for a number of autoimmune diseases, including rheumatoid arthritis (RA), Crohn’s disease, and psoriasis, among others.

However, due to the low-abundance of circulating cytokines, such as IL-17A, obtaining robust measurements in clinical samples has been difficult.

Singulex reports that its digital single-molecule counting technology provides

  • increased precision and detection sensitivity over traditional ELISA techniques,
  • helping to shed light on biomarker verification and validation programs.

The company’s Erenna® immunoassay system, which includes optimized immunoassays, offers LLoQ to femtogram levels per mL resolution—even in healthy populations, at an improvement of 1-3 fold over standard ELISAs or any conventional technology and with a dynamic range of up to 4-logs, according to a Singulex official, who adds that

  • this sensitivity improvement helps minimize undetectable samples that
  • could otherwise delay or derail clinical studies.

The official also explains that the Singulex solution includes an array of products and services that are being applied to a number of programs and have enabled the development of clinically relevant biomarkers, allowing translation from discovery to the clinic.

In a poster entitled “Advanced Single Molecule Detection: Accelerating Biomarker Development Utilizing Cytokines through Ultrasensitive Immunoassays,” a case study was presented of work performed by Jeff Greenberg of NYU to show how the use of the Erenna system can provide insights toward

  • improving the clinical utility of biomarkers and
  • accelerating the development of novel therapies for treating inflammatory diseases.

A panel of inflammatory biomarkers was examined in DMARD (disease modifying antirheumatic drugs)-naïve RA (rheumatoid arthritis) vs. knee OA (osteoarthritis) patient cohorts. Markers that exhibited significant differences in plasma concentrations between the two cohorts included

  • CRP, IL-6R alpha, IL-6, IL-1 RA, VEGF, TNF-RII, and IL-17A, IL-17F, and IL-17A/F.

Among the three tested isoforms of IL-17,

  • the magnitude of elevation for IL-17F in RA patients was the highest.

“Singulex provides high-resolution monitoring of baseline IL-17A concentrations that are present at low levels,” concluded the researchers. “The technology also enabled quantification of other IL-17 isoforms in RA patients, which have not been well characterized before.”

The Singulex Erenna System has also been applied to cardiovascular disease research, for which its

  • cardiac troponin I (cTnI) digital assay can be used to measure circulating
  • levels of cTnI undetectable by other commercial assays.

Recently presented data from Brigham and Women’s Hospital and the TIMI-22 study showed that

  • using the Singulex test to serially monitor cTnI helps
  • stratify risk in post-acute coronary syndrome patients and
  • can identify patients with elevated cTnI
  • who have the most to gain from intensive vs. moderate-dose statin therapy,

according to the scientists involved in the research.

The study poster, “Prognostic Performance of Serial High Sensitivity Cardiac Troponin Determination in Stable Ischemic Heart Disease: Analysis From PROVE IT-TIMI 22,” was presented at the 2013 American College of Cardiology (ACC) Annual Scientific Session & Expo by R. O’Malley et al.

Biomarkers Changing Clinical Medicine

Better Diagnosis, Prognosis, and Drug Targeting Are among Potential Benefits

  1. John Morrow Jr., Ph.D.

Researchers at EMD Chemicals are developing biomarker immunoassays

  • to monitor drug-induced toxicity including kidney damage.

The pace of biomarker development is accelerating as investigators report new studies on cancer, diabetes, Alzheimer disease, and other conditions in which the evaluation and isolation of workable markers is prominently featured.

Wei Zheng, Ph.D., leader of the R&D immunoassay group at EMD Chemicals, is overseeing a program to develop biomarker immunoassays to

  • monitor drug-induced toxicity, including kidney damage.

“One of the principle reasons for drugs failing during development is because of organ toxicity,” says Dr. Zheng.
“proteins liberated into the serum and urine can serve as biomarkers of adverse response to drugs, as well as disease states.”

Through collaborative programs with Rules-Based Medicine (RBM), the EMD group has released panels for the profiling of human renal impairment and renal toxicity. These urinary biomarker based products fit the FDA and EMEA guidelines for assessment of drug-induced kidney damage in rats.

The group recently performed a screen for potential protein biomarkers in relation to

  • kidney toxicity/damage on a set of urine and plasma samples
  • from patients with documented renal damage.

Additionally, Dr. Zheng is directing efforts to move forward with the multiplexed analysis of

  • organ and cellular toxicity.

Diseases thought to involve compromised oxidative phosphorylation include

  • diabetes, Parkinson and Alzheimer diseases, cancer, and the aging process itself.

Good biomarkers allow Dr. Zheng to follow the mantra, “fail early, fail fast.” With robust, multiplexible biomarkers, EMD can detect bad drugs early and kill them before they move into costly large animal studies and clinical trials. “Recognizing the severe liability that toxicity presents, we can modify the structure of the candidate molecule and then rapidly reassess its performance.”

Scientists at Oncogene Science a division of Siemens Healthcare Diagnostics, are also focused on biomarkers. “We are working on a number of antibody-based tests for various cancers, including a test for the Ca-9 CAIX protein, also referred to as carbonic anhydrase,” Walter Carney, Ph.D., head of the division, states.

CAIX is a transmembrane protein that is

  • overexpressed in a number of cancers, and, like Herceptin and the Her-2 gene,
  • can serve as an effective and specific marker for both diagnostic and therapeutic purposes.
  • It is liberated into the circulation in proportion to the tumor burden.

Dr. Carney and his colleagues are evaluating patients after tumor removal for the presence of the Ca-9 CAIX protein. If

  • the levels of the protein in serum increase over time,
  • this suggests that not all the tumor cells were removed and the tumor has metastasized.

Dr. Carney and his team have developed both an immuno-histochemistry and an ELISA test that could be used as companion diagnostics in clinical trials of CAIX-targeted drugs.

The ELISA for the Ca-9 CAIX protein will be used in conjunction with Wilex’ Rencarex®, which is currently in a

  • Phase III trial as an adjuvant therapy for non-metastatic clear cell renal cancer.

Additionally, Oncogene Science has in its portfolio an FDA-approved test for the Her-2 marker. Originally approved for Her-2/Neu-positive breast cancer, its indications have been expanded over time, and was approved

  • for the treatment of gastric cancer last year.

It is normally present on breast cancer epithelia but

  • overexpressed in some breast cancer tumors.

“Our products are designed to be used in conjunction with targeted therapies,” says Dr. Carney. “We are working with companies that are developing technology around proteins that are

  • overexpressed in cancerous tissues and can be both diagnostic and therapeutic targets.”

The long-term goal of these studies is to develop individualized therapies, tailored for the patient. Since the therapies are expensive, accurate diagnostics are critical to avoid wasting resources on patients who clearly will not respond (or could be harmed) by the particular drug.

“At this time the rate of response to antibody-based therapies may be very poor, as

  • they are often employed late in the course of the disease, and patients are in such a debilitated state
  • that they lack the capacity to react positively to the treatment,” Dr. Carney explains.

Nanoscale Real-Time Proteomics

Stanford University School of Medicine researchers, working with Cell BioSciences, have developed a

  • nanofluidic proteomic immunoassay that measures protein charge,
  • similar to immunoblots, mass spectrometry, or flow cytometry.
  • unlike these platforms, this approach can measure the amount of individual isoforms,
  • specifically, phosphorylated molecules.

“We have developed a nanoscale device for protein measurement, which I believe could be useful for clinical analysis,” says Dean W. Felsher, M.D., Ph.D., associate professor at Stanford University School of Medicine.

Critical oncogenic transformations involving

  • the activation of the signal-related kinases ERK-1 and ERK-2 can now be followed with ease.

“The fact that we measure nanoquantities with accuracy means that

  • we can interrogate proteomic profiles in clinical patients,

by drawing tiny needle aspirates from tumors over the course of time,” he explains.

“This allows us to observe the evolution of tumor cells and

  • their response to therapy
  • from a baseline of the normal tissue as a standard of comparison.”

According to Dr. Felsher, 20 cells is a large enough sample to obtain a detailed description. The technology is easy to automate, which allows

  • the inclusion of hundreds of assays.

Contrasting this technology platform with proteomic analysis using microarrays, Dr. Felsher notes that the latter is not yet workable for revealing reliable markers.

Dr. Felsher and his group published a description of this technology in Nature Medicine. “We demonstrated that we could take a set of human lymphomas and distinguish them from both normal tissue and other tumor types. We can

  • quantify changes in total protein, protein activation, and relative abundance of specific phospho-isoforms
  • from leukemia and lymphoma patients receiving targeted therapy.

Even with very small numbers of cells, we are able to show that the results are consistent, and

  • our sample is a random profile of the tumor.”

Splice Variant Peptides

“Aberrations in alternative splicing may generate

  • much of the variation we see in cancer cells,”

says Gilbert Omenn, Ph.D., director of the center for computational medicine and bioinformatics at the University of Michigan School of Medicine. Dr. Omenn and his colleague, Rajasree Menon, are

  • using this variability as a key to new biomarker identification.

It is becoming evident that splice variants play a significant role in the properties of cancer cells, including

  • initiation, progression, cell motility, invasiveness, and metastasis.

Alternative splicing occurs through multiple mechanisms

  • when the exons or coding regions of the DNA transcribe mRNA,
  • generating initiation sites and connecting exons in protein products.

Their translation into protein can result in numerous protein isoforms, and

  • these isoforms may reflect a diseased or cancerous state.

Regulatory elements within the DNA are responsible for selecting different alternatives; thus

  • the splice variants are tempting targets for exploitation as biomarkers.
Analyses of the splice-site mutation

Analyses of the splice-site mutation

Despite the many questions raised by these observations, splice variation in tumor material has not been widely studied. Cancer cells are known for their tremendous variability, which allows them to

  • grow rapidly, metastasize, and develop resistance to anticancer drugs.

Dr. Omenn and his collaborators used

  • mass spec data to interrogate a custom-built database of all potential mRNA sequences
  • to find alternative splice variants.

When they compared normal and malignant mammary gland tissue from a mouse model of Her2/Neu human breast cancers, they identified a vast number (608) of splice variant proteins, of which

  • peptides from 216 were found only in the tumor sample.

“These novel and known alternative splice isoforms

  • are detectable both in tumor specimens and in plasma and
  • represent potential biomarker candidates,” Dr. Omenn adds.

Dr. Omenn’s observations and those of his colleague Lewis Cantley, Ph.D., have also

  • shed light on the origins of the classic Warburg effect,
  • the shift to anaerobic glycolysis in tumor cells.

The novel splice variant M2, of muscle pyruvate kinase,

  • is observed in embryonic and tumor tissue.

It is associated with this shift, the result of

  • the expression of a peptide splice variant sequence.

It is remarkable how many different areas of the life sciences are tied into the phenomenon of splice variation. The changes in the genetic material can be much greater than point mutations, which have been traditionally considered to be the prime source of genetic variability.

“We now have powerful methods available to uncover a whole new category of variation,” Dr. Omenn says. “High-throughput RNA sequencing and proteomics will be complementary in discovery studies of splice variants.”

Splice variation may play an important role in rapid evolutionary changes, of the sort discussed by Susumu Ohno and Stephen J. Gould decades ago. They, and other evolutionary biologists, argued that

  • gene duplication, combined with rapid variability, could fuel major evolutionary jumps.

At the time, the molecular mechanisms of variation were poorly understood, but today

  • the tools are available to rigorously evaluate the role of
  • splice variation and other contributors to evolutionary change.

“Biomarkers derived from studies of splice variants, could, in the future, be exploited

  • both for diagnosis and prognosis and
  • for drug targeting of biological networks,
  • in situations such as the Her-2/Neu breast cancers,” Dr. Omenn says.

Aminopeptidase Activities

“By correlating the proteolytic patterns with disease groups and controls, we have shown that

  • exopeptidase activities contribute to the generation of not only cancer-specific
  • but also cancer type specific serum peptides.

according to Paul Tempst, Ph.D., professor and director of the Protein Center at the Memorial Sloan-Kettering Cancer Center.

So there is a direct link between peptide marker profiles of disease and differential protease activity.” For this reason Dr. Tempst argues that “the patterns we describe may have value as surrogate markers for detection and classification of cancer.”

To investigate this avenue, Dr. Tempst and his colleagues have followed

  • the relationship between exopeptidase activities and metastatic disease.

“We monitored controlled, de novo peptide breakdown in large numbers of biological samples using mass spectrometry, with relative quantitation of the metabolites,” Dr. Tempst explains. This entailed the use of magnetic, reverse-phase beads for analyte capture and a MALDI-TOF MS read-out.

“In biomarker discovery programs, functional proteomics is usually not pursued,” says Dr. Tempst. “For putative biomarkers, one may observe no difference in quantitative levels of proteins, while at the same time, there may be substantial differences in enzymatic activity.”

In a preliminary prostate cancer study, the team found a significant difference

  • in activity levels of exopeptidases in serum from patients with metastatic prostate cancer
  • as compared to primary tumor-bearing individuals and normal healthy controls.

However, there were no differences in amounts of the target protein, and this potential biomarker would have been missed if quantitative levels of protein had been the only criterion of selection.

It is frequently stated that “practical fusion energy is 30 years in the future and always will be.” The same might be said of functional, practical biomarkers that can pass muster with the FDA. But splice variation represents a new handle on this vexing problem. It appears that we are seeing the emergence of a new approach that may finally yield definitive diagnostic tests, detectable in serum and urine samples.

Part 7. Epigenetics and Drug Metabolism

DNA Methylation Rules: Studying Epigenetics with New Tools

The tools to unravel the epigenetic control mechanisms that influence how cells control access of transcriptional proteins to DNA are just beginning to emerge.

Patricia Fitzpatrick Dimond, Ph.D.

http://www.genengnews.com/media/images/AnalysisAndInsight/Feb7_2013_24454248_GreenPurpleDNA_EpigeneticsToolsII3576166141.jpg

New tools may help move the field of epigenetic analysis forward and potentially unveil novel biomarkers for cellular development, differentiation, and disease.

DNA sequencing has had the power of technology behind it as novel platforms to produce more sequencing faster and at lower cost have been introduced. But the tools to unravel the epigenetic control mechanisms that influence how cells control access of transcriptional proteins to DNA are just beginning to emerge.

Among these mechanisms, DNA methylation, or the enzymatically mediated addition of a methyl group to cytosine or adenine dinucleotides,

  • serves as an inherited epigenetic modification that
  • stably modifies gene expression in dividing cells.

The unique methylomes are largely maintained in differentiated cell types, making them critical to understanding the differentiation potential of the cell.

In the DNA methylation process, cytosine residues in the genome are enzymatically modified to 5-methylcytosine,

  • which participates in transcriptional repression of genes during development and disease progression.

5-methylcytosine can be further enzymatically modified to 5-hydroxymethylcytosine by the TET family of methylcytosine dioxygenases. DNA methylation affects gene transcription by physically

  • interfering with the binding of proteins involved in gene transcription.

Methylated DNA may be bound by methyl-CpG-binding domain proteins (MBDs) that can

  • then recruit additional proteins. Some of these include histone deacetylases and other chromatin remodeling proteins that modify histones, thereby
  • forming compact, inactive chromatin, or heterochromatin.

While DNA methylation doesn’t change the genetic code,

  • it influences chromosomal stability and gene expression.

Epigenetics and Cancer Biomarkers

multistage chemical carcinogenesis

multistage chemical carcinogenesis

And because of the increasing recognition that DNA methylation changes are involved in human cancers, scientists have suggested that these epigenetic markers may provide biological markers for cancer cells, and eventually point toward new diagnostic and therapeutic targets. Cancer cell genomes display genome-wide abnormalities in DNA methylation patterns,

  • some of which are oncogenic and contribute to genome instability.

In particular, de novo methylation of tumor suppressor gene promoters

  • occurs frequently in cancers, thereby silencing them and promoting transformation.

Cytosine hydroxymethylation (5-hydroxymethylcytosine, or 5hmC), the aforementioned DNA modification resulting from the enzymatic conversion of 5mC into 5-hydroxymethylcytosine by the TET family of oxygenases, has been identified

  • as another key epigenetic modification marking genes important for
  • pluripotency in embryonic stem cells (ES), as well as in cancer cells.

The base 5-hydroxymethylcytosine was recently identified as an oxidation product of 5-methylcytosine in mammalian DNA. In 2011, using sensitive and quantitative methods to assess levels of 5-hydroxymethyl-2′-deoxycytidine (5hmdC) and 5-methyl-2′-deoxycytidine (5mdC) in genomic DNA, scientists at the Department of Cancer Biology, Beckman Research Institute of the City of Hope, Duarte, California investigated

  • whether levels of 5hmC can distinguish normal tissue from tumor tissue.

They showed that in squamous cell lung cancers, levels of 5hmdC showed

  • up to five-fold reduction compared with normal lung tissue.

In brain tumors,5hmdC showed an even more drastic reduction

  • with levels up to more than 30-fold lower than in normal brain,
  • but 5hmdC levels were independent of mutations in isocitrate dehydrogenase-1, the enzyme that converts 5hmC to 5hmdC.

Immunohistochemical analysis indicated that 5hmC is “remarkably depleted” in many types of human cancer.

  • there was an inverse relationship between 5hmC levels and cell proliferation with lack of 5hmC in proliferating cells.

Their data suggest that 5hmdC is strongly depleted in human malignant tumors,

  • a finding that adds another layer of complexity to the aberrant epigenome found in cancer tissue.

In addition, a lack of 5hmC may become a useful biomarker for cancer diagnosis.

Enzymatic Mapping

But according to New England Biolabs’ Sriharsa Pradhan, Ph.D., methods for distinguishing 5mC from 5hmC and analyzing and quantitating the cell’s entire “methylome” and “hydroxymethylome” remain less than optimal.

The protocol for bisulphite conversion to detect methylation remains the “gold standard” for DNA methylation analysis. This method is generally followed by PCR analysis for single nucleotide resolution to determine methylation across the DNA molecule. According to Dr. Pradhan, “.. bisulphite conversion does not distinguish 5mC and 5hmC,”

Recently we found an enzyme, a unique DNA modification-dependent restriction endonuclease, AbaSI, which can

  • decode the hydryoxmethylome of the mammalian genome.

You easily can find out where the hydroxymethyl regions are.”

AbaSI, recognizes 5-glucosylatedmethylcytosine (5gmC) with high specificity when compared to 5mC and 5hmC, and

  • cleaves at narrow range of distances away from the recognized modified cytosine.

By mapping the cleaved ends, the exact 5hmC location can, the investigators reported, be determined.

Dr. Pradhan and his colleagues at NEB; the Department of Biochemistry, Emory University School of Medicine, Atlanta; and the New England Biolabs Shanghai R&D Center described use of this technique in a paper published in Cell Reports this month, in which they described high-resolution enzymatic mapping of genomic hydroxymethylcytosine in mouse ES cells.

In the current report, the authors used the enzyme technology for the genome-wide high-resolution hydroxymethylome, describing simple library construction even with a low amount of input DNA (50 ng) and the ability to readily detect 5hmC sites with low occupancy.

As a result of their studies, they propose that

factors affecting the local 5mC accessibility to TET enzymes play important roles in the 5hmC deposition

  • including include chromatin compaction, nucleosome positioning, or TF binding.
  •  the regularly oscillating 5hmC profile around the CTCF-binding sites, suggests 5hmC ‘‘writers’’ may be sensitive to the nucleosomal environment.
  • some transiently stable 5hmCs may indicate a poised epigenetic state or demethylation intermediate, whereas others may suggest a locally accessible chromosomal environment for the TET enzymatic apparatus.

“We were able to do complete mapping in mouse embryonic cells and are pleased about what this enzyme can do and how it works,” Dr. Pradhan said.

And the availability of novel tools that make analysis of the methylome and hypomethylome more accessible will move the field of epigenetic analysis forward and potentially novel biomarkers for cellular development, differentiation, and disease.

Patricia Fitzpatrick Dimond, Ph.D. (pdimond@genengnews.com), is technical editor at Genetic Engineering & Biotechnology News.

Epigenetic Regulation of ADME-Related Genes: Focus on Drug Metabolism and Transport

Published: Sep 23, 2013

Epigenetic regulation of gene expression refers to heritable factors that are functionally relevant genomic modifications but that do not involve changes in DNA sequence.

Examples of such modifications include

  • DNA methylation, histone modifications, noncoding RNAs, and chromatin architecture.

Epigenetic modifications are crucial for

packaging and interpreting the genome, and they have fundamental functions in regulating gene expression and activity under the influence of physiologic and environmental factors.

In this issue of Drug Metabolism and Disposition, a series of articles is presented to demonstrate the role of epigenetic factors in regulating

  • the expression of genes involved in drug absorption, distribution, metabolism, and excretion in organ development, tissue-specific gene expression, sexual dimorphism, and in the adaptive response to xenobiotic exposure, both therapeutic and toxic.

The articles also demonstrate that, in addition to genetic polymorphisms, epigenetics may also contribute to wide inter-individual variations in drug metabolism and transport. Identification of functionally relevant epigenetic biomarkers in human specimens has the potential to improve prediction of drug responses based on patient’s epigenetic profiles.

http://www.technologynetworks.com/Metabolomics/news.aspx?ID=157804

This study is published online in Drug Metabolism and Disposition

Part 8.  Pictorial Maps

 Prediction of intracellular metabolic states from extracellular metabolomic data

MK Aurich, G Paglia, Ottar Rolfsson, S Hrafnsdottir, M Magnusdottir, MM Stefaniak, BØ Palsson, RMT Fleming &

Ines Thiele

Metabolomics Aug 14, 2014;

http://dx.doi.org:/10.1007/s11306-014-0721-3

http://link.springer.com/article/10.1007/s11306-014-0721-3/fulltext.html#Sec1

http://link.springer.com/static-content/images/404/art%253A10.1007%252Fs11306-014-0721-3/MediaObjects/11306_2014_721_Fig1_HTML.gif

Metabolic models can provide a mechanistic framework

  • to analyze information-rich omics data sets, and are
  • increasingly being used to investigate metabolic alternations in human diseases.

An expression of the altered metabolic pathway utilization is the selection of metabolites consumed and released by cells. However, methods for the

  • inference of intracellular metabolic states from extracellular measurements in the context of metabolic models remain underdeveloped compared to methods for other omics data.

Herein, we describe a workflow for such an integrative analysis

  • emphasizing on extracellular metabolomics data.

We demonstrate,

  • using the lymphoblastic leukemia cell lines Molt-4 and CCRF-CEM,

how our methods can reveal differences in cell metabolism. Our models explain metabolite uptake and secretion by predicting

  • a more glycolytic phenotype for the CCRF-CEM model and
  • a more oxidative phenotype for the Molt-4 model,
  • which was supported by our experimental data.

Gene expression analysis revealed altered expression of gene products at

  • key regulatory steps in those central metabolic pathways, and

literature query emphasized the role of these genes in cancer metabolism.

Moreover, in silico gene knock-outs identified unique

  •  control points for each cell line model, e.g., phosphoglycerate dehydrogenase for the Molt-4 model.

Thus, our workflow is well suited to the characterization of cellular metabolic traits based on

  • -extracellular metabolomic data, and it allows the integration of multiple omics data sets
  • into a cohesive picture based on a defined model context.

Keywords Constraint-based modeling _ Metabolomics _ Multi-omics _ Metabolic network _ Transcriptomics

1 Introduction

Modern high-throughput techniques have increased the pace of biological data generation. Also referred to as the ‘‘omics avalanche’’, this wealth of data provides great opportunities for metabolic discovery. Omics data sets

  • contain a snapshot of almost the entire repertoire of mRNA, protein, or metabolites at a given time point or

under a particular set of experimental conditions. Because of the high complexity of the data sets,

  • computational modeling is essential for their integrative analysis.

Currently, such data analysis is a bottleneck in the research process and methods are needed to facilitate the use of these data sets, e.g., through meta-analysis of data available in public databases [e.g., the human protein atlas (Uhlen et al. 2010) or the gene expression omnibus (Barrett et al.  2011)], and to increase the accessibility of valuable information for the biomedical research community.

Constraint-based modeling and analysis (COBRA) is

  • a computational approach that has been successfully used to
  • investigate and engineer microbial metabolism through the prediction of steady-states (Durot et al.2009).

The basis of COBRA is network reconstruction: networks are assembled in a bottom-up fashion based on

  • genomic data and extensive
  • organism-specific information from the literature.

Metabolic reconstructions capture information on the

  • known biochemical transformations taking place in a target organism
  • to generate a biochemical, genetic and genomic knowledge base (Reed et al. 2006).

Once assembled, a

  • metabolic reconstruction can be converted into a mathematical model (Thiele and Palsson 2010), and
  • model properties can be interrogated using a great variety of methods (Schellenberger et al. 2011).

The ability of COBRA models

  • to represent genotype–phenotype and environment–phenotype relationships arises
  • through the imposition of constraints, which
  • limit the system to a subset of possible network states (Lewis et al. 2012).

Currently, COBRA models exist for more than 100 organisms, including humans (Duarte et al. 2007; Thiele et al. 2013).

Since the first human metabolic reconstruction was described [Recon 1 (Duarte et al. 2007)],

  • biomedical applications of COBRA have increased (Bordbar and Palsson 2012).

One way to contextualize networks is to

  • define their system boundaries according to the metabolic states of the system, e.g., disease or dietary regimes.

The consequences of the applied constraints can

  • then be assessed for the entire network (Sahoo and Thiele 2013).

Additionally, omics data sets have frequently been used

  • to generate cell-type or condition-specific metabolic models.

Models exist for specific cell types, such as

  1. enterocytes (Sahoo and Thiele2013),
  2. macrophages (Bordbar et al. 2010),
  3. adipocytes (Mardinoglu et al. 2013),
  4. even multi-cell assemblies that represent the interactions of brain cells (Lewis et al. 2010).

All of these cell type specific models, except the enterocyte reconstruction

  • were generated based on omics data sets.

Cell-type-specific models have been used to study

  • diverse human disease conditions.

For example, an adipocyte model was generated using

  • transcriptomic, proteomic, and metabolomics data.

This model was subsequently used to investigate metabolic alternations in adipocytes

  • that would allow for the stratification of obese patients (Mardinoglu et al. 2013).

The biomedical applications of COBRA have been

  1. cancer metabolism (Jerby and Ruppin, 2012).
  2. predicting drug targets (Folger et al. 2011; Jerby et al. 2012).

A cancer model was generated using

  • multiple gene expression data sets and subsequently used
  • to predict synthetic lethal gene pairs as potential drug targets
  • selective for the cancer model, but non-toxic to the global model (Recon 1),

a consequence of the reduced redundancy in the cancer specific model (Folger et al. 2011).

In a follow up study, lethal synergy between FH and enzymes of the heme metabolic pathway

  • were experimentally validated and resolved the mechanism by which FH deficient cells,
    e.g., in renal-cell cancer cells survive a non-functional TCA cycle (Frezza et al. 2011).

Contextualized models, which contain only the subset of reactions active in a particular tissue (or cell-) type,

  • can be generated in different ways (Becker and Palsson, 2008; Jerby et al. 2010).

However, the existing algorithms mainly consider

  • gene expression and proteomic data
  • to define the reaction sets that comprise the contextualized metabolic models.

These subset of reactions are usually defined

  • based on the expression or absence of expression of the genes or proteins (present and absent calls),
  • or inferred from expression values or differential gene expression.

Comprehensive reviews of the methods are available (Blazier and Papin, 2012; Hyduke et al. 2013). Only the compilation of a large set of omics data sets

  • can result in a tissue (or cell-type) specific metabolic model, whereas

the representation of one particular experimental condition is achieved

  • through the integration of omics data set generated from one experiment only (condition-specific cell line model).

Recently, metabolomic data sets have become more comprehensive and

  • using these data sets allow direct determination of the metabolic network components (the metabolites).

Additionally, metabolomics has proven to be stable, relatively inexpensive, and highly reproducible (Antonucci et al. 2012). These factors make metabolomic data sets particularly valuable for

  • interrogation of metabolic phenotypes.

Thus, the integration of these data sets is now an active field of research (Li et al. 2013; Mo et al. 2009; Paglia et al. 2012b; Schmidt et al. 2013).

Generally, metabolomic data can be incorporated into metabolic networks as

  • qualitative, quantitative, and thermodynamic constraints (Fleming et al. 2009; Mo et al. 2009).

Mo et al. used metabolites detected in the

  • spent medium of yeast cells to determine intracellular flux states through a sampling analysis (Mo et al. 2009),
  • which allowed unbiased interrogation of the possible network states (Schellenberger and Palsson 2009) and
  • prediction of internal pathway use.
Modes of transcriptional regulation during the YMC

Modes of transcriptional regulation during the YMC

Such analyses have also been used to reveal the effects of

  1. enzymopathies on red blood cells (Price et al. 2004),
  2. to study effects of diet on diabetes (Thiele et al. 2005) and
  3. to define macrophage metabolic states (Bordbar et al. 2010).

This type of analysis is available as a function in the COBRA toolbox (Schellenberger et al. 2011).

In this study, we established a workflow

  • for the generation and analysis of condition-specific metabolic cell line models
  • that can facilitate the interpretation of metabolomic data.

Our modeling yields meaningful predictions regarding

  • metabolic differences between two lymphoblastic leukemia cell lines (Fig. 1A).

Fig. 1

metabol leukem cell lines11306_2014_721_Fig1_HTML

metabol leukem cell lines11306_2014_721_Fig1_HTML

A Combined experimental and computational pipeline to study human metabolism.

  1. Experimental work and omics data analysis steps precede computational modeling.
  2. Model predictions are validated based on targeted experimental data.
  3. Metabolomic and transcriptomic data are used for model refinement and submodel extraction.
  4. Functional analysis methods are used to characterize the metabolism of the cell-line models and compare it to additional experimental data.
  5. The validated models are subsequently used for the prediction of drug targets.

B Uptake and secretion pattern of model metabolites. All metabolite uptakes and secretions that were mapped during model generation are shown.

  • Metabolite uptakes are depicted on the left, and
  • secreted metabolites are shown on the right.
  1. A number of metabolite exchanges mapped to the model were unique to one cell line.
  2. Differences between cell lines were used to set quantitative constraints for the sampling analysis.

C Statistics about the cell line-specific network generation.

D Quantitative constraints.

For the sampling analysis, an additional set of constraints was imposed on the cell line specific models,

  • emphasizing the differences in metabolite uptake and secretion between cell lines.

Higher uptake of a metabolite was allowed

  • in the model of the cell line that consumed more of the metabolite in vitro, whereas
  • the supply was restricted for the model with lower in vitro uptake.

This was done by establishing the same ratio between the models bounds as detected in vitro.

X denotes the factor (slope ratio) that distinguishes the bounds, and

  • which was individual for each metabolite.

(a) The uptake of a metabolite could be x times higher in CCRF-CEM cells,

(b) the metabolite uptake could be x times higher in Molt-4,

(c) metabolite secretion could be x times higher in CCRF-CEM, or

(d) metabolite secretion could be x times higher in Molt-4 cells.LOD limit of detection.

The consequence of the adjustment was, in case of uptake, that one model was constrained to a lower metabolite uptake (A, B), and the difference depended on the ratio detected in vitro. In case of secretion, one model

  • had to secrete more of the metabolite, and again
  • the difference depended on the experimental difference detected between the cell lines

2 Results

We set up a pipeline that could be used to infer intracellular metabolic states

  • from semi-quantitative data regarding metabolites exchanged between cells and their environment.

Our pipeline combined the following four steps:

  1. data acquisition,
  2. data analysis,
  3. metabolic modeling and
  4. experimental validation of the model predictions (Fig. 1A).

We demonstrated the pipeline and the predictive potential to predict metabolic alternations in diseases such as cancer based on

^two lymphoblastic leukemia cell lines.

The resulting Molt-4 and CCRF-CEM condition-specific cell line models could explain

^  metabolite uptake and secretion
^  by predicting the distinct utilization of central metabolic pathways by the two cell lines.
^  the CCRF-CEM model resembled more a glycolytic, commonly referred to as ‘Warburg’ phenotype,
^  our model predicted a more respiratory phenotype for the Molt-4 model.

We found these predictions to be in agreement with measured gene expression differences

  • at key regulatory steps in the central metabolic pathways, and they were also
  • consistent with additional experimental data regarding the energy and redox states of the cells.

After a brief discussion of the data generation and analysis steps, the results derived from model generation and analysis will be described in detail.

2.1 Pipeline for generation of condition-specific metabolic cell line models

integration of exometabolomic (EM) data

integration of exometabolomic (EM) data

2.1.1 Generation of experimental data

We monitored the growth and viability of lymphoblastic leukemia cell lines in serum-free medium (File S2, Fig. S1). Multiple omics data sets were derived from these cells.Extracellular metabolomics (exo-metabolomic) data,

integration of exometabolomic (EM) data

integration of exometabolomic (EM) data

^  comprising measurements of the metabolites in the spent medium of the cell cultures (Paglia et al. 2012a),
^ were collected along with transcriptomic data, and these data sets were used to construct the models.

2.1.4 Condition-specific models for CCRF-CEM and Molt-4 cells

To determine whether we had obtained two distinct models, we evaluated the reactions, metabolites, and genes of the two models. Both the Molt-4 and CCRF-CEM models contained approximately half of the reactions and metabolites present in the global model (Fig. 1C). They were very similar to each other in terms of their reactions, metabolites, and genes (File S1, Table S5A–C).

(1) The Molt-4 model contained seven reactions that were not present in the CCRF-CEM model (Co-A biosynthesis pathway and exchange reactions).
(2) The CCRF-CEM contained 31 unique reactions (arginine and proline metabolism, vitamin B6 metabolism, fatty acid activation, transport, and exchange reactions).
(3) There were 2 and 15 unique metabolites in the Molt-4 and CCRF-CEM models, respectively (File S1, Table S5B).
(4) Approximately three quarters of the global model genes remained in the condition-specific cell line models (Fig. 1C).
(5) The Molt-4 model contained 15 unique genes, and the CCRF-CEM model had 4 unique genes (File S1, Table S5C).
(6) Both models lacked NADH dehydrogenase (complex I of the electron transport chain—ETC), which was determined by the absence of expression of a mandatory subunit (NDUFB3, Entrez gene ID 4709).

Rather, the ETC was fueled by FADH2 originating from succinate dehydrogenase and from fatty acid oxidation, which through flavoprotein electron transfer

FADH2

FADH2

  • could contribute to the same ubiquinone pool as complex I and complex II (succinate dehydrogenase).

Despite their different in vitro growth rates (which differed by 11 %, see File S2, Fig. S1) and
^^^ differences in exo-metabolomic data (Fig. 1B) and transcriptomic data,
^^^ the internal networks were largely conserved in the two condition-specific cell line models.

2.1.5 Condition-specific cell line models predict distinct metabolic strategies

Despite the overall similarity of the metabolic models, differences in their cellular uptake and secretion patterns suggested distinct metabolic states in the two cell lines (Fig. 1B and see “Materials and methods” section for more detail). To interrogate the metabolic differences, we sampled the solution space of each model using an Artificial Centering Hit-and-Run (ACHR) sampler (Thiele et al. 2005). For this analysis, additional constraints were applied, emphasizing the quantitative differences in commonly uptaken and secreted metabolites. The maximum possible uptake and maximum possible secretion flux rates were reduced
^^^ according to the measured relative differences between the cell lines (Fig. 1D, see “Materials and methods” section).

We plotted the number of sample points containing a particular flux rate for each reaction. The resulting binned histograms can be understood as representing the probability that a particular reaction can have a certain flux value.

A comparison of the sample points obtained for the Molt-4 and CCRF-CEM models revealed

  • a considerable shift in the distributions, suggesting a higher utilization of glycolysis by the CCRF-CEM model
    (File S2, Fig. S2).

This result was further supported by differences in medians calculated from sampling points (File S1, Table S6).
The shift persisted throughout all reactions of the pathway and was induced by the higher glucose uptake (34 %) from the extracellular medium in CCRF-CEM cells.

The sampling median for glucose uptake was 34 % higher in the CCRF-CEM model than in Molt-4 model (File S2, Fig. S2).

The usage of the TCA cycle was also distinct in the two condition-specific cell-line models (Fig. 2). Interestingly,
the models used succinate dehydrogenase differently (Figs. 2, 3).

TCA_reactions

TCA_reactions

The Molt-4 model utilized an associated reaction to generate FADH2, whereas

  • in the CCRF-CEM model, the histogram was shifted in the opposite direction,
  • toward the generation of succinate.

Additionally, there was a higher efflux of citrate toward amino acid and lipid metabolism in the CCRF-CEM model (Fig. 2). There was higher flux through anaplerotic and cataplerotic reactions in the CCRF-CEM model than in the Molt-4 model (Fig. 2); these reactions include

(1) the efflux of citrate through ATP-citrate lyase,
(2) uptake of glutamine,
(3) generation of glutamate from glutamine,
(4) transamination of pyruvate and glutamate to alanine and to 2-oxoglutarate,
(5) secretion of nitrogen, and
(6) secretion of alanine.

energetics-of-cellular-respiration

energetics-of-cellular-respiration

The Molt-4 model showed higher utilization of oxidative phosphorylation (Fig. 3), again supported by
elevated median flux through ATP synthase (36 %) and other enzymes, which contributed to higher oxidative metabolism. The sampling analysis therefore revealed different usage of central metabolic pathways by the condition-specific models.

Fig. 2

Differences in the use of  the TCA cycle by the CCRF-CEM model (red) and the Molt-4 model (blue).

Differences in the use of the TCA cycle by the CCRF-CEM model (red) and the Molt-4 model (blue).

Differences in the use of the TCA cycle by the CCRF-CEM model (red) and the Molt-4 model (blue).

The table provides the median values of the sampling results. Negative values in histograms and in the table describe reversible reactions with flux in the reverse direction. There are multiple reversible reactions for the transformation of isocitrate and α-ketoglutarate, malate and fumarate, and succinyl-CoA and succinate. These reactions are unbounded, and therefore histograms are not shown. The details of participating cofactors have been removed.

Figure 3.

Molt-4 has higher median flux through ETC reactions II–IV 11306_2014_721_Fig3_HTML

Molt-4 has higher median flux through ETC reactions II–IV 11306_2014_721_Fig3_HTML

Atp ATP, cit citrate, adp ADP, pi phosphate, oaa oxaloacetate, accoa acetyl-CoA, coa coenzyme-A, icit isocitrate, αkg α-ketoglutarate, succ-coa succinyl-CoA, succ succinate, fumfumarate, mal malate, oxa oxaloacetate,
pyr pyruvate, lac lactate, ala alanine, gln glutamine, ETC electron transport chain

Ingenuity network analysis showing up (red) and downregulation (green) of miRNAs involved in PC and their target genes

Ingenuity network analysis showing up (red) and downregulation (green) of miRNAs involved in PC and their target genes

metabolic pathways 1476-4598-10-70-1

metabolic pathways 1476-4598-10-70-1

Metabolic Systems Research Team fig2

Metabolic Systems Research Team fig2

Metabolic control analysis of respiration in human cancer tissue. fphys-04-00151-g001

Metabolic control analysis of respiration in human cancer tissue. fphys-04-00151-g001

Metabolome Informatics Research fig1

Metabolome Informatics Research fig1

Modelling of Central Metabolism network3

Modelling of Central Metabolism network3

N. gaditana metabolic pathway map ncomms1688-f4

N. gaditana metabolic pathway map ncomms1688-f4

protein changes in biological mechanisms

protein changes in biological mechanisms

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Metabolic Reactions Need Just Enough

Author and Curator: Larry H Bernstein, MD, FCAP 

 

This is another installment of the metabolomics series that has delved into the relationship between the building blocks of life.
There would be no life without the genetic code, which has changed over the span of life in our universe, but with retention of the instructions that have selective advantage under the existing conditions, which include environmental temperature, water, metallic elements, and the most abundant elements essential for organic reactions – carbon, hydrogen, oxygen, nitrogen, sulfur, to which we would add iron, calcium, sodium, chloride, potassium, magnesium, cadmium, manganese, nickel and selenium.   Many consider it a miracle that life would evolve out of this primordial mix.  Those who are of a different mind have spent generations in human history piecing together the evidence that our existence and our improvement has elements to understand, and is subject to improvement.  This is encountered in the sciences and, to a serious extent in the humanities as well.  This is why we have gone from the most basic to the more comprehensive, if also seemingly incomprehensible because of complexities, uncertainties, and insufficient information to complete the puzzle, which may never be completed.  The pursuit has led our society from – village, to town, to city, to metropolis, with intermingling of societies, as if societies become like living organisms of another order.  If this is the case, then war and peace, and competition for resources, and barriers, and issues of control are another dimension of an intricate network.  This is what propagates the imaginings of Science Fiction noire.

 

Part I.  Everything works in concert

Getting metabolism right

10/08/2014 – Larry Hardesty, MIT News Office

 

Metabolic networks are mathematical models of chemical reactions

Metabolic networks are mathematical models of chemical reactions

 

 

Image: Jose-Luis Olivares/MIT

Metabolic networks are mathematical models of every possible sequence of chemical reactions available to an organ or organism, and they’re used to design microbes for manufacturing processes or to study disease. Based on both genetic analysis and empirical study, they can take years to assemble.

An analytic tool developed at Massachusetts Institute of Technology (MIT) suggests that many of those models may be wrong, but the same tool may make it fairly straightforward to repair them.

“They have all these models in this database at [the Univ. of California at] San Diego,” says Bonnie Berger, a professor of applied mathematics and computer science at MIT and one of the tool’s developers. Many of them have computational errors because they were calculated with floating-point arithmetic, used to increase efficiency. The MIT team has proved that you need to compute them in exact arithmetic. They found that models that were believed to be realistic don’t produce growth that is expected.

The new tool, and the analyses performed with it has been published in Nature Communications, with Leonid Chindelevitch, first author, a graduate student in Berger’s group, now a postdoctoral researcher at the Harvard School of Public Health. He and Berger are joined by Aviv Regev, an associate professor of biology at MIT, and Jason Trigg, another of Berger’s former students.

Pruning the network
Metabolic networks, Chindelevitch says, “describe the set of all reactions that are available to a particular organism that we might be interested in. So if we’re interested in yeast or E. coli or the tuberculosis bacterium, this is a way to put together everything we know about what this organism can do to transform some substances into some other substances.

  1. it gets nutrients from the environment,
  2. it will transform them by its own internal mechanisms

The network thus represents every sequence of chemical reactions catalyzed by enzymes encoded in an organism’s DNA that could

  • lead from particular nutrients
  • to particular chemical products.

Every node of the network represents an intermediary stage in some chain of reactions.

To simplify such networks enough to enable exact arithmetical analysis, Chindelevitch and Berger developed an algorithm that

  1. first identifies all the sequences of reactions that, for one reason or another, can’t occur within the context of the model;
  2. it then deletes these.
  3. it identifies clusters of reactions that always work in concert: Whatever their intermediate products may be, they effectively perform a single reaction.
  4. The algorithm then collapses those clusters into a single reaction.

Chindelevitch and Berger were able to mathematically prove that these modifications wouldn’t affect the outcome of the analysis.

“What the exact-arithmetic approach allows you to do is respect the key assumption of the model, which is that

  • at steady state, every metabolite is neither produced in excess nor depleted in excess,” Chindelevitch says. “The production balances the consumption for every substance.”

When Chindelevitch and Berger applied their analysis to 89 metabolic-network models in the San Diego database, they found that 44 of them contained errors or omissions:

  • If the products of all the reactions in the networks were in equilibrium, the organisms modeled would be unable to grow.

Patching it up
By adapting algorithms used in the field of compressed sensing, however, Chindelevitch and Berger are also able to identify

  • likely locations of network errors.

Compressed sensing exploits the observation that some complex signals—such as audio recordings or digital images—that are computationally intensive to acquire can, upon acquisition, be compressed. It performs the initial sampling in a clever way that allows it to build up the simpler representation without having to pass through a more complex representation. Chindelevitch and Berger’s algorithm can isolate just those links in a metabolic network that contribute most to its chemical imbalance.
Source: Massachusetts Institute of Technology

Researchers purified the protein and used electron microscopy to reveal its structure.

Scientists have taken pictures of the BRCA2 protein, showing how it works to repair damaged DNA, providing insight into how mutations in the gene that encodes BRCA2 would raise the risk of breast and ovarian cancers. Though the protein is known to be involved in DNA repair, its shape and mechanism have been unclear.

Researchers at Imperial College London and the Cancer Research UK London Research Institute purified the protein and used electron microscopy to reveal its structure and how it interacts with other proteins and DNA. The results are published in Nature Structural and Molecular Biology.

The lifetime risk of breast cancer for women with BRCA2 mutations is 40 to 85 per cent, depending on the mutation, compared with around 12 per cent for the general population. Many women who test positive for BRCA1 and BRCA2 mutations choose to undergo surgery to reduce their risk of breast cancer. The BRCA1 and BRCA2 genes encode proteins involved in DNA repair.

The study, led by Professor Xiaodong Zhang from the Department of Medicine at Imperial College London and Dr Stephen West at the London Research Institute, according to Professor Zhang, “is our first view of how the protein looks and how it works”. “Once we have added more detail to the picture, we can design ways to correct defects in BRCA2 and help cells repair DNA more effectively to prevent cancer”, but also think about how to make autophagy (protein repair) less effective in cancer cells, so that they die.”

The study found that BRCA2 proteins work in pairs – which the researchers found surprising since BRCA2 is one of the largest proteins in the cell.

BRCA2 works in partnership with another protein called

BRCA2 helps RAD51 molecules to

  • assemble on strands of broken DNA and form filaments.

The RAD51 filaments then search for

  • matching strands of DNA in order to repair the break.

The findings showed that

  • each pair of BRCA2 proteins binds two sets of RAD51 that run in opposite directions.

This allows it to work on strands of broken DNA that point in either direction. They also show that BRCA2’s job is to help RAD51 form short filaments at multiple sites along the DNA, presumably to increase the efficiency of establishing longer filaments required to search for matching strands.

 

 

Unlocking The Non-Coding Half of Human Genome

Texas A&M biologists unlock non-coding half of human genome with novel DNA sequencing technique.    Oct 07, 2014  http://www.technologynetworks.com/Genomics

An obscure swatch of human DNA once thought to be nothing more than biological trash may actually offer a treasure trove of insight into complex genetic-related diseases, thanks to a novel technique developed by biologists at Texas A&M University, doctoral candidate John C. Aldrich and Dr. Keith A. Maggert, an associate professor in the Department of Biology, in measuring variation in heterochromatin. This tightly packed section of the non-coding human genome, was until recently thought to have no discernable function.

Aldrich monitored the dynamics of the heterochromatic sequence in Drosophyla by modifying the quantitative polymerase chain reaction (QPCR) used to amplify specific DNA sequences, adding a fluorescent dye that allowed him to monitor the fruit-fly DNA changes and to observe any variations.

Aldrich’s findings, published in the online edition of the journal PLOS ONE, showed that differences in the heterochromatin exist, confirming that the junk DNA is not stagnant as researchers originally had believed and that mutations which could affect other parts of the genome occur in non-coding DNA.

“This work opens up the non-coding half of the genome.”  The coding regions, contain the information necessary for a cell to make proteins, but far less is known about the non-coding regions, beyond the fact that

  • they are not directly related to making proteins.

Maggert said. “In my opinion, there are about 30,000 protein-coding genes. The rest of the DNA –

  • greater than 90 percent –
  • either controls those genes and therefore is technically part of them, or
  • is within this mush that we study and, thanks to John, can now measure.

The heterochromatin that we study definitely has effects, but it’s not possible to think of it as discrete genes. So, we prefer to think of it as

  • 30,000 protein-coding genes plus this one big, complex one that can orchestrate the other 30,000.”

When human DNA was finally sequenced with the completion of the Human Genome Project in 2003, researchers determined that only two percent of the genome (about 21,000 genes) represented coding DNA. Since then, numerous other studies have emerged debating the functionality, or lack thereof, of non-coding, so-called “junk DNA.”

“There is so much talk about understanding the connection between genetics and disease and finding personalized therapies,” Maggert said. “However, this topic is incomplete unless biologists can look at the entire genome.

Breakthrough allows researchers to watch molecules “wiggle”

10/08/2014

 

time-resolved crystallography

time-resolved crystallography

A new crystallographic technique developed at the University of Leeds,
published in the journal Nature Methods,  describes a new way of doing time-resolved crystallography, a method that researchers use to observe changes within
the structure of molecules. Fast time-resolved crystallography (Laue crystallography) has only been available at three sites worldwide. This resulted in only a handful of proteins having been studied using the technique. The new method will allow researchers across the world to carry out dynamic crystallography.

Further, it is likely to provide a major boost to research on understanding how molecules work. Understanding how structure and dynamics are linked to function is key to designing better medicines targeted at specific states of molecules, helping to avoid unwanted side effects.

“A time-resolved structure is a bit like having a movie for crystallographers,” said Professor Arwen Pearson, who led a team of researchers in the University’s Faculty of Biological Sciences and School of Chemistry. “Life wiggles. It moves about and, to understand it,

  • you need to be able to see how biological structures move at the atomic scale. This breakthrough allows us to do that.”

Traditional x-ray crystallography fires x-rays into crystallized molecules and creates an image that allows researchers to work out the atomic structure of the molecules. A major limitation is that the picture created is the average of all the molecules in a crystal and their motions over the time of an experiment.

Dr. Briony Yorke, the lead researcher on the project, said: “A static picture is not very helpful if you want to observe how molecular structures work. ..it is hard to really understand something without seeing it in action.”

The existing method of getting around the problem could be compared to the laborious process of making an animated film. Scientists “synchronise” a set of molecules in an identical state and then activate, or “pump”, the changes in the molecules. They take a crystallographic snapshot of the structure after a set time. The researchers then have to repeat the process. This approach was first proposed by the British Nobel Prize winning chemist George Porter in the 1940s. However, there are only three x-ray generators, in the world that are capable of delivering a powerful enough beam to create a crystallographic image..

The new method uses clever mathematics (a Hadamard Transform) to open up the field to much less powerful “beamlines”, that scientists use to harness powerful synchrotron light for crystallography and other techniques. This will enable facilities, to do time-resolved crystallography.

As in Porter’s method, in the new approach researchers synchronise their molecules and activate them. However, they then make a series of crystallographic “probes” of the moving structures using a pattern of light pulses. These pulses build up a single crystallographic image—a bit like a long exposure photograph. The researchers then repeat the experiment using  different patterns of light pulses and create different “long exposure” images, repeated until all of the pulse patterns created (using a mathematical formula) have been completed. Even though  the “long exposure” images created from the pulse patterns are blurred, the differences between the pulse patterns that created them allow researchers to extract a moving picture of the molecules’ changing structures.

Professor Pearson said that this method doesn’t need the very strong light required by the Porter method, thereby overcoming many of the current limitations.” Co-author Professor Godfrey Beddard, Emeritus Professor of Chemical Physics at the University of Leeds, said: “We demonstrate this method for crystallography, but it will work for any time-resolved experiment where the probe can be encoded. This new method means that, instead of having to go to one of the three instruments in the world that can currently do time-resolved crystallography, you can go to any beamline at any synchrotron—basically it massively opens the field for these kinds of experiments.”

Co-author Dr Robin Owen, Principal Beamline Scientist at Diamond Light Source, said: “The beauty of the approach is that it uses existing equipment in a new way to facilitate new science. The novel use of the Hadamard transform, or multiple-exposure, approach helps open the door for time-resolved science at a much wider range of beamlines and synchrotron sources than is currently possible. By exploiting the approach we will be able to obtain multiple sequential images of a protein while it carries out its function, providing a much clearer understanding of the relationship between structure and function.”

Professor Paul Raithby, Chair of Inorganic Chemistry at the University of Bath, a leading expert on time-resolved crystallography, who was not one of the authors of the paper, said: “This is a very exciting development in the area of macromolecular and molecular crystallography.  The new method will allow us to “watch” chemical and biological processes as they happen in a way that has not been possible previously,…”

The research was funded by the Wellcome Trust and was conducted at the University of Leeds and the Diamond Light Source. Professor Pearson is now Professor of Experimental Biophysics at The Hamburg Centre for Ultrafast Imaging (CUI) of Universität Hamburg. Dr Yorke is now a postdoctoral research fellow, also at Universität Hamburg.

Time-resolved crystallography using the Hadamard Transform

Time-resolved crystallography and protein design: signalling photoreceptors and optogenetics

Keith Moffat
University of Chicago
Phil. Trans. R. Soc. B 17 July 2014; 369(1647): 20130568
http://dx.doi.org:/ 10.1098/rstb.2013.0568
http://rstb.royalsocietypublishing.org/content/369/1647/20130568.abstract

Time-resolved X-ray crystallography and solution scattering have been successfully conducted on proteins on time-scales down to around 100 ps, set by the duration of the hard X-ray pulses emitted by synchrotron sources. The advent of hard X-ray free-electron lasers (FELs), which emit extremely intense, very brief, coherent X-ray pulses, opens the exciting possibility of time-resolved experiments with femtosecond time resolution on macromolecular structure, in both single crystals and solution. The X-ray pulses emitted by an FEL differ greatly in many properties from those emitted by a synchrotron, in ways that at first glance make time-resolved measurements of X-ray scattering with the required accuracy extremely challenging. This opens up several questions which I consider in this brief overview. Are there likely to be chemically and biologically interesting structural changes to be revealed on the femtosecond time-scale? How shall time-resolved experiments best be designed and conducted to exploit the properties of FELs and overcome challenges that they pose? To date, fast time-resolved reactions have been initiated by a brief laser pulse, which obviously requires that the system under study be light-sensitive. Although this is true for proteins of the visual system and for signalling photoreceptors, it is not naturally the case for most interesting biological systems. To generate more biological targets for time-resolved study, can this limitation be overcome by optogenetic, chemical or other means?

 

Part 2. Metabolomics and Systems Biology

Metabolomics in systems biology.

Weckwerth W.
Annu Rev Plant Biol. 2003;54:669-89.   http://www.ncbi.nlm.nih.gov/pubmed/14503007
The primary aim of “omic” technologies is the non-targeted

  • identification of all gene products (transcripts, proteins, and metabolites)
  • present in a specific biological sample.

These technologies reveal unexpected properties of biological systems.

A second and more challenging aspect of omic technologies is the

  • refined analysis of quantitative dynamics in biological systems.
  • gas and liquid chromatography coupled to mass spectrometry are well suited for coping with
    1. high sample numbers in reliable measurement times with respect to both
    2. technical accuracy and
    3. the identification and quantitation of small-molecular-weight metabolites.

This potential is a prerequisite for the analysis of dynamic systems. Thus, metabolomics is a key technology for systems biology. The aim of this review is to

(a) provide an in-depth overview about metabolomic technology,
(b) explore how metabolomic networks can be connected to the underlying reaction pathway structure, and
(c) discuss the need to investigate integrative biochemical networks.     PMID:14503007

Systems Biology, Metabolomics, and Cancer Metabolism

Masaru Tomita, Kenjiro Kami
Institute for Advanced Biosciences, Keio University, Tsuruoka,  Japan; Systems Biology Program, Graduate School of Media and Governance, Keio University, Fujisawa, Japan; and Human Metabolome Technologies Inc., Tsuruoka, Japan.
Science 25 May 2012; 336(6084): 990-991   http://dx.doi.org:/10.1126/science.1223066

Recent breakthroughs in cancer metabolism include

  • the identification of an alternative glycolytic pathway in proliferative cells

(1) and an essential role for the serine synthesis pathway in breast cancer
(2). With a data-driven approach, as opposed to the conventional hypothesis-driven approach, in this issue, on page 1040, Jain et al.
(3) determined that rapidly proliferating cancer cells require large amounts of the nonessential amino acid glycine, which has clear and direct implications for cancer therapy.
Source: Univ. of Leeds

Metabolite Profiling Identifies a Key Role for Glycine in Rapid Cancer
Mohit Jain et al.
Science 336, 1040 (2012);
http://dx.doi.org:/10.1126/science.1218595

New Signaling Pathways for Hormones and Cyclic Adenosine 3′,5′-Monophosphate Action in Endocrine Cells

JoAnne S. Richards
Molec Endocrinol 1 Feb, 2001; 15(2)
http://dx.doi.org/10.1210/mend.15.2.0606

The glycoprotein hormones, ACTH, TSH, FSH, and LH

  • regulate diverse functions in endocrine cells.

Although cAMP and PKA have long been shown to mediate specific intracellular signaling events including

  • the transcription of specific genes via the CREB-CBP complex,

recent observations have indicated that

  • PKA does not account for all of the intracellular targets of cAMP.
  1. TSH stimulation of thyroid cell proliferation is not completely blocked by PKA inhibitors.
  2. TSH and FSH can stimulate PKB phosphorylation by a PKA independent but PI3-K/PDK1-dependent pathway.

An FSH inducible kinase, Sgk,

  1. has recently been shown to be a close relative of PKB.
  2. Sgk is a target of PI3-K-PDK1 pathway,

indicating that some effects previously ascribed to PKB

  • may be mediated by this inducible kinase.

The identification of novel cAMP-binding proteins

  1. exhibiting guanine nucleotide exchange (GEF) activity
    (cAMP-GEFS; Epacs)
  2. opens new doors for cAMP action that include activation of small GTPases
    1. such as Rap1a, Rap2, and possibly Ras.

These GTPases are known activators of downstream kinase cascades,

  • including p38MAPK and Erk1/2 as well as PI3-K.

Thus, FSH and TSH activation of PKB and Sgk may occur via

  • this alternative cAMP pathway that involves
  • cAMP-GEFs and
  • the activation of the PI3-K/PDK1 pathway.

Molecular Control of Immune/Inflammatory Responses: Interactions Between Nuclear Factor-κB and Steroid Receptor-Signaling Pathways

Lorraine I. McKay, and John A. Cidlowski
Endocr Rev 1 Aug, 1999; 20(4)
 http://dx.doi.org/10.1210/edrv.20.4.0375

Nuclear Factor-κB (NF-κB)

  1. NF-κB is a dimeric transcription factor
  2. The regulatory subunit IκB is an inhibitor of NF-κB
  3. Activation and function of NF-κB
  4. The transcription factor NF-κB interacts with multiple transcription factors and transcriptional co-factors
  5. Transgenic animals suggest a complex role for NF-κB family members in immunity and development

Steroid Hormones/Receptors: Glucocorticoids and the Glucocorticoid Receptor (GR)

  1. Glucocorticoid mechanism of action: the GR
  2. Glucocorticoid physiology
  3. GR/NF-κB interactions
  4. GR interacts with other transcription factors and transcriptional cofactors

NF-κB and GR Antagonism: Physiological Significance?

Interactions Between NF-κB and Other Steroid Hormone Receptors

  1. Androgen receptor (AR)
  2. Estrogen receptor (ER)
  3. Progesterone receptor (PR)

Structural Biochemistry/Cell Signaling Pathways/Endocrine System

There are many types of signaling involved in the endocrine system including: autocrine, paracrine, and juxtacrine. Autocrine hormones act on the secreting cell itself, paracrine hormones act only on neighboring cells, and juxtacrine hormones act either on the emitting cell or adjacent cells.

Relationship of Metabolomics to Traditional Metabolism

The traditional methodology of analytical biochemistry as it relates to metabolism is slowly and carefully being replaced by the newer and far more effective methods of the new field Metabolomics. This is being done simply because the old methods of classic metabolism can’t yield the type of data needed for the aims of systems biology and metabolic engineering by concentrating on

  • single pathways and only
  • minor interactions between them.

In comparison Metabolomics is far more effective for a wide variety of systems biology concerns, like

  • nutrigenomics and toxicology.

Previously all attempts had been concentrated on

  • proteomics and genomics

because keeping track of the entire metabolome was an extraordinarily difficult task. But as more cheap and effective methods of doing this were developed Metabolomics steadily became more effective than even proteomics and genomics.

The differences are strong enough to necessitate a rethinking of the experimental processes and procedures and the integrations of data sharing and acquistion. Even the nomenclature and terminology is undergoing an overhaul showing just how much of a radical change in focus and method Metabolomics is. This doesn’t mean that the reductionism method is useless by any means. Parts of the biochemical processes and the metabolic systems of organisms can be better understood through reductionism Classical analytical biochemistry for metabolism is not being replaced. It just has a brand new systems orientated partner in the new and exciting biological and biochemistry fields of study and application that are opening up even now.

The focus of this resource is specifically

  1. the description of Metabolism as a concept and
  2. partially the description of the classical methodology of investigating its function and predicting its actions
    1. normally and
    2. when perturbed.

It describes the classic methods of investigating and quantifying metabolism

  • as following a reductionist approach by focusing on single metabolic pathways or
  • on minor interactions between several pathways. see picture)

The methods used here often were

  • the tracking of radioactive tracers through a pathway or
  • the tracking of metabolic levels of certain key metabolites and biomarkers.

Slightly newer pre Metabolomics methods included using

  • genomic and proteomic data to apply holistic mathematical and statistic analysis to the metabolic systems overall. (see picture)

These methods were still less effective than Metabolomics would presumably be.

 

Terms

Reductionism

An approach to understanding the function and nature of a complex entity or process by reducing it to the interactions of its parts and subprocesses. wiki/Reductionism


Metabolic Network

The complete set of metabolic and physical processes that determine the physiological and biochemical properties of a cell. wiki/Metabolic_network

Radioactive Tracer

A radioactive molecule used to track the flow of molecules and atoms within a set of reactions.

Metabolic Pathway

A naming convention in biochemistry, the word pathway describes a collection of related chemical reactions that all happen in sequence. Metabolic pathways are specifically biochemical pathways of the metabolome.

Molecular Dynamics

a form of computer simulation that attempts to model the motions and interactions of atoms and molecules under the known laws of physics. In the context of this resource it was one of the methods of classical biochemistry, using the reduced aspects of chemistry to try to model the whole. wiki/Molecular_dynamics

Ontology (information science)

The representation of a set of concepts within a domain and the relationships between those concepts. wiki/Ontology_(information_science). In the context of this resource the domain is metabolic networks and the metabolome as well as the science of Metabolomics and the concepts contained within.

Controlled Vocabularies (CV’s)

Collection of terms and descriptions of concepts that are forced to follow specific rules or conventions to allow for maximum usefulness in the discourse about a field of study.

Disparate resources 

Diverse or markedly different resources. This state in resources can often be a cause of problems for data communication.

Systems Biology

The new realm of biological study that concentrates on the systematic analysis of complex interactions in biological systems. This represents a move away from reductionism in biology towards the perspective of integration.

Metabolite

The products and intermediate materials of metabolic processes.
wiki/Metabolite#Metabolites

Hypercycles (chemical) 

A self reproducing macromolecular system in which the RNAs and enzymes cooperate (see picture) The macromolecules also cooperate to provide primitive translation abilities which allows information to be translated into enzymes.
pespmc1.vub.ac.be

Metabonomics 

“The quantitative measurement of the dynamic multiparametric metabolic response of loving systems to pathophysiological stimul or genetic modification” wiki/Metabolite#Metabonomics

Nutrigenomics 

The study of the relation between nutrition and genomics with the application of boosting and monitoring human health. wiki/Nutrigenomics

Metabolic engineering

The optimization of the regulatory and genetic processes in a cell in order to produce certain substances more efficiently and faster. The entire context of this article orientates around making this sort of thing easier and more effective.
wiki/Metabolic_engineering

Holistic Approach

An approach that avoids the idea that the parts could yield an idea of what the whole would do and instead attempts to understand the function of the whole system. (gleaned from context in the article)

Hierarchical Metabolic Regulation

A set of theories that state that metabolic regulation operates in a hierarchy, that the genetic level is the first level, the protein translation level is the next level and the enzymatic regulation level is after that. It also states that complex interactions between level 2 and 3 often occur and blend the two together. (gleaned from context in the article)

Diauxic

Double growth. A description of the growth phases of a bacterial colony that is metabolizing a mixture of metabolites, usually sugars. wiki/Diauxie

Metabolomics Society Workgroups

Biological metadata workgroups are responsible for detailing the metadata of the experiments for Metabolomics and setting up the standards for running a Metabolomics experiment as detailed by the Metabolomics Society Metabolomics Society Webpage.

The chemical analysis workgroup’s job is to “identify, develop and disseminate best chemical analysis practices in all aspects of Metabolomics” CAWG. It’s not their job to determine how experiments should be run but to establish a set of minimal standards to follow.

The Data Processing workgroup concentrates on establishing standards for algorithms and data reporting DPWG.

The Ontology workgroup will concentrate on making the language of Metabolomics coherent and understandable as well as relevant to the sciences OWG.

The exchange format Workgroup concentrates on the exchange of information and the format of analysis. EFGW.
The focus of this article is to describe the impact of the expansion of traditional sciences into “–omics” a shorthand reference for a systems biology approach that expands

  • from a single function or pathway (something like genetics or metabolism) into
  • an integrated system model (like genomics and metabolomics).

It goes over specifically the advances made in each field and how those advances serve to benefit metabolic engineering overall. The article first describes

  1. the nature of the situation giving background on what we know about regulation and the hierarchy of the regulation of metabolic processes (see picture) and then
  2. goes deeper into the contributions of proteomics, systems biology, genomics and finally metabolomics (see picture).
  3. They wrap up the article discussing how this will benefit metabolic engineering more than previous techniques.

This article connects to Biochemistry

 

The article itself however is suggesting a move to the more systems orientated approach in Metabolomics (among other -omics) because the older methods of concentrating on single pathways and small scale integration simply does not give the knowledge necessary to achieve the aims that metabolic engineers wish to achieve. This relates to our Metabolomics projects and their contrast to the techniques and information we’ve learned that follows the more traditional approach of

  • reduction of the systems to stand alone pathways with
  • small levels of integration.

his article focuses entirely on Metabolomics and whether it will be a scientific contender in the near future. It initially describes the history of Metabolomics and how it fits into the entire scheme of biological investigation and prediction for systems biology (see picture) as well as the past difficulties in working in this relatively new field. Because the numbers of metabolites that need to be kept track of at once are so high, the sciences have put more energy into proteomics and genomics previously. However the new techniques being used are high thorough put and cheap to use. Due to this Metabolomics has easily surpassed past Metabolism investigation methods and is beginning to surpass proteomics and genomics as well.

The article describes several major success stories for Metabolomics including comparisons of silent phenotypes in yeast, a high throughput diagnosis of

  • coronary artery disease, and
  • monitoring gene therapy in Duchenne Muscular Dystrophy

among several others. These things in particular are in contrast to previous investigations of simple metabolism mostly due to their higher level of application. Metabolomics is simply capable of a far greater effect on the application of biochemistry than the original reductionist approaches of metabolism

The article also discusses the sheer volume of data that needs to be cataloged and measured before full effectiveness was reached and how

  • cross correlations between Metabolomics and other “-omics” technologies can have major mutual benefits.

Metabolomics is an effective

  • rapid phenotyping tool for mutant tracking in genomics and can
  • speed up the data acquisition in many genomics investigations
  • as well as giving a more accurate view (see picture).

The article also discusses in slightly less detail the need for powerful databases and accounts for the fact that the technology and methods already exist to create and populate these data storage and manipulation tools. The article proceedes to point out the need for new and more powerful analysis technology due to the sheer amount of data that one needs to acquire. New Software is especially needed to manipulate and analyze the data as it comes in. The article concludes by stating the great potential Metabolomics has both

  • in working with other “-omics” and
  • in revolutionizing metabolic profiling

but states that the Metabolomics needs to carefully consider a lot of different factors to get its foot in the door, especially in terms of metadata.

The focus of this article is describing the issues surrounding the previous metabolic profiling approaches that centered themselves on reductionism pathway analysis. It points out the shortcomings of attempts to draw genome scale metabolic networks using the typical pathway methods.

The article is a useful view into the methodology of traditional metabolism. For instance, it describes in the background how many biochemists would study one particular pathway, like glycolysis without taking into account other seemingly unrelated pathways that could interact with it. This article cited the usefulness of having large-scale representations of the metabolic profile and how it allowed a scientist to track perturbations of the metabolic system in multiple locations therefore boosting the efficiency and accuracy of metabolic investigation.

The article also discusses the issues with overlapping nodes and proposes a system in which concentration and focus of the metabolic profile and drawing may be chosen by the individual using it, to eliminate overlapping nodes but avoiding the loss of necessary data and context. They propose a software system using several algorithms to draw the metabolic maps in a more effective way. Several of these test maps are shown (see picture).

The article suggests using mixed bipartite graphs to model the data (see picture) and multi scale clustering in the drawing algorithm in order to help group together the drawing in a way that can be tracked visually and easily but not result in data loss. (see picture). The drawing method also draws metanodes to further enhance visualization with a recursive algorithm that draws the subgraphs from the most nested to the least nested. (see picture)

The article tested the software and methods and compared the drawing to other methodology tracking whether the drawing method was more or less accurate and whether it was easier or more difficult to read.

http://en.wikipedia.org/wiki/Metabolism#Investigation_and_manipulation

http://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=1197421#id2593737 

http://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=1626538

The Cinderella story of metabolic profiling: does metabolomics get to go to the functional genomics ball?

Metabolic network visualization eliminating node redundance and preserving metabolic pathways

 

2 Metabolites

o2.1 Metabolites and their pathways

2.1.1 KEGG Pathways

2.1.2 MetaCyc

2.1.3 The Human Metabolome Database

2.1.4 Institute for Analytical Sciences

 

Guanosine Monophosphate (GMP)

 

Guanosine monophosphate structure

Guanosine monophosphate structure

Guanosine monophosphate structure

 

Researchers have utilized chemical proteomics in order to identify the novel target molecules of cyclic guanosine monophosphate (cGMP), with the intention of obtaining a better understanding of the cGMP pathway. Experiments were conducted on cGMP that had been immobilized onto agarose beads with linkers directed at three different cGMP positions. The employment of agarose beads allowed for maximum accessibility of cGMP to its binding partners.

Using a pull-down assay with the beads as bait on tissue lysates, nine proteins were identified via Matrix-Assisted Laser Desorption/Ionization Time-of-Flight (MALDI-TOF) mass spectrometry. A portion of these proteins consisted of previously identified cGMP targets, which included

  • cGMP-dependent protein kinase and
  • cGMP-stimulated phosphodiesterase.

Evidence from competition binding assays determined that protein interactions occurred by

  • specific binding of cGMP
  • into the binding pockets of its target proteins,
  • and were also highly stereo-specific to cGMP

against other nucleotides. MAPK1 was confirmed

  • as one of the identified target proteins

via immunoblotting with an anti-MAPK1 antibody. Further evidence was provided by observing the

  • stimulation of mitogen-activated protein kinase 1 signaling
  • by membrane-permeable cGMP,

in the treated cells. Further research in the field of proteomics is expected to yield more efficient tools and techniques applicable to the identification and analysis of bioactive molecules and their target proteins.

cGMP binding protein isolation revealed that

  • the brain tissue samples had a higher concentration of cGMP binding proteins
  • than did the heart or liver tissue samples.

This observation implied that there is a

  • more diverse cGMP signal transduction role in the brain than in the heart or liver.

In addition, an increase of MAPK phosphorylation was discovered via immunoblotting with an anti-phospho MAPK antibody. Researchers have determined that

  • direct interactions occur between cGMP binding proteins and cGMP.

The binding proteins are also strongly believed to be regulated by the concentration of cellular cGMP. Further research in the field of proteomics is expected to yield more efficient tools and techniques applicable to the identification and analysis of bioactive molecules and their target proteins.

References:

http://www.jbmb.or.kr/fulltext/jbmb/view.php?vol=36&page=299

:

Nucleotide Metabolism

http://www.med.unibs.it/~marchesi/nucmetab.html 

This resource provides a very comprehensive overview of multiple aspects of nucleotide metabolism. These include

  • biosynthesis,
  • catabolism,
  • salvage pathways, and
  • regulation as well as
  • clinical significance of both purine and pyrimidine nucleotides.

Regulation of deoxyribonucleotides (dNTP’s) and interconversion of nucleotides are also discussed.

An advantage to this website is that mechanisms are displayed pictorially to make it easier to follow and understand the movement of electrons, bonds, charge, molecules and substituents in these complicated pathways.

When analyzing the mechanism for purine nucleotide biosynthesis, there are many common metabolic features present, which we’ve discussed throughout the quarter.
Purine nucleotides are built upon a sugar.

In the first step, catalyzed by glutamine-PRPP amidotransferase, glutamine acts as a source of ammonia and PPi (inorganic pyrophosphate) is released. The release of this PPi can lead to its cleavage to form two inorganic phosphates. The cleavage of this phosphoanhydride bond provides energy to drive reactions forward.

In the steps two, four and five, ATP, an activated molecule is used for energy. In the third and ninth step, tetrahydrofolate, a cofactor, acts to perform 1-carbon transfers at intermediate oxidation levels.

Glutamine is used again in the fourth step as a source of ammonia. Step six is a carboxylation reaction, and it’s very unusual that the cofactor biotin is not utilized. Most other carboxylation reactions are biotin dependent.

The fumarate produced in step eight can be used to replenish citric acid cycle intermediates, meaning that purine nucleotide synthesis acts as an anaplerotic reaction.

Targets of Natural Compounds Vs. Targets of Chemotherapy Drugs

http://www.e-articles.info/e/a/title/Targets-of-Natural-Compounds-VS-Targets-of-Chemotherapy-Drugs/

Cancer cells that receive a high throughput of proliferation signals keep dividing uncontrollably, but if not bombarded with these signals will enter apoptosis.

This resource discusses the differences between what natural compounds target and what chemotherapy drugs target in order to reduce the flow of information to a cell leading to cell proliferation, in order to prevent cancer These drugs specifically target the structure of nucleotides and the integrity of them within DNA as well as enzymes that participate in the synthesis phase such as DNA polymerase and topoisomerase in order to prevent completion of the cell cycle.  Chemotherapeutic agents act by inhibiting enzymes in the nucleotide biosynthesis pathway because cancer cells have a greater requirement for nucleotides as DNA precursors. Glutamine analogs such as azaserine and acivicin inhibit glutamine amidotransferase, making it impossible for glutamine to act as a nitrogen donor.

Purine and Pyrimidine Metabolism Disorders

http://www.merck.com/mmpe/sec19/ch296/ch296i.html

Under normal conditions, nucleotides act as components of cellular energy systems, signaling, and DNA and RNA production. However, when an enzyme has a defect causing it to malfunction leading to accumulation of compounds in blood, urine, or tissues, this can result in diseased states which can severely affect people and their everyday lives. This resource discusses several disorders of nucleotide metabolism; including disorders of purine salvage, purine nucleotide synthesis, purine catabolism, and pyrimidine metabolism. Not only is the nature of several deficiencies discussed, but diagnosis as well as possible treatment and diet adjustments are mentioned.

  1. Lesch-Nyhan syndrome is a disorder of purine salvage and results from a deficiency in the hypoxanthine-guanine phosphoribosyl transferase (HPRT) enzyme which normally aids in salvage pathway for hypoxanthine and guanine leading to uric acid overproduction.
  2. Adenosine deaminase deficiency is a disorder of purine catabolism, which results in accumulation of adenosine due to inability of enzyme to convert adenosine and deoxyadenosine to inosine and deoxyinosine.
  3. High levels of adenosine causes an increase in levels of ATP and dATP, and the latter inhibits ribonucleotide reductase causing underproduction of the other deoxribunucleotides compromising DNA replication. Immune cells are sensitive to this and this deficiency causes Severe Combined Immunodeficiency.
  4. Xanthine oxidase deficiency is a disorder of purine catabolism in which there is a buildup of xanthine due to the incapability of the enzyme to produce uric acid from xanthine and hypoxanthine.

 

Article #1: Enhanced Activity of the Purine Nucleotide Cycle of the Exercising Muscle in Patients with Hyperthyroidism

http://jcem.endojournals.org/cgi/content/full/86/5/2205

 

Article #2: Hypoxanthine-guanine phosophoribosyltransferase (HPRT) deficiency: Lesch-Nyhan syndrome

http://pubmedcentral.nih.gov/picrender.fcgi?tool=pmcentrez&artid=2234399&blobtype=pdf

 

Article #3: Anaplerotic processes in human skeletal muscle during brief dynamic exercise

http://pubmedcentral.nih.gov/picrender.fcgi?artid=1159539&blobtype=pdf

 

Salvage pathways of purine and pyrimidine nucleotides 

http://biocyc.org/META/NEW-IMAGE?type=PATHWAY&object=P1-PWY

 

Salvage pathways of pyrimidine ribonucleotides 

http://biocyc.org/META/NEW-IMAGE?type=PATHWAY&object=PWY0-163

 

Salvage pathways of pyrimidine deoxyribonucleotides 

http://biocyc.org/META/NEW-IMAGE?type=PATHWAY&object=PWY0-181

 

Read Full Post »

Metabolomics is about Metabolic Systems Integration

Author and Curator: Larry H Bernstein, MD, FCAP 

 

This is an exploration of biological thoughts in the series on metabolomics, putting enzymatic reactions, proteins and protein conformation, and subanatomic structure into a more complete perspective in order to realize normal and dysfunctional states

of eukaryoticcells and organ systems and prokaryotic organisms.  There are structures and functions that have evolved in evolution that have concordance, even
if we find variation on themes.  Moreover, these have to be understood in a systems oriented view to have any clarity, which is currently an ongoing proposal.
It is perhaps relevant to quote Radoslav Bosov on his observation:

“After finishing her portion of the work on DNA, Franklin led pioneering work on the tobacco mosaic virus and the polio virus. She died in 1958 at the age of 37 of ovarian cancer.”  My job is to illuminate what is cancer, but serving structural identity issues.

DNA is not DNA, as RNA is not RNA as proteins are not Proteins, there is only time – interference of particles/strings/waves within ever emerging discrete relative spaces where energy transforms from one absolute form into another!

He adds the following: “A 2005 study showed methionine restriction without energy restriction extends mouse lifespan.” BUT balancing energy is not as same as balancing matter due quantum electrodynamics interference and transfromability – http://en.wikipedia.org/wiki/Methionine

I have made the following calculations!

1 – methyl groups = i Ln (1 – Lactate )/Ln (Oxygen) – K (O) =

i Ln (1/(Sqrt (1 – Acetate^2)) /Ln(Oxygen) – K(O) = i Ln (Glyoxylate)/Ln (Oxygen) – K(O)

where K(O) – mechanical electro magnetics pressure, with increase of T, increase of S (entropy), and 1-S = negative entropy

But don’t try to realize the path of derivation, it would get you in dark matter issues – water!

The problem seems to be:

  1. Methionine is necessary to provide S for acetyl CoA
  2. Insufficiency of this amino acid has consequences, which leads to increased homocysteine
  3. This imbalance is also associated with a decrease in lewan body mass
  4. Of course, the reality is that geographic location, proximity to volcanic ash, and temperate zone have relevance, as does food source, and they are relevant variables

JEDS Rosalino has referred to the important conclusion in Erwin Schroedinger’s “What is Life?”, and Schroedinger’s cat.  It is impossible to come up with a predictive equation to explain life.
It had to come from a founder of “Quantum Mechanics” because, unlike economics, physics is a science based on experimental validation.  In entering biology from Physics to make it more rigorous, as was the case for  Max Delbruck, who was preceded by the Cori’s, Beadle and Tatum, Herschey, Luria, Dubecco, Kornberg and Ochoa, Lipmann, Watson and Crick, a discipline called “Molecular Biology and Biochemistry” emerged that would open the secrets of life.  Beadle and Tatum gave us “one gene – one enzyme”, a formulation that led in medical teaching from William Osler’s edict to “Inherited Metabolic Disorders” – gene related disruption of the chemical reactions taking place in the body to convert or use energy. Physiological chemistry taught:

  1. Breaking down the carbohydrates, proteins, and fats in food to release energy.
  2. Transforming excess nitrogen into waste products excreted in urine.
  3. Breaking down or converting chemicals into other substances and transporting them inside cells.

Metabolism is an organized but chaotic chemical assembly line. Raw materials, half-finished products, and waste materials are constantly being used, produced, transported, and excreted. The “workers” on the assembly line are enzymes and other proteins that make chemical reactions happen. – http://www.webmd.com/a-to-z-guides/inherited-metabolic-disorder-types-and-treatments

The original cause of most genetic metabolic disorders is a gene mutation that occurred many, many generations ago. Each inherited metabolic disorder is quite rare in the general population, affecting about 1 in 1,000 to 2,500 newborns. But the developments now refocused an emphasis on HOW – a gene mutation occurs that is passed on through generations.  This had to be derived initially from methods developed in prokaryotes in order to relieve the complexity.  However, complexity came from evolutionary events over a long time span.

Part I. Transcription regulation

The timing is right

R Magnus N Friis  & Michael C Schultz
Affiliations  Corresponding author

Nature Structural & Molecular Biology 07 Oct 2014; 21: 846–847
http://dx.doi.org:/10.1038/nsmb.2898

Yeast cells display synchronized oscillation between

  • phases of high and low oxygen consumption
  • accompanied by a program of cyclical gene expression.

A study monitoring

  • mRNA levels,
  • histone modifications and
  • chromatin occupancy of histone modifiers

during the yeast metabolic cycle (YMC) at high temporal resolution reveals both

  • ‘just-in-time’ supply of YMC gene products and
  • new patterns of chromatin reconfiguration

associated with transcriptional regulation.

Figure 1: The yeast metabolic cycle.

yeast metabolic cycle.

The YMC is divided into metabolic phases that correspond to periods of high and low oxygen concentration in the culture medium. The program of gene (mRNA) expression during the YMC is composed of successive reductive-charging (RC),…
http://www.nature.com/nsmb/journal/v21/n10/carousel/nsmb.2898-F1.jpg

Figure 2: Modes of transcriptional regulation during the YMC.

Modes of transcriptional regulation during the YMC

Modes of transcriptional regulation during the YMC

(a) Previous work on cycling cells in batch culture revealed that H3K4me3 is typically limited to the promoter region of active genes (MET16 shown here 9, 10). (b) During the YMC, however, the OX gene RMT2 is marked by H3K4me3 regardles…

http://www.nature.com/nsmb/journal/v21/n10/carousel/nsmb.2898-F2.jpg

High-temporal-resolution view of transcription and chromatin states across distinct metabolic states in budding yeast

Z Kuang, L Cai, X Zhang, H Ji, BP Tu  & JD Boeke
Affiliations Contributions Corresponding authors

Nature Structural & Molecular Biology 31 Aug,2014; 21: 854–863
http://dx.doi.org:/10.1038/nsmb.2881

Under continuous, ​glucose-limited conditions, budding yeast exhibit

  1. robust metabolic cycles
  2. associated with major oscillations of gene expression.

We examine the correlated

  1. genome-wide transcription and chromatin states
  2. across the yeast metabolic cycle
  3. at unprecedented temporal resolution,
  4. revealing a ‘just-in-time supply chain’

by which components from specific cellular processes such as ribosome biogenesis become available in a highly coordinated manner. We identify

  1. distinct chromatin and splicing patterns
  2. associated with different gene categories and
  3. determine the relative timing of chromatin modifications
  4. relative to maximal transcription.

There is unexpected variation in the chromatin modification and expression relationship, with

  1. histone acetylation peaks occurring with
  2. varying timing and ‘sharpness’ relative to RNA expression
  3. both within and between cycle phases.

Chromatin-modifier occupancy reveals subtly distinct spatial and temporal patterns compared to those of the modifications themselves.

Figure 1: High-temporal-resolution analysis of gene expression reveals meticulous temporal compartmentalization in yeast.

High-temporal-resolution analysis of gene expression

High-temporal-resolution analysis of gene expression

Oscillation of ​oxygen (dO2) in the YMC. The 16 time points of one cycle for RNA-seq are labeled. Metabolic phases are color coded throughout figures: magenta, OX phase; green, RB phase; blue, RC phase. (b–d) Subtly distinct tempor…

http://www.nature.com/nsmb/journal/v21/n10/carousel/nsmb.2881-F1.jpg

Figure 2: RNA-seq analysis at introns reveals transient accumulation of pre-mRNAs during OX phase.

RNA-seq analysis at introns reveals transient accumulation of pre-mRNAs

RNA-seq analysis at introns reveals transient accumulation of pre-mRNAs

Relative RNA signals at intron-containing genes. Each track represents relative RNA levels at one of 16 time points, ordered sequentially from top to bottom. Signals are displayed as a percentage of the maximum value of the 16 time…
http://www.nature.com/nsmb/journal/v21/n10/carousel/nsmb.2881-F2.jpg

Figure 3: Dynamic chromatin states across the YMC.

Dynamic chromatin states across the YMC

Dynamic chromatin states across the YMC

(a)Oscillation of ​oxygen in one YMC. Cycling cells were collected at 16 intentionally uneven time points over one cycle for ChIP-seq. (b,c) Temporal relationship between RNA level and histone modifications at the ​RMT2 locus. (b) RNA…

http://www.nature.com/nsmb/journal/v21/n10/carousel/nsmb.2881-F3.jpg

Part 2. Structure of metabolic channeling

Enzyme clustering accelerates processing of intermediates through metabolic channeling

Michele Castellana, Maxwell Z Wilson, Yifan Xu, Preeti Joshi, Ileana M Cristea, Joshua D Rabinowitz, Zemer Gitai & Ned S Wingreen
Affiliations Contributions Corresponding authors

Nature Biotechnology (2014)32, 1011–1018
http://dx.doi.org:/10.1038/nbt.3018

We present a quantitative model to demonstrate that

  • coclustering multiple enzymes into compact agglomerates
  • accelerates the processing of intermediates,
  • yielding the same efficiency benefits as direct channeling,

a well-known mechanism in which enzymes are funneled between enzyme active sites through a physical tunnel. The model predicts

  • the separation and size of coclusters that maximize metabolic efficiency,
  • and this prediction is in agreement with previously reported spacings between coclusters in mammalian cells.

For direct validation, we study a metabolic branch point in Escherichia coli and experimentally confirm the model prediction that enzyme agglomerates can

  • accelerate the processing of a shared intermediate by one branch, and thus
  • regulate steady-state flux division.

Our studies establish a quantitative framework to understand coclustering-mediated metabolic channeling

Figure 1: Different types of intermediate channeling in a two-step metabolic pathway, where a substrate is processed by enzyme E1 and turned into intermediate, which is then processed by enzyme E2 and turned into product.

two-step metabolic pathway

two-step metabolic pathway

Direct channeling. The intermediate is funneled from enzyme E1 to enzyme E2 by means of a protein tunnel that connects the active sites of E1 and E2, thus preventing the intermediate from diffusing away. (b) Proximity channeling. http://www.nature.com/nbt/journal/v32/n10/carousel/nbt.3018-F1.jpg

Figure 2: Two-step metabolic pathway with an unstable intermediate.

Two-step metabolic pathway with an unstable intermediate

Two-step metabolic pathway with an unstable intermediate

(a) The two-step metabolic pathway. Substrate S0 is processed by enzyme E1 and turned into intermediate S1, which is then processed by enzyme E2 and turned into product P. (b) Enzyme configurations in the two-step metabolic pathway. Le…
http://www.nature.com/nbt/journal/v32/n10/carousel/nbt.3018-F2.jpg

Part 3. Antibiotics directed at specific DNA sequences

Sequence-specific antimicrobials using efficiently delivered RNA-guided nucleases

Robert J Citorik, Mark Mimee & Timothy K Lu
Affiliations Contributions Corresponding author

Nature Biotechnology 21 Sep 2014;
http://dx.doi.org:/10.1038/nbt.3011

Current antibiotics tend to be broad spectrum, leading to

  • indiscriminate killing of commensal bacteria and
  • accelerated evolution of drug resistance.

Here, we use CRISPR-Cas technology to create antimicrobials

  • whose spectrum of activity is chosen by design.

RNA-guided nucleases (RGNs) targeting specific DNA sequences are delivered efficiently to microbial populations using bacteriophage or bacteria carrying plasmids transmissible by conjugation. The DNA targets of RGNs can be

  • undesirable genes or polymorphisms,
  • including antibiotic resistance and virulence determinants in
  1. carbapenem-resistant Enterobacteriaceae and
  2. enterohemorrhagic Escherichia coli.

Delivery of RGNs significantly improves survival in a Galleria mellonella infection model. We also show that

  • RGNs enable modulation of complex bacterial populations
  • by selective knockdown of targeted strains
  • based on genetic signatures.

RGNs constitute a class of highly discriminatory, customizable antimicrobials that enact

  • selective pressure at the DNA level to
  1. reduce the prevalence of undesired genes,
  2. minimize off-target effects and
  3. enable programmable remodeling of microbiota.

Figure 1: RGN constructs delivered by bacteriophage particles (ΦRGN) exhibit efficient and specific antimicrobial effects against strains harboring plasmid or chromosomal target sequences

RGN constructs delivered by bacteriophage particles

RGN constructs delivered by bacteriophage particles

(a) Bacteriophage-delivered RGN constructs differentially affect host cell physiology in a sequence-dependent manner. If the target sequence is: (i) absent, the RGN exerts no effect; (ii) chromosomal, RGN activity is cytotoxic; (iii) e…

http://www.nature.com/nbt/journal/vaop/ncurrent/carousel/nbt.3011-F1.jpg

Figure 3: ΦRGN particles elicit sequence-specific toxicity against enterohemorrhagic E. coli in vitroand in vivo.

ΦRGN particles elicit sequence-specific toxicity against enterohemorrhagic E. coli in vitro and in vivo.

ΦRGN particles elicit sequence-specific toxicity against enterohemorrhagic E. coli in vitro and in vivo.

(a) E. coli EMG2 wild-type (WT) cells or ATCC 43888 F′ (EHEC) cells were treated with SM buffer, ΦRGNndm-1 orΦRGNeae at a multiplicity of infection (MOI) ~100 and plated onto LB agar to enumerate total cell number or LB+kanamycin (Km)…  http://www.nature.com/nbt/journal/vaop/ncurrent/carousel/nbt.3011-F3.jpg

Part 4. Structure and Isoform functions

Structures of human constitutive nitric oxide synthases.

H Li, J Jamal, C Plaza, SH Pineda, G Chreifi, Q Jing, MA Cinelli, RB Silverman, TLPoulos, [more]
Acta Crystallographica Section D Biological Crystallography (Impact Factor: 12.67). 10/2014; 70(Pt 10):2667-74.
http://dx.doi.org:/10.1107/S1399004714017064

Mammals produce three isoforms of nitric oxide synthase (NOS):

  1. neuronal NOS (nNOS),
  2. inducible NOS (iNOS) and
  3. endothelial NOS (eNOS).

The overproduction of NO by nNOS is associated with a number of neurodegenerative disorders; therefore, a desirable therapeutic goal is

  • the design of drugs that target nNOS
  • but not the other isoforms.

Crystallography, coupled with computational approaches and medicinal chemistry, has played a critical role in developing highly

  • selective nNOS inhibitors that
  • exhibit exceptional neuroprotective properties.

For historic reasons, crystallography has focused on rat nNOS and bovine eNOS because these were available in high quality; thus, their structures have been used in

  • structure-activity-relationship studies.

Although these constitutive NOSs share more than 90% sequence identity across mammalian species for each NOS isoform,

  • inhibitor-binding studies revealed that subtle differences near the heme active site
  • in the same NOS isoform across species still impact enzyme-inhibitor interactions.

Therefore, structures of the human constitutive NOSs are indispensible. Here, the first structure of human neuronal NOS at 2.03 Å resolution is reported and a different crystal form of human endothelial NOS is reported at 1.73 Å resolution.

“We are learning more about less and less” – PJ Russell. 1973.

Part 5.  Global Metabolomics

Global Metabolomics Market (Technique, Application, Indication and Geography) – Size, Application Analysis, Regional Outlook, Competitive Strategies and Forecasts, 2014 – 2020

Metabolomics is

  • the study of chemical processes which involve metabolites.

Metabolites are small molecules present in the blood, tissues and urine. Metabolomics pertains to the study of the

  • unique chemical fingerprints left behind by cellular processes.

These metabolite fingerprints could be used to learn about the health of an organism. It is an upcoming technology in the field of analytical biochemistry. Metabolomics has become an experimental technique that can be applied in medicine, biology and environmental science. The incorporation of computers has enabled

the creation of computational metabolomics that has application in life sciences.

Metabolics finds application in other areas as well; for instance, it is used to identify the quality, taste and nutritional value of food in the food science field.

The metabolomics market is segmented based on its application in different fields such as

  • biomarkers discovery,
  • drug discovery,
  • toxicology testing,
  • nutrigenomics,
  • clinical studies etc.

The drug discovery segment holds the dominant share in the metabolomics market due to its crucial role in

  • drug target identification & validation and
  • optimization & prioritization of diagnostic approaches for oncology research.

The metabolomics market is expected to grow at a rapid rate due to the rise in the number of

  • pre clinical & clinical trials,
  • advancements in toxicological studies and
  • growing awareness about nutritional products.

The stellar growth of data analysis software & solutions in metabolomics and its use in the biomarker screening of diseases would fuel the growth of the metabolomics market. The metabolomics market is also segmented based on techniques into

  • gas chromatography,
  • high performance liquid chromatography (HPLC),
  • ultra performance liquid chromatography, and
  • capillary electrophoresis.

HPLC holds the dominant share in the metabolomics market.

KEY BENEFITS

In-depth analysis of various regions would enable a clear understanding of current and future trends so that companies can make region specific plans

Comprehensive analysis of the factors that drive and restrict the growth of the metabolomics market

Key regulatory guidelines in various regions which impact the metabolomics market

Quantitative analysis of the current market

Deep dive analysis of various regions

Value chain analysis enables a clear understanding of the roles of the stakeholders involved in the supply chain of the metabolomics market

Market Segmentation

The metabolomics market is segmented based on techniques, applications, indication and geography

Techniques

Separation Method

  • Gas Chromatography
  • Capillary Electrophoresis
  • High Performance Liquid Chromatography
  • Ultra Performance Liquid Chromatography

Detection Methods

  • Nuclear Magnetic Resonance
  • Mass Spectrometry
  • Surface Base Mass Analysis

Application

  • Biomarkers Discovery
  • Drug Discovery
  • Toxicology Testing
  • Nutrigenomics
  • Clinical & Preclinical Studies

Indications

  • Oncology
  • Neurology
  • Cardiology
  • Others

Read Full Post »

Larry H Bernstein, MD, FCAP, Author and Curator

Chief, Scientific Communication

Leaders in Pharmaceutical Intelligence

with contributions from JEDS Rosalis, Brazil
and Radislov Rosov, Univ of Virginia, VA, USA

A Brief Curation of Proteomics, Metabolomics, and Metabolism

This article is a continuation of a series of elaborations of the recent and
accelerated scientific discoveries that are enlarging the scope of and
integration of biological and medical knowledge leading to new drug
discoveries.  The work that has led us to this point actually has roots
that go back 150 years.  The roots go back to studies in the mid-nineteenth century, with the emergence of microbiology, physiology,
pathology, botany, chemistry and physics, and the laying down of a
mechanistic approach divergent from descriptive observation in the
twentieth century. Medicine took on the obligation to renew the method
of training physicians after the Flexner Report (The Flexner Report of
1910 transformed the nature and process of medical education in America
with a resulting elimination of proprietary schools), funded by the Carnegie
Foundation.  Johns Hopkins University Medical School became the first to
adopt the model, as did Harvard, Yale, University of Chicago, and others.

The advances in biochemistry, genetics and genomics, were large, as was
structural organic chemistry in the remainder of the centrury.  The advances
in applied mathematics and in instrumental analysis opened a new gateway
into the 21st century with the Human Genome Project, the Proteome Library,
Signaling Pathways, and the Metabolomes – human, microbial, and plants.

shall elaborate on how the key processes of life are being elucidated as
these interrelated disciplines converge.  I shall not be covering in great
detail the contribution of the genetic code and transcripton because they
have been covered at great length in this series.

Part I.  The foundation for the emergence of a revitalized molecular
biology 
and biochemistry.

In a series of discussions with Jose des Salles Roselino (Brazil) over a
period of months we have come to an important line of reasoning. DNA
to protein link goes from triplet sequence to amino acid sequence. The
realm of genetics. Further, protein conformation, activity and function
requires that environmental and microenvironmental factors should be
considered (Biochemistry).  This has been opened in several articles
preceding this.

In the cAMP coupled hormonal response the transfer of conformation
from protein to protein is paramount. For instance, if your scheme goes
beyond cAMP, it will show an effect over a self-assembly (inhibitor
protein and protein kinase). Therefore, sequence alone does not
explain conformation, activity and function of regulatory proteins.
Recall that sequence is primar structure, determined by the translation
of the code, but secondary structure is determined by disulfide bonds.
There is another level of structure, tertiary structure, that is molded by
steric influences of near neighbors and by noncovalent attractions
and repulsions.

A few comments ( contributed by Assoc. Prof. JEDS Roselino) are in
order to stress the importance of self-assembly (Prigogine, R. A
Marcus, conformation energy) in a subject that is the best for this
connection. We have to stress again that in the cAMP
coupled hormonal response the transfer of conformation from
protein to protein is paramount. For instance, in case the
reaction sequence follows beyond the production of the
second messenger, as in the case of cAMP, this second
messenger will remove a self-assembly of inhibitor protein
with the enzyme protein kinase. Therefore, sequence alone
does not explain conformation, activity and function of
regulatory proteins. In this case, if this important mechanism
was not ignored, the work of Stanley Prusiner would most
certainly have been recognized earlier, and “rogue” proteins
would not have been seen as so rogue as some assumed.
For the general idea of importance of self-assembly versus
change in covalent modification of proteins (see R. A Kahn
and A. G Gilman (1984) J. Biol. Chem.  259(10), pp 6235-
6240. In this case, trimeric or dimeric G does not matter.
“Signaling transduction tutorial”.
G proteins in the G protein coupled-receptor proteins are
presented following a unidirectional series of arrows.
This is adequate to convey the idea of information being
transferred from outside the cell towards cell´s interior
(therefore, against the dogma that says all information
moves from DNA to RNA to protein.  It is important to
consider the following: The entire process is driven by
a very delicate equilibrium between possible conform-
ational states of the proteins. Empty receptors have very
low affinity for G proteins. On the other hand, hormone
bound receptors have a change in conformation that
allows increasing the affinity for the G-trimer. When
hormone receptors bind to G-trimers two things happen:

  1. Receptors transfer conformation information to
    the G-triplex and
  2. the G-triplex transfers information back to the
    complex hormone-receptor.

In the first case , the dissociated G protein exchanges
GDP for GTP and has its affinity for the cyclase increased,
while by the same interaction receptor releases the
hormone which then places the first required step for the
signal. After this first interaction step, on the second and
final transduction system step is represented by an
opposite arrow. When, the G-protein + GTP complex
interacts with the cyclase two things happen:

  1. It changes the cyclase to an active conformation
    starting the production of cAMP as the single
    arrow of the scheme. However, the interaction
    also causes a backward effect.
  2. It activates the GTPase activity of this subunit
    and the breakdown of GTP to GDP moves this 
    subunit back to the initial trimeric inactive
    state
     of G complex.

This was very well studied when the actions of cholera toxin
required better understanding. Cholera toxin changes the
GTPase subunit by ADP-ribosilation (a covalent and far more
stable change in proteins) producing a permanent conformation
of GTP bound G subunit. This keeps the cyclase in permanent
active conformation because ADP-ribosilation inhibits GTPase
activity required to put an end in the hormonal signal.

The study made while G-proteins were considered a dimer still
holds despite its limited vision of the real complexity of the
transduction system. It was also possible to get this very same
“freezing” in the active state using GTP stable analogues. This
transduction system is one of the best examples of the delicate
mechanisms of conformational interaction of proteins. Further-
more, this system also shows on the opposite side of our
reasoning scheme, how covalent changes are adequate for
more stable changes than those mediated by Van der Wall’s
forces between proteins. Yet, these delicate forces are the
same involved when Sc-Prion transfers its rogue
conformation to c-Prion proteins and other similar events.
The Jacob-Monod Model

A combination of genetic and biochemical experiments in
bacteria led to the initial recognition of

  1. protein-binding regulatory sequences associated with genes and
  2. proteins whose binding to a gene’s regulatory sequences
    either activate or repress its transcription.

These key components underlie the ability of both prokaryotic and
eukaryotic cells to turn genes on and off. The  experimental findings lead to a general model of bacterial transcription control.

Gene control serves to allow a single cell to adjust to changes in its
nutritional environment so that its growth and division can be optimized.
Thus, the prime focus of research has been on genes that encode
inducible proteins whose production varies depending on the nutritional
status of the cells. Its most characteristic and biologically far-reaching
purpose in eukaryotes, distinctive from single cell organisms is the
regulation of a genetic program that underlies embryological
development and tissue differentiation.

The principles of transcription have already been described in this
series under the translation of the genetic code into amino acids
that are the building blocks for proteins.

E.coli can use either glucose or other sugars such as the
disaccharide lactose as the sole source of carbon and energy.
When E. coli cells are grown in a glucose-containing medium,
the activity of the enzymes needed to metabolize lactose is
very low. When these cells are switched to a medium
containing lactose but no glucose, the activities of the lactose-metabolizing enzymes increase. Early studies showed that the
increase in the activity of these enzymes resulted from the
synthesis of new enzyme molecules, a phenomenon termed
induction. The enzymes induced in the presence of lactose
are encoded by the lac operon, which includes two genes, Z
and Y, that are required for metabolism of lactose and a third
gene. The lac Y gene encodes lactose permease, which spans the E. coli cell membrane and uses the energy available from
the electrochemical gradient across the membrane to pump
lactose into the cell. The lac Z gene encodes β-galactosidase,
which splits the disaccharide lactose into the monosaccharides
glucose and galactose, which are further metabolized through
the action of enzymes encoded in other operons. The third
gene encodes thiogalactoside transacetylase.

Synthesis of all three enzymes encoded in the lac operon is rapidly
induced when E. coli cells are placed in a medium containing lactose
as the only carbon source and repressed when the cells are switched
to a medium without lactose. Thus all three genes of the lac operon
are coordinately regulated. The lac operon in E. coli provides one
of the earliest and still best-understood examples of gene control.
Much of the pioneering research on the lac operon was conducted by
Francois Jacob, Jacques Monod, and their colleagues in the 1960s.

Some molecules similar in structure to lactose can induce expression
of the lacoperon genes even though they cannot be hydrolyzed by β-galactosidase. Such small molecules (i.e., smaller than proteins) are
called inducers. One of these, isopropyl-β-D-thiogalactoside,
abbreviated IPTG,is particularly useful in genetic studies of the lac
operon, because it can diffuse into cells and, it is not metabolized.
Insight into the mechanisms controlling synthesis of β-galactosidase
and lactose permease came from the study of mutants in which control
of β-galactosidase expression was abnormal and used a colorimetric
assay for β-galactosidase.

When the cells are exposed to chemical mutagens before plating on
X-gal/glucose plates, rare blue colonies appear, but when cells
from these blue colonies are recovered and grown in media containing
glucose, they overexpress all the genes of the lac operon. These cells
are called constitutive mutants because they fail to repress the lac
operon in media lacking lactose and instead continuously express the
enzymes, and the genes were mapped to a region on the E. coli
chromosome. This led to the conclusion that these cells had a defect
in a protein that normally repressed expression of the lac operon in
the absence of lactose, and that it blocks transcription by binding to
a site on the E. coli genome where transcription of the lac operon is
initiated. In addition, it binds to the lac repressor in the lactose
medium and decreases its affinity for the repressor-binding site
on the DNA causing the repressor to unbind the DNA. Thereby,
transcription of the lac operon is initiated, leading to synthesis of
β-galactosidase, lactose permease, and thiogalactoside
transacetylase.

 regulation of the lac operon by lac repressor

Jacob and Monod model of transcriptional regulation of the lac operon

Next, Jacob and Monod isolated mutants that expressed the lac operon
constitutively even when two copies of the wild-type lacI gene
encoding the lac repressor were present in the same cell, and the
constitutive mutations mapped to one end of the lac operon, as the
model predicted.  Further, there are rare cells that carry a mutation
located at the region, promoter, that block initiation of transcription by
RNA polymerase.

lac I+ gene is trans-acting, & encodes a protein, which binds to a lac operator

 lac I+ gene is trans-acting, & encodes a protein, which
binds to a lac operator

They further demonstrated that the two types of mutations lac I and
lac I+, were cis- and trans-acting, the latter encoding a protein that
binds to the lac operator. The cis-acting Oc mutations prevent
binding of the lac repressor to the operator, and  mutations in the
lac promoter are cis-acting, since they alter the binding site for RNA
polymerase. In general, trans-acting genes that regulate expression
of genes on other DNA molecules encode diffusible products. In
most cases these are proteins, but in some cases RNA molecules
can act in trans to regulate gene expression.

According to the Jacob and Monod model of transcriptional control,
transcription of the lac operon, which encodes three inducible
proteins, is repressed by binding of lac repressor protein to the
operator sequence.

 (Section 10.1Bacterial Gene Control: The Jacob-Monod Model.)
This book is accessible by the search feature.

Comment: This seminal work was done a half century ago. It was a
decade after the Watson-Crick model for DNA. The model is
elaborated for the Eukaryote in the examples that follow.

(The next two articles were called to my attention by R. Bosov at
University of Virginia).

An acetate switch regulates stress erythropoiesis

M Xu,  JS Nagati, Ji Xie, J Li, H Walters, Young-Ah Moon, et al.
Nature Medicine 10 Aug 2014(20): 1018–1026.
http://dx.doi.org:/10.1038/nm.3587

message: 1- ( -CH3 ) = Ln ( (1/sqrt(1-Acetate^2) –
sqrt oxalate))/ Ln(oxygen) – K(o)
rsb5n@virginia.edu

The hormone erythropoietin (EPO), synthesized in the kidney or liver
of adult mammals, controls erythrocyte production and is regulated by
the stress-responsive transcription factor hypoxia-inducible factor-2
(HIF-2).
 HIFα acetylation and efficient HIF-2–dependent EPO
induction during hypoxia requires  the lysine acetyltransferase CREB-binding protein (CBP) . These processes require acetate-dependent
acetyl CoA synthetase 2 (ACSS2) as follows.Acetate levels rise and
ACSS2 is required for HIF-2α acetylation, CBP–HIF-2α complex
formation, CBP–HIF-2α recruitment to the EPO enhancer and induction
of EPO gene expression
 in human Hep3B hepatoma cells and in EPO-generating organs of hypoxic or acutely anemic mice. In acutely anemic
mice, acetate supplementation augments stress erythropoiesis in an
ACSS2-dependent manner. Moreover, in acquired and inherited
chronic anemia mouse models, acetate supplementation increases
EPO expression
 and the resting hematocrit. Thus, a mammalian
stress-responsive acetate switch controls HIF-2 signaling and EPO
induction during pathophysiological states marked by tissue hypoxia.

Figure 1: Acss2 controls HIF-2 signaling in hypoxic cells.
Time course of endogenous HIF-2α acetylation during hypoxia following
immunoprecipitation (IP) of HIF-2α from whole-cell extracts and detection
of acetylated lysines by immunoblotting (IB).
http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F1.jpg

Figure 2: Acss2 regulates hypoxia-induced renal Epo expression in mice.
http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F2.jpg

Figure 3: Acute anemia induces Acss2-dependent HIF-2 signaling in mice.
http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F3.jpg

Figure 4: An acetate switch regulates Cbp–HIF-2 interactions in cells.
(a) HIF-2α acetylation following immunoprecipitation of endogenous
HIF-2α and detection by immunoblotting with antibodies to acetylated
lysine or HIF-2α.
http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F4.jpg

Figure 5: Acss2 signaling in cells requires intact HIF-2 acetylation.
http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F5.jpg

Figure 6: Acetate facilitates recovery from anemia.

Acetate facilitates recovery from anemia

Acetate facilitates recovery from anemia

(a) Serial hematocrits of CD1 wild-type female mice after PHZ treatment, followed
by once daily per os (p.o.) supplementation with water vehicle (Veh; n = 7 mice),
GTA (n = 6 mice), GTB (n = 8 mice) or GTP (n = 7 mice) (single measurem…

http://www.nature.com/nm/journal/v20/n9/carousel/nm.3587-F6.jpg

see also-.
1. Bunn, H.F. & Poyton, R.O. Oxygen sensing and molecular adaptation to
hypoxia. Physiol. Rev. 76, 839–885 (1996).

  1. .Richalet, J.P. Oxygen sensors in the organism: examples of regulation
    under altitude hypoxia in mammals. Comp. Biochem. Physiol. A Physiol.
    118, 9–14 (1997).
  2. .Koury, M.J. Erythropoietin: the story of hypoxia and a finely regulated
    hematopoietic hormone. Exp. Hematol. 33, 1263–1270 (2005).
  3. Wang, G.L., Jiang, B.H., Rue, E.A. & Semenza, G.L. Hypoxia-inducible
    factor 1 is a basic-helix-loop-helix-PAS heterodimer regulated
    by cellular O2 tension. Proc. Natl. Acad. Sci. USA92, 5510–5514 (1995).
  4. Chen, R. et al. The acetylase/deacetylase couple CREB-binding
    protein/sirtuin 1 controls hypoxia-inducible factor 2 signaling. J. Biol.
    Chem. 287, 30800–30811 (2012).
  5. .Papandreou, I., Cairns, R.A., Fontana, L., Lim, A.L. & Denko, N.C.
    HIF-1 mediates adaptation to hypoxia by actively down-regulating
    mitochondrial oxygen consumption. Cell Metab. 3,187–197 (2006).

14. Kim, J.W., Tchernyshyov, I., Semenza, G.L. & Dang, C.V. HIF-1-
mediated expression of pyruvate dehydrogenase kinase: a metabolic
switch required for cellular adaptation to hypoxia. Cell Metab. 3,
177–185 (2006).

16. Fujino, T., Kondo, J., Ishikawa, M., Morikawa, K. & Yamamoto, T.T.
Acetyl-CoA synthetase 2, a mitochondrial matrix enzyme involved in the
oxidation of acetate. J. Biol. Chem. 276,11420–11426 (2001).

17..Luong, A., Hannah, V.C., Brown, M.S. & Goldstein, J.L. Molecular
characterization of human acetyl-CoA synthetase, an enzyme regulated
by sterol regulatory element-binding proteins. J. Biol. Chem. 275,
26458–26466 (2000).

20 .Wellen, K.E. et al. ATP-citrate lyase links cellular metabolism to
histone acetylation. Science324, 1076–1080 (2009).

24. McBrian, M.A. et al. Histone acetylation regulates intracellular pH.
Mol. Cell 49, 310–321(2013).

Asymmetric mRNA localization contributes to fidelity and sensitivity
of spatially localized systems

Robert J Weatheritt, Toby J Gibson & M Madan Babu
Nature Structural & Molecular Biology 21, 833–839 (2014)
http://www.nature.com/nsmb/journal/v21/n9/abs/nsmb.2876.html 

Although many proteins are localized after translation, asymmetric
protein distribution is also achieved by translation after mRNA localization.
Why are certain mRNA transported to a distal location and translated
on-site? Here we undertake a systematic, genome-scale study of
asymmetrically distributed protein and mRNA in mammalian cells.
Our findings suggest that asymmetric protein distribution by mRNA
localization enhances interaction fidelity and signaling sensitivity
.
Proteins synthesized at distal locations frequently contain intrinsically
disordered segments. These regions are generally rich in assembly-
promoting modules and are often regulated by post-translational
modifications. Such proteins are tightly regulated but display distinct
temporal dynamics upon stimulation with growth factors. Thus, proteins
synthesized on-site may rapidly alter proteome composition and
act as dynamically regulated scaffolds to promote the formation
of reversible cellular assemblies. 
Our observations are consistent
across multiple mammalian species, cell types and developmental stages,
suggesting that localized translation is a recurring feature of cell
signaling and regulation.

Figure 1: Classification and characterization of TAS and DSS proteins.

The two major mechanisms for localizing proteins to distal sites in the cell

The two major mechanisms for localizing proteins to distal sites in the cell

(a)The two major mechanisms for localizing proteins to distal sites in the cell.
(b) Data sets used to identify groups of DSS and TAS transcripts, as well as
DSS and TAS proteins in mouse neuroblastoma cells

http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-F1.jpg

Figure 2: Structural analysis of DSS proteins reveals an enrichment
in disordered regions.

Distributions of the various structural properties of the DSS and TAS proteins of the mouse neuroblastoma data sets

Distributions of the various structural properties of the DSS and TAS proteins of the mouse neuroblastoma data sets

(a,b) Distributions of the various structural properties of the DSS and TAS
proteins of the mouse neuroblastoma data sets (a), the mouse pseudopodia,
the rat embryonic sensory neuron data set and the adult sensory neuron data set (b).…

http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-F2.jpg

Figure 3: Analysis of DSS proteins reveals an enrichment for linear motifs, phase-
transition (i.e., higher-order assembly) promoting segments and PTM sites that act
as molecular switches.

(a,b) Distributions of the various regulatory and structural properties of the DSS
and TAS proteins of the mouse neuroblastoma data sets
http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-F3.jpg

Figure 4: Dynamic regulation of DSS transcripts and proteins.

Dynamic regulation of DSS transcripts and proteins

Dynamic regulation of DSS transcripts and proteins

Genome-wide quantitative measurements of gene expression of DSS (n = 289)
and TAS (n = 1,292) proteins in mouse fibroblast cells. DSS transcripts and
proteins have a lower abundance and shorter half-lives

http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-F4.jpg

Figure 5: An overview of the potential advantages conferred by distal-site protein
synthesis, inferred from our analysis.

An overview of the potential advantages conferred by distal-site protein synthesis, inferred from our analysis

An overview of the potential advantages conferred by distal-site protein synthesis, inferred from our analysis

Turquoise and red filled circle represents off-target and correct interaction partners,
respectively. Wavy lines – a disordered region within a distal site synthesis protein.

http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-F5.jpg

The identification of asymmetrically localized proteins and transcripts.

The identification of asymmetrically localized proteins and transcripts

The identification of asymmetrically localized proteins and transcripts

An illustrative explanation of the resolution of the study and the concept of asymmetric
localization of proteins and mRNA. In this example, on the left a neuron is divided into
its cell body and axon terminal, and transcriptome/proteo…

http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-SF1.jpg

Graphs and boxplots of functional and structural properties for distal site synthesis
(DSS) proteins (red) and transport after synthesis (TAS) proteins (gray).
See Online Methods for details and legend of Figure 2 for a description of boxplots
and statistical tests.
http://www.nature.com/nsmb/journal/v21/n9/carousel/nsmb.2876-SF2.jpg

See also –
1. Martin, K.C. & Ephrussi, A. mRNA localization: gene expression in the spatial
dimension. Cell136, 719–730 (2009).

  1. Scott, J.D. & Pawson, T. Cell signaling in space and time: where proteins come
    together and when they’re apart. Science 326, 1220–1224 (2009).

4..Holt, C.E. & Bullock, S.L. Subcellular mRNA localization in animal cells
and why it matters.Science 326, 1212–1216 (2009).

  1. Jung, H., Gkogkas, C.G., Sonenberg, N. & Holt, C.E. Remote control of
    gene function by local translation. Cell 157, 26–40 (2014). 

Regulation of metabolism by hypoxia-inducible factor 1.   
Semenza GL.    Author information
Cold Spring Harb Symp Quant Biol. 2011;76:347-53.
http://dx.doi.org:/10.1101/sqb.2011.76.010678.

The maintenance of oxygen homeostasis is critical for survival, and the
master regulator of this process in metazoan species is hypoxia-inducible
factor 1 (HIF-1), which

  • controls both O(2) delivery and utilization.

Under conditions of reduced O(2) availability,

  • HIF-1 activates the transcription of genes, whose protein products
  • mediate a switch from oxidative to glycolytic metabolism.

HIF-1 is activated in cancer cells as a result of intratumoral hypoxia
and/or genetic alterations.

In cancer cells, metabolism is reprogrammed to

  • favor glycolysis even under aerobic conditions.

Pyruvate kinase M2 (PKM2) has been implicated in cancer growth and
metabolism, although the mechanism by which it exerts these effects is
unclear. Recent studies indicate that

PKM2 interacts with HIF-1α physically and functionally to

  1. stimulate the binding of HIF-1 at target genes,
  2. the recruitment of coactivators,
  3. histone acetylation, and
  4. gene transcription.

Interaction with HIF-1α is facilitated by

  • hydroxylation of PKM2 at proline-403 and -408 by PHD3.

Knockdown of PHD3

  • decreases glucose transporter 1, lactate dehydrogenase A, and
    pyruvate dehydrogenase kinase 1 expression;
  • decreases glucose uptake and lactate production; and
  • increases O(2) consumption.

The effect of PKM2/PHD3 is not limited to genes encoding metabolic
enzymes because VEGF is similarly regulated.

These results provide a mechanism by which PKM2

  • promotes metabolic reprogramming and

suggest that it plays a broader role in cancer progression than has
previously been appreciated.   PMID: 21785006   

Cadherins

Cadherins are thought to be the primary mediators of adhesion
between the cells
 of vertebrate animals, and also function in cell
adhesion in many invertebrates. The expression of numerous cadherins
during development is highly regulated, and the precise pattern of
cadherin expression plays a pivotal role in the morphogenesis of tissues
and organs. The cadherins are also important in the continued maintenance
of tissue structure and integrity. The loss of cadherin expression appears
to be highly correlated with the invasiveness of some types of tumors. Cadherin adhesion is also dependent on the presence of calcium ions
in the extracellular milieu.

The cadherin protein superfamily, defined as proteins containing a
cadherin-like domain, can be divided into several sub-groups. These include

  • the classical (type I) cadherins, which mediate adhesion at adherens junctions;
  • the highly-related type II cadherins;
  • the desmosomal cadherins found in desmosome junctions;
  • protocadherins, expressed only in the nervous system; and
  • atypical cadherin-like domain containing proteins.

Members of all but the atypical group have been shown to play a role
in intercellular adhesion.

Part II.  PKM2 and regulation of glycolysis

PKM2 regulates the Warburg effect and promotes ​HMGB1
release in sepsis

L Yang, M Xie, M Yang, Y Yu, S Zhu, W Hou, R Kang, …, & D Tang
Nature Communic 14 July 2014; 5(4436)
http://dx.doi.org/doi:10.1038/ncomms5436

Increasing evidence suggests the important role of metabolic reprogramming

  • in the regulation of the innate inflammatory response,

We provide evidence to support a novel role for the

  • ​pyruvate kinase M2 (​PKM2)-mediated Warburg effect,

namely aerobic glycolysis,

  • in the regulation of ​high-mobility group box 1 (​HMGB1) release. ​
  1. PKM2 interacts with ​hypoxia-inducible factor 1α (​HIF1α) and
  2. activates the ​HIF-1α-dependent transcription of enzymes necessary
    for aerobic glycolysis in macrophages.

Knockdown of ​PKM2, ​HIF1α and glycolysis-related genes

  • uniformly decreases ​lactate production and ​HMGB1 release.

Similarly, a potential ​PKM2 inhibitor, ​shikonin,

  1. reduces serum ​lactate and ​HMGB1 levels, and
  2. protects mice from lethal endotoxemia and sepsis.

Collectively, these findings shed light on a novel mechanism for

  • metabolic control of inflammation by
  • regulating ​HMGB1 release and

highlight the importance of targeting aerobic glycolysis in the treatment
of sepsis and other inflammatory diseases.

  1. Glycolytic inhibitor ​2-D G attenuates ​HMGB1 release by activated macrophages.
    http://www.nature.com/ncomms/2014/140714/ncomms5436/carousel/ncomms5436-f1.jpg
  2. Figure 2: Upregulated ​PKM2 promotes aerobic glycolysis and ​HMGB1
    release in activated macrophages.
    http://www.nature.com/ncomms/2014/140714/ncomms5436/carousel/ncomms5436-f2.jpg
  3. Figure 3: ​PKM2-mediated ​HIF1α activation is required for ​HMGB1
    release in activated macrophages.
    http://www.nature.com/ncomms/2014/140714/ncomms5436/carousel/ncomms5436-f3.jpg

 

ERK1/2-dependent phosphorylation and nuclear translocation of
PKM2 promotes the Warburg effect  

W Yang, Y Zheng, Y Xia, Ha Ji, X Chen, F Guo, CA Lyssiotis, & Zhimin Lu
Nature Cell Biology  2012 (27 June 2014); 14: 1295–1304
Corrigendum (January, 2013)  http://dx.doi.org:/10.1038/ncb2629

Pyruvate kinase M2 (PKM2) is upregulated in multiple cancer types and
contributes to the Warburg. We demonstrate that

  • EGFR-activated ERK2 binds directly to PKM2 Ile 429/Leu 431
  • through the ERK2 docking groove
  • and phosphorylates PKM2 at Ser 37, but
  • does not phosphorylate PKM1.

Phosphorylated PKM2 Ser 37

  1. recruits PIN1 for cis–trans isomerization of PKM2, which
  2. promotes PKM2 binding to importin α5
  3. and PKM2 translocates to the nucleus.

Nuclear PKM2 acts as

  • a coactivator of β-catenin to
  • induce c-Myc expression,

This is followed by

  1. the upregulation of GLUT1, LDHA and,
  2. in a positive feedback loop,
  • PTB-dependent PKM2 expression.

Replacement of wild-type PKM2 with

  • a nuclear translocation-deficient mutant (S37A)
  • blocks the EGFR-promoted Warburg effect
    and brain tumour development in mice.

In addition, levels of PKM2 Ser 37 phosphorylation

  • correlate with EGFR and ERK1/2 activity
    in human glioblastoma specimens.

Our findings highlight the importance of

  • nuclear functions of PKM2 in the Warburg effect
    and tumorigenesis.
  1. ERK is required for PKM2 nucleus translocation.
    http://www.nature.com/ncb/journal/v14/n12/carousel/ncb2629-f1.jpg
  2. ERK2 phosphorylates PKM2 Ser 37.
    http://www.nature.com/ncb/journal/v14/n12/carousel/ncb2629-f2.jpg
  3. Figure 3: PKM2 Ser 37 phosphorylation recruits PIN1.
    http://www.nature.com/ncb/journal/v14/n12/carousel/ncb2629-f3.jpg

 Pyruvate kinase M2 activators promote tetramer formation
and suppress tumorigenesis

D Anastasiou, Y Yu, WJ Israelsen, Jian-Kang Jiang, MB Boxer, B Hong, et al.
Nature Chemical Biology  11 Oct 2012; 8: 839–847

Cancer cells engage in a metabolic program to

  • enhance biosynthesis and support cell proliferation.

The regulatory properties of pyruvate kinase M2 (PKM2)

  • influence altered glucose metabolism in cancer.

The interaction of PKM2 with phosphotyrosine-containing proteins

  • inhibits PTM2 enzyme activity and
  • increases the availability of glycolytic metabolites
  • supporting cell proliferation.

This suggests that high pyruvate kinase activity may suppress
tumor growth
.

  1. expression of PKM1,  the pyruvate kinase isoform with high
    constitutive activity, or
  2. exposure to published small-molecule PKM2 activators
  • inhibits the growth of xenograft tumors.

Structural studies reveal that

  • small-molecule activators bind PKM2
  • at the subunit interaction interface,
  • a site that is distinct from that of the
    • endogenous activator fructose-1,6-bisphosphate (FBP).

However, unlike FBP,

  • binding of activators to PKM2 promotes
  • a constitutively active enzyme state that is resistant to inhibition
  • by tyrosine-phosphorylated proteins.

These data support the notion that small-molecule activation of PKM2
can interfere with anabolic metabolism

  1. PKM1 expression in cancer cells impairs xenograft tumor growth.
    http://www.nature.com/nchembio/journal/v8/n10/carousel/nchembio.1060-F1.jpg
  2. TEPP-46 and DASA-58 isoform specificity in vitro and in cells.
    TEPP-46 and DASA-58 isoform specificity in vitro and in cells.

    TEPP-46 and DASA-58 isoform specificity in vitro and in cells.

    (a) Structures of the PKM2 activators TEPP-46 and DASA-58. (b) Pyruvate kinase (PK) activity in purified recombinant human
    PKM1 or PKM2 expressed in bacteria in the presence of increasing
    concentrations of TEPP-46 or DASA-58. M1, PKM1;…
    http://www.nature.com/nchembio/journal/v8/n10/carousel/nchembio.1060-F2.jpg

  3. Activators promote PKM2 tetramer formation and prevent
    inhibition by phosphotyrosine signaling.
Activators promote PKM2 tetramer formation and prevent inhibition by phosphotyrosine signaling.

Activators promote PKM2 tetramer formation and prevent inhibition by phosphotyrosine signaling.

Sucrose gradient ultracentrifugation profiles of purified recombinant
PKM2 (rPKM2) and the effects of FBP and TEPP-46 on PKM2 subunit stoichiometry.
http://www.nature.com/nchembio/journal/v8/n10/carousel/nchembio.1060-F3.jpg

Figure 5: Metabolic effects of cell treatment with PKM2 activators.
(a) Effects of TEPP-46, DASA-58 (both used at 30 μM) or PKM1
expression on the doubling time of H1299 cells under normoxia
(21% O2) or hypoxia (1% O2). (b) Effects of DASA-58 on lactate
production from glucose. The P value shown was ca…
http://www.nature.com/nchembio/journal/v8/n10/carousel/nchembio.1060-F5.jpg

EGFR has a tumour-promoting role in liver macrophages during
hepatocellular carcinoma formation

H Lanaya, A Natarajan, K Komposch, L Li, N Amberg, …, & Maria Sibilia
Nature Cell Biology 31 Aug 2014   http://dx.doi.org:/10.1038/ncb3031

Tumorigenesis has been linked with macrophage-mediated chronic
inflammation and diverse signaling pathways, including the ​epidermal
growth factor receptor (​EGFR) pathway. ​EGFR is expressed in liver
macrophages in both human HCC and in a mouse HCC model. Mice
lacking ​EGFR in macrophages show impaired hepatocarcinogenesis,
Mice lacking ​EGFR in hepatocytes develop HCC owing to increased
hepatocyte damage and compensatory proliferation. EGFR is required
in liver macrophages to transcriptionally induce ​interleukin-6 following
interleukin-1 stimulation, which triggers hepatocyte proliferation and HCC.
Importantly, the presence of ​EGFR-positive liver macrophages in HCC
patients is associated with poor survival. This study demonstrates a

  • tumour-promoting mechanism for ​EGFR in non-tumour cells,
  • which could lead to more effective precision medicine strategies.
  1. HCC formation in mice lacking ​EGFRin hepatocytes or all liver cells.
    http://www.nature.com/ncb/journal/vaop/ncurrent/carousel/ncb3031-f1.jpg

2. EGFR expression in Kupffer cells/liver macrophages promotes HCC development.

EGFR c2a expression in Kupffer cells.liver macrophages promotes HCC development.

EGFR c2a expression in Kupffer cells.liver macrophages promotes HCC development.

http://www.nature.com/ncb/journal/vaop/ncurrent/carousel/ncb3031-f2.jpg

Hypoxia-inducible factor 1 activation by aerobic glycolysis implicates
the Warburg effect in carcinogenesis
.

Lu H1, Forbes RA, Verma A.
J Biol Chem. 2002 Jun 28;277(26):23111-5. Epub 2002 Apr 9

Cancer cells display high rates of aerobic glycolysis, a phenomenon
known historically as the Warburg effect. Lactate and pyruvate, the end
products of glycolysis, are highly produced by cancer cells even in the
presence of oxygen
.

Hypoxia-induced gene expression in cancer cells

  • has been linked to malignant transformation.

Here we provide evidence that lactate and pyruvate

  • regulate hypoxia-inducible gene expression
  • independently of hypoxia
  • by stimulating the accumulation of hypoxia-inducible Factor 1alpha
    (HIF-1alpha).

In human gliomas and other cancer cell lines,

  • the accumulation of HIF-1alpha protein under aerobic conditions
  • requires the metabolism of glucose to pyruvate that
  1. prevents the aerobic degradation of HIF-1alpha protein,
  2. activates HIF-1 DNA binding activity, and
  3. enhances the expression of several HIF-1-activated genes
  4. erythropoietin,
  5. vascular endothelial growth factor,
  6. glucose transporter 3, and
  7. aldolase A.

Our findings support a novel role for pyruvate in metabolic signaling
and suggest a mechanism by which

  • high rates of aerobic glycolysis
  • can promote the malignant transformation and
  • survival of cancer cells.PMID: 11943784

Part IV. Transcription control and innate immunity

 c-Myc-induced transcription factor AP4 is required for
host protection mediated by CD8+ T cells

C Chou, AK Pinto, JD Curtis, SP Persaud, M Cella, Chih-Chung Lin, … & T Egawa Nature Immunology 17 Jun 2014;   http://dx.doi.org:/10.1038/ni.2943

The transcription factor c-Myc is essential for

  • the establishment of a metabolically active and proliferative state
  • in T cells after priming,

We identified AP4 as the transcription factor

  • that was induced by c-Myc and
  • sustained activation of antigen-specific CD8+ T cells.

Despite normal priming,

  • AP4-deficient CD8+ T cells
  • failed to continue transcription of a broad range of
    c-Myc-dependent targets.

Mice lacking AP4 specifically in CD8+ T cells showed

  • enhanced susceptibility to infection with West Nile virus.

Genome-wide analysis suggested that

  • many activation-induced genes encoding molecules
  • involved in metabolism were shared targets of
  • c-Myc and AP4.

Thus, AP4 maintains c-Myc-initiated cellular activation programs

  • in CD8+ T cells to control microbial infection.
  1. AP4 is regulated post-transcriptionally in CD8+ T cells.

Microarray analysis of transcription factor–encoding genes with a difference
in expression of >1.8-fold in activated CD8+ T cells treated for 12 h with
IL-2 (100 U/ml; + IL-2) relative to their expression in activated CD8+ T cells…
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F1.jpg

2. AP4 is required for the population expansion of antigen specific
CD8+ T cells following infection with LCMV-Arm.

Expression of CD4, CD8α and KLRG1 (a) and binding of an
H-2Db–gp(33–41) tetramer and expression of CD8α, KLRG1 and
CD62L (b) in splenocytes from wild-type (WT) and Tfap4−/− mice,
assessed by flow cytometry 8 d after infection
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F2.jpg

3. AP4 is required for the sustained clonal expansion of CD8+ T cells
but  not for their initial proliferation.
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F3.jpg

  1. AP4 is essential for host protection against infection with WNV, in
    a CD8+ T cell–intrinsic manner.
AP4 is essential for host protection against infection with WNV, in a CD8+ T cell–intrinsic manner.

AP4 is essential for host protection against infection with WNV, in a CD8+ T cell–intrinsic manner.

  •  Survival of Tfap4F/FCre− control mice (Cre−; n = 16) and
  • Tfap4F/FCD8-Cre+ mice (CD8-Cre+; n = 22) following infection with WNV.
    (b,c) Viral titers in the brain (b) and spleen (c) of Tfap4F/F Cre− and Tfap4F/F
    CD8-Cre+ mice  on day 9…
    http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F4.jpg

AP4 is essential for the sustained expression of genes that are targets of c-Myc.

Normalized signal intensity (NSI) of endogenous transcripts in
Tfap4+/+ and Tfap4−/− OT-I donor T cells adoptively transferred into
host mice and assessed on day 4 after infection of the host with LM-OVA
(top), and that of ERCC controls
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F6.jpg

Sustained c-Myc expression ‘rescues’ defects of Tfap4−/− CD8+ T cells.
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-F7.jpg

AP4 and c-Myc have distinct biological functions.
http://www.nature.com/ni/journal/vaop/ncurrent/carousel/ni.2943-SF7.jpg

Mucosal memory CD8+ T cells are selected in the periphery
by an MHC class I molecule

Y Huang, Y Park, Y Wang-Zhu, …A Larange, R Arens, & H Cheroutre

Nature Immunology 2 Oct 2011; 12: 1086–1095
http://dx.doi.org:/10.1038/ni.2106

The presence of immune memory at pathogen-entry sites is a prerequisite
for protection. We show that the non-classical major histocompatibility
complex (MHC) class I molecule

  • thymus leukemia antigen (TL),
  • induced on dendritic cells interacting with CD8αα on activated CD8αβ+ T cells,
  • mediated affinity-based selection of memory precursor cells.

Furthermore, constitutive expression of TL on epithelial cells

  • led to continued selection of mature CD8αβ+ memory T cells.

The memory process driven by TL and CD8αα

  • was essential for the generation of CD8αβ+ memory T cells in the intestine and
  • the accumulation of highly antigen-sensitive CD8αβ+ memory T cells
  • that form the first line of defense at the largest entry port for pathogens.

The metabolic checkpoint kinase mTOR is essential for IL-15 signaling during the development and activation of NK cells.

Marçais A, Cherfils-Vicini J, Viant C, Degouve S, Viel S, Fenis A, Rabilloud J,
Mayol K, Tavares A, Bienvenu J, Gangloff YG, Gilson E, Vivier E,Walzer T.
Nat Immunol. 2014 Aug; 15(8):749-757. Epub 2014 Jun 29
http://dx.doi.org:/10.1038/ni.2936  .    PMID: 24973821

Interleukin 15 (IL-15) controls

  • both the homeostasis and the peripheral activation of natural killer (NK) cells.

We found that the metabolic checkpoint kinase

  • mTOR was activated and boosted bioenergetic metabolism
  • after exposure of NK cells to high concentrations of IL-15,

whereas low doses of IL-15 triggered

  • only phosphorylation of the transcription factor STAT5.

mTOR

  • stimulated the growth and nutrient uptake of NK cells and
  • positively fed back on the receptor for IL-15.

This process was essential for

  • sustaining NK cell proliferation during development and
  • the acquisition of cytolytic potential during inflammation
    or viral infection.

The mTORC1 inhibitor rapamycin 

  • inhibited NK cell cytotoxicity both in mice and humans;
    • this probably contributes to the immunosuppressive
      activity of this drug in different clinical settings.

The Critical Role of IL-15-PI3K-mTOR Pathway in Natural Killer Cell
Effector Functions.
Nandagopal NAli AKKomal AKLee SH.   Author information
Front Immunol. 2014 Apr 23; 5:187. eCollection 2014.
http://dx.doi.org:/10.3389/fimmu.2014.00187

Natural killer (NK) cells were so named for their uniqueness in killing
certain tumor and virus-infected cells without prior sensitization.
Their functions are modulated in vivo by several soluble immune mediators;

  • interleukin-15 (IL-15) being the most potent among them in
    enabling NK cell homeostasis, maturation, and activation.

During microbial infections,

  • NK cells stimulated with IL-15 display enhanced cytokine responses.

This priming effect has previously been shown with respect to increased
IFN-γ production in NK cells

  • upon IL-12 and IL-15/IL-2 co-stimulation.
  • we explored if this effect of IL-15 priming 
  • can be extended to various other cytokines and
  • observed enhanced NK cell responses to stimulation
    • with IL-4, IL-21, IFN-α, and IL-2 in addition to IL-12.
  • we also observed elevated IFN-γ production in primed NK cells

Currently, the fundamental processes required for priming and

  • whether these signaling pathways work collaboratively or
    independently 

    • for NK cell functions are poorly understood.

We examined IL-15 effects on NK cells in which

  • the pathways emanating from IL-15 receptor activation
    • were blocked with specific inhibitors
    • To identify the key signaling events for NK cell priming,

Our results demonstrate that

the PI3K-AKT-mTOR pathway is critical for cytokine responses
in IL-15 primed NK cells. 

This pathway is also implicated in a broad range of

  • IL-15-induced NK cell effector functions such as
    • proliferation and cytotoxicity.

Likewise, NK cells from mice

  • treated with rapamycin to block the mTOR pathway
  • displayed defects in proliferation, and IFN-γ and granzyme B productions
  • resulting in elevated viral burdens upon murine cytomegalovirus infection.

Taken together, our data demonstrate

  • the requirement of PI3K-mTOR pathway
    • for enhanced NK cell functions by IL-15, thereby
  • coupling the metabolic sensor mTOR to NK cell anti-viral responses.

KEYWORDS: IL-15; JAK–STAT pathway; mTOR pathway; natural killer cells; signal transduction

Part V. Predicting Therapeutic Targets 

New discovery approach accelerates identification of potential cancer treatments
 Laura Williams, Univ. of Michigan   09/30/2014
http://www.rdmag.com/news/2014/09/new-discovery-approach-accelerates-identification-potential-cancer-treatments

Researchers at the Univ. of Michigan have described a new approach to
discovering potential cancer treatments that

  • requires a fraction of the time needed for more traditional methods.

They used the platform to identify

  • a novel antibody that is undergoing further investigation as a potential
    treatment for breast, ovarian and other cancers.

In research published online in the Proceedings of the National Academy
of Sciences
, researchers in the laboratory of Stephen Weiss at the U-M Life
Sciences Institute detail an approach

  • that replicates the native environment of cancer cells and
  • increases the likelihood that drugs effective against the growth of
    tumor cells in test tube models
  • will also stop cancer from growing in humans.

The researchers have used their method

  • to identify an antibody that stops breast cancer tumor growth in animal models, and
  • they are investigating the antibody as a potential treatment in humans.

“Discovering new targets for cancer therapeutics is a long and tedious undertaking, and

  • identifying and developing a potential drug to specifically hit that
    target without harming healthy cells is a daunting task,” Weiss said.
  • “Our approach allows us to identify potential therapeutics
    • in a fraction of the time that traditional methods require.”

The researchers began by

  • creating a 3-D “matrix” of collagen, a connective tissue molecule very similar to that found
    • surrounding breast cancer cells in human patients.
  • They then embedded breast cancer cells into the collagen matrix,
    • where the cells grew as they would in human tissue.

The investigators then injected the cancer-collagen tissue composites into mice that then

  • recognize the human cancer cells as foreign tissue.
    • Much in the way that our immune system generates antibodies
      to fight infection,
  • the mice began to generate thousands of antibodies directed against
    the human cancer cells.
  • These antibodies were then tested for the ability to stop the growth
    of the human tumor cells.

“We create an environment in which cells cultured in the laboratory ‘think’
they are growing in the body and then

  • rapidly screen large numbers of antibodies to see if any exert
    anti-cancer effects,” Weiss said.
  • “This allows us to select promising antibodies very quickly and then

They discovered a particular antibody, 4C3, which was able to

  • almost completely stop the proliferation of the breast cancer cells.

They then identified the molecule on the cancer cells that the antibody targets.

The antibody can be further engineered to generate

  • humanized monoclonal antibodies for use in patients

“We still need to do a lot more work to determine how effective 4C3 might be as a
treatment for breast and other cancers, on its own or in conjunction with other
therapies,” Weiss said. “But we have enough data to warrant further pursuit,
and are expanding our efforts to use this discovery platform to find similarly promising antibodies.”

Source: Univ. of Michigan

  1. Jose Eduardo de Salles Roselino

    Larry,
    I think you have made a great effort in order to connect basic ideas of metabolic regulation with those of gene expression control “modern” mechanisms.
    Yet, I do not think that at this stage it will be clear for all readers. At least, for the great majority of the readers. The most important factor I my opinion, is derived from the fact that modern readers considers that metabolic regulation deals with so called “housekeeping activities” of the cell. Something that is of secondary, tertiary or even less level of relevance.
    My idea, that you have mentioned in the text when you write at the beginning, the word biochemistry, in order to resume it, derives from the reading of What is life together with Prof. Leloir . For me and also, for him, biochemistry comprises a set of techniques and also a framework of reasoning about scientific results. As a set of techniques, Schrodinger has considered that it will lead to better understanding of genetics and of physiology as a two legs structure supporting the future progress related to his time (mid-forties). For Leloir, the key was the understanding of chemical reactivity and I agree with him. However, as I was able to talk and discuss it with him in detail, we should also take into account levels of stabilities of macromolecules and above all, regulation of activities and function (this is where) Pasteur effect that I was studying in Leloir´s lab at that time, 1970-72, gets into the general picture.
    Regulation for complex living beings , that also have cancer cell as a great topic of research problem can be understood through the understanding of two quite different results when opposition with lack of regulation is taken into account or experimentally elicited. The most clearly line of experiments can follow the Pasteur Effect as the intracellular result best seen when aerobiosis is compared with anaerobiosis as conditions in which maintenance of ATP levels and required metabolic regulation (Energy charge D.E, Atkinson etc) is studied. Another line of experiments is one that takes into account the extracellular result or for instance the homeostatic regulation of blood glucose levels. The blood glucose level is the most conspicuous and related to Pasteur Effect regulatory event that can be studied in the liver taking into account both final results tested or compared regarding its regulation, ATP levels maintenance (intracellular) and blood glucose maintenance (extracellular).
    My key idea is to consider that the same factors that elicits fast regulatory responses also elicits the slow energetic expensive regulatory responses. The biologic logic behind this common root is the ATP economy. In case, the regulatory stimulus fades out quickly the fast regulatory responses are good enough to maintain life and the time requiring, energetic costly responses will soon be stopped cutting short the ATP expenditure. In case, the stimulus last for long periods of time the fast responses are replaced by adaptive responses that in general will follow the line of cell differentiation mechanisms with changes in gene expression etc.
    The change from fast response mechanisms to long lasting developmentally linked ones is not sharp. Therefore, somehow, cancer cells becomes trapped into a metastable regulatory mechanism that prevents cell differentiation and reinforces those mechanisms linked to its internal regulatory goals. This metastable mechanism takes advantage from the fact that other cells, tissues and organs will take good care of homeostatic mechanisms that provide for their nutritional needs. In the case of my Hepatology work you will see a Piruvate kinase that does not responds to homeostatic signals .

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Imaging-guided cancer treatment

Imaging-guided cancer treatment

Writer & reporter: Dror Nir, PhD

It is estimated that the medical imaging market will exceed $30 billion in 2014 (FierceMedicalImaging). To put this amount in perspective; the global pharmaceutical market size for the same year is expected to be ~$1 trillion (IMS) while the global health care spending as a percentage of Gross Domestic Product (GDP) will average 10.5% globally in 2014 (Deloitte); it will reach ~$3 trillion in the USA.

Recent technology-advances, mainly miniaturization and improvement in electronic-processing components is driving increased introduction of innovative medical-imaging devices into critical nodes of major-diseases’ management pathways. Consequently, in contrast to it’s very small contribution to global health costs, medical imaging bears outstanding potential to reduce the future growth in spending on major segments in this market mainly: Drugs development and regulation (e.g. companion diagnostics and imaging surrogate markers); Disease management (e.g. non-invasive diagnosis, guided treatment and non-invasive follow-ups); and Monitoring aging-population (e.g. Imaging-based domestic sensors).

In; The Role of Medical Imaging in Personalized Medicine I discussed in length the role medical imaging assumes in drugs development.  Integrating imaging into drug development processes, specifically at the early stages of drug discovery, as well as for monitoring drug delivery and the response of targeted processes to the therapy is a growing trend. A nice (and short) review highlighting the processes, opportunities, and challenges of medical imaging in new drug development is: Medical imaging in new drug clinical development.

The following is dedicated to the role of imaging in guiding treatment.

Precise treatment is a major pillar of modern medicine. An important aspect to enable accurate administration of treatment is complementing the accurate identification of the organ location that needs to be treated with a system and methods that ensure application of treatment only, or mainly to, that location. Imaging is off-course, a major component in such composite systems. Amongst the available solution, functional-imaging modalities are gaining traction. Specifically, molecular imaging (e.g. PET, MRS) allows the visual representation, characterization, and quantification of biological processes at the cellular and subcellular levels within intact living organisms. In oncology, it can be used to depict the abnormal molecules as well as the aberrant interactions of altered molecules on which cancers depend. Being able to detect such fundamental finger-prints of cancer is key to improved matching between drugs-based treatment and disease. Moreover, imaging-based quantified monitoring of changes in tumor metabolism and its microenvironment could provide real-time non-invasive tool to predict the evolution and progression of primary tumors, as well as the development of tumor metastases.

A recent review-paper: Image-guided interventional therapy for cancer with radiotherapeutic nanoparticles nicely illustrates the role of imaging in treatment guidance through a comprehensive discussion of; Image-guided radiotherapeutic using intravenous nanoparticles for the delivery of localized radiation to solid cancer tumors.

 Graphical abstract

 Abstract

One of the major limitations of current cancer therapy is the inability to deliver tumoricidal agents throughout the entire tumor mass using traditional intravenous administration. Nanoparticles carrying beta-emitting therapeutic radionuclides [DN: radioactive isotops that emits electrons as part of the decay process a list of β-emitting radionuclides used in radiotherapeutic nanoparticle preparation is given in table1 of this paper.) that are delivered using advanced image-guidance have significant potential to improve solid tumor therapy. The use of image-guidance in combination with nanoparticle carriers can improve the delivery of localized radiation to tumors. Nanoparticles labeled with certain beta-emitting radionuclides are intrinsically theranostic agents that can provide information regarding distribution and regional dosimetry within the tumor and the body. Image-guided thermal therapy results in increased uptake of intravenous nanoparticles within tumors, improving therapy. In addition, nanoparticles are ideal carriers for direct intratumoral infusion of beta-emitting radionuclides by convection enhanced delivery, permitting the delivery of localized therapeutic radiation without the requirement of the radionuclide exiting from the nanoparticle. With this approach, very high doses of radiation can be delivered to solid tumors while sparing normal organs. Recent technological developments in image-guidance, convection enhanced delivery and newly developed nanoparticles carrying beta-emitting radionuclides will be reviewed. Examples will be shown describing how this new approach has promise for the treatment of brain, head and neck, and other types of solid tumors.

The challenges this review discusses

  • intravenously administered drugs are inhibited in their intratumoral penetration by high interstitial pressures which prevent diffusion of drugs from the blood circulation into the tumor tissue [1–5].
  • relatively rapid clearance of intravenously administered drugs from the blood circulation by kidneys and liver.
  • drugs that do reach the solid tumor by diffusion are inhomogeneously distributed at the micro-scale – This cannot be overcome by simply administering larger systemic doses as toxicity to normal organs is generally the dose limiting factor.
  • even nanoparticulate drugs have poor penetration from the vascular compartment into the tumor and the nanoparticles that do penetrate are most often heterogeneously distributed

How imaging could mitigate the above mentioned challenges

  • The inclusion of an imaging probe during drug development can aid in determining the clearance kinetics and tissue distribution of the drug non-invasively. Such probe can also be used to determine the likelihood of the drug reaching the tumor and to what extent.

Note: Drugs that have increased accumulation within the targeted site are likely to be more effective as compared with others. In that respect, Nanoparticle-based drugs have an additional advantage over free drugs with their potential to be multifunctional carriers capable of carrying both therapeutic and diagnostic imaging probes (theranostic) in the same nanocarrier. These multifunctional nanoparticles can serve as theranostic agents and facilitate personalized treatment planning.

  • Imaging can also be used for localization of the tumor to improve the placement of a catheter or external device within tumors to cause cell death through thermal ablation or oxidative stress secondary to reactive oxygen species.

See the example of Vintfolide in The Role of Medical Imaging in Personalized Medicine

vinta

Note: Image guided thermal ablation methods include radiofrequency (RF) ablation, microwave ablation or high intensity focused ultrasound (HIFU). Photodynamic therapy methods using external light devices to activate photosensitizing agents can also be used to treat superficial tumors or deeper tumors when used with endoscopic catheters.

  • Quality control during and post treatment

For example: The use of high intensity focused ultrasound (HIFU) combined with nanoparticle therapeutics: HIFU is applied to improve drug delivery and to trigger drug release from nanoparticles. Gas-bubbles are playing the role of the drug’s nano-carrier. These are used both to increase the drug transport into the cell and as ultrasound-imaging contrast material. The ultrasound is also used for processes of drug-release and ablation.

 HIFU

Additional example; Multifunctional nanoparticles for tracking CED (convection enhanced delivery)  distribution within tumors: Nanoparticle that could serve as a carrier not only for the therapeutic radionuclides but simultaneously also for a therapeutic drug and 4 different types of imaging contrast agents including an MRI contrast agent, PET and SPECT nuclear diagnostic imaging agents and optical contrast agents as shown below. The ability to perform multiple types of imaging on the same nanoparticles will allow studies investigating the distribution and retention of nanoparticles initially in vivo using non-invasive imaging and later at the histological level using optical imaging.

 multi

Conclusions

Image-guided radiotherapeutic nanoparticles have significant potential for solid tumor cancer therapy. The current success of this therapy in animals is most likely due to the improved accumulation, retention and dispersion of nanoparticles within solid tumor following image-guided therapies as well as the micro-field of the β-particle which reduces the requirement of perfectly homogeneous tumor coverage. It is also possible that the intratumoral distribution of nanoparticles may benefit from their uptake by intratumoral macrophages although more research is required to determine the importance of this aspect of intratumoral radionuclide nanoparticle therapy. This new approach to cancer therapy is a fertile ground for many new technological developments as well as for new understandings in the basic biology of cancer therapy. The clinical success of this approach will depend on progress in many areas of interdisciplinary research including imaging technology, nanoparticle technology, computer and robot assisted image-guided application of therapies, radiation physics and oncology. Close collaboration of a wide variety of scientists and physicians including chemists, nanotechnologists, drug delivery experts, radiation physicists, robotics and software experts, toxicologists, surgeons, imaging physicians, and oncologists will best facilitate the implementation of this novel approach to the treatment of cancer in the clinical environment. Image-guided nanoparticle therapies including those with β-emission radionuclide nanoparticles have excellent promise to significantly impact clinical cancer therapy and advance the field of drug delivery.

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A Future for Plasma Metabolomics in Cardiovascular Disease Assessment

Curator: Larry H Bernstein, MD, FCAP

 

 

Plasma metabolomics reveals a potential panel of biomarkers for early diagnosis
in acute coronary syndrome  

CM. Laborde, L Mourino-Alvarez, M Posada-Ayala,
G Alvarez-Llamas, MG Serranillos-Reus, et al.
Metabolomics – manuscript draft

In this study, analyses of peripheral plasma from Non-ST Segment Elevation
Acute Coronary Syndrome patients and healthy controls by gas chromatography-
mass spectrometry permitted the identification of 15 metabolites with statistical
differences (p<0.05) between experimental groups.
In our study, 6 amino acids were found decreased in NSTEACS patients when
compared with healthy control group suggesting either a decrease in anabolic
activity of these metabolites or an increase in the catabolic pathways. Of both
possibilities, the increased catabolism of the amino acids can be explained
considering simultaneously the capacity of glycogenic and ketogenic amino
acids along with the gradual hypoxic condition to which cardiac muscle cells
have been exposed.

Additionally, validation by gas chromatography-mass spectrometry and liquid
chromatography-mass spectrometry permitted us to identify a potential panel
of biomarkers formed by 5-OH tryptophan, 2-OH-butyric acid and 3-OH-butyric
acid. Oxidative stress conditions dramatically increase the rate of hepatic
synthesis of glutathione. It is synthesized from the amino acids cysteine, glutamic
acid and glycine. Under these conditions of metabolic stress, the supply of cysteine
for glutathione synthesis become limiting and homocysteine is used to form
cystathionine, which is cleaved to cysteine and 2-OH-butyric acid. Thus elevated
plasma levels of 2-OH-butyric acid can be a good biomarker of cellular oxidative
stress for the early diagnosis of ACS.  Another altered metabolite of similar
structure was 3-OH-butyric acid, a ketone body together with the acetoacetate,
and acetone. Elevated levels of ketone bodies in blood and urine mainly occur
in diabetic ketoacidosis. Type 1 diabetes mellitus (DMI) patients have decreased
levels of insulin in the blood that prevent glucose enter cells so these cells use
the catabolism of fats as energy source that produce ketones as final products.
This panel of biomarkers reflects the oxidative stress and the hypoxic state that
disrupts the myocardial cells and consequently constitutes a metabolomic
signature that could be used for early diagnosis of acute coronary syndrome.
We hypothesize that the hypoxia situation comes to “mimic” the physiological
situation that occurs in DMI. In this case, the low energy yield of glucose
metabolism “forces” these cells to use fat as energy source (through catabolism
independent of aerobic/anaerobic conditions) occurring ketones as final
products. In our experiment, the 3-OH-butyric acid was strongly elevated in
NSTEACS patients.

 

Current Methods Used in the Protein Carbonyl Assay
Nicoleta Carmen Purdel, Denisa Margina and Mihaela Ilie.
Ann Res & Rev in Biol 2014; 4(12): 2015-2026.
http://www.sciencedomain.org/download.php?f=Purdel4122013ARRB8763-1

The attack of reactive oxygen species on proteins and theformation of
protein carbonyls were investigated only in the recent years. Taking into
account that protein carbonyls may play an important role in the early
diagnosis of pathologies associated with reactive oxygen species
overproduction, a robust and reliable method to quantify the protein
carbonyls in complex biological samples is also required. Oxidative
stress represents the aggression produced at the molecular level by
the imbalance between pro-oxidant and antioxidant agents, in favor of
pro-oxidants, with severe functional consequences in all organs and
tissues. An overproduction of ROS results in oxidative damages
especially to proteins (the main target of ROS), as well as in lipids,or
DNA. Glycation and oxidative stress are closely linked, and both
phenomena are referred to as ‘‘glycoxidation’’. All steps of glycoxidation
generate oxygen-free radical production, some of them being common
with lipidic peroxidation pathways.
The initial glycation reaction is followed by a cascade of chemical
reactions resulting in the formation of intermediate products (Schiff base,
Amadori and Maillard products) and finally to a variety of derivatives
named advanced glycation end products (AGEs). In hyperglycemic
environments and in natural aging, AGEs are generated in increased
concentrations; their levels can be evaluated in plasma due to the fact
that they are fluorescent compounds. Specific biomarkers of oxidative
stress are currently investigated in order to evaluate the oxidative status
of a biological system and/or its regenerative power. Generaly, malondi-
aldehyde, 4-hydroxy-nonenal (known together as thiobarbituric acid
reactive substances – TBARS), 2-propenal and F2-isoprostanes are
investigated as markers of lipid peroxidation, while the measurement
of protein thiols, as well as S-glutathionylated protein are assessed
as markers of oxidative damage of proteins. In most cases, the
oxidative damage of the DNA has 8-hydroxy-2l-deoxyguanosine
(8-OHdG) as a marker.  The oxidative degradation of proteins plays an
important role in the early diagnosis of pathologies associated with
ROS overproduction. Oxidative modification of the protein structure
may take a variety of forms, including the nitration of tyrosine residues,
carbonylation, oxidation of methionine, or thiol groups, etc.

The carbonylation of protein represents the introduction of carbonyl
groups (aldehyde or ketone) in the protein structure, through several
mechanisms: by direct oxidation of the residues of lysine, arginine,
proline and threonine residues from the protein chain, by interaction
with lipid peroxidation products with aldehyde groups (such as 4-
hydroxy-2-nonenal, malondialdehyde, 2-propenal), or by the
interaction with the compounds with the carbonyl groups resulting
from the degradation of the lipid or glycoxidation. All of these
molecular changes occur under oxidative stress conditions.
There is a pattern of carbonylation, meaning that only certain
proteins can undergo this process and protein structure determines
the preferential sites of carbonylation. The most investigated
carbonyl derivates are represented by gamma-glutamic
semialdehyde (GGS) generated from the degradation of arginine
residue and α-aminoadipic semialdehyde (AAS) derived from lysine.

A number of studies have shown that the generation of protein
carbonyl groups is associated with normal cellular phenomena like
apoptosis, and cell differentiation and is dependent on age, species
and habits (eg. smoking) or severe conditions’ exposure (as
starvation or stress). The formation and accumulation of protein
carbonyls is increased in various human diseases, including –
diabetes and cardiovascular disease.

Recently, Nystrom [7] suggested that the carbonylation process
is associated with the physiological and not to the chronological
age of the organism and the carbonylation may be one of the causes
of aging and cell senescence; therefore it can be used as the marker
of these processes. Jha and Rizvi, [15] proposed the quantification of
protein carbonyls in the erythrocyte membrane as a biomarker of aging

PanelomiX: A threshold-based algorithm to create panels of
biomarkers

X Robin, N Turck, A Hainard, N Tiberti, F Lisacek. 
T r a n s l a t i o n a l  P r o t e o m i c s   2 0 1 3; 1: 57–64.
http://dx.doi.org/10.1016/j.trprot.2013.04.003

The computational toolbox we present here – PanelomiX – uses
the iterative combination of biomarkers and thresholds (ICBT) method.
This method combines biomarkers andclinical scores by selecting
thresholds that provide optimal classification performance. Tospeed
up the calculation for a large number of biomarkers, PanelomiX selects
a subset ofthresholds and parameters based on the random forest method.
The panels’ robustness and performance are analysed by cross-validation
(CV) and receiver operating characteristic(ROC) analysis.

Using 8 biomarkers, we compared this method against classic
combination procedures inthe determination of outcome for 113 patients
with an aneurysmal subarachnoid hemorrhage. The panel classified the
patients better than the best single biomarker (< 0.005) and compared
favourably with other off-the-shelf classification methods.

In conclusion, the PanelomiX toolbox combines biomarkers and evaluates
the performance of panels to classify patients better than single markers
or other classifiers. The ICBT algorithm proved to be an efficient classifier,
the results of which can easily be interpreted. 

Multiparametric diagnostics of cardiomyopathies by microRNA
signatures.
CS. Siegismund, M Rohde, U Kühl,  D  Lassner.
Microchim Acta 2014 Mar.
http://dx.doi.org:/10.1007/s00604-014-1249-y

MicroRNAs (miRNAs) represent a new group of stable biomarkers
that are detectable both in tissue and body fluids. Such miRNAs
may serve as cardiological biomarkers to characterize inflammatory
processes and to differentiate various forms of infection. The predictive
power of single miRNAs for diagnosis of complex diseases may be further
increased if several distinctly deregulated candidates are combined to
form a specific miRNA signature. Diagnostic systems that generate
disease related miRNA profiles are based on microarrays, bead-based
oligo sorbent assays, or on assays based on real-time polymerase
chain reactions and placed on microfluidic cards or nanowell plates.
Multiparametric diagnostic systems that can measure differentially
expressed miRNAs may become the diagnostic tool of the future due
to their predictive value with respect to clinical course, therapeutic
decisions, and therapy monitoring.

Nutritional lipidomics: Molecular metabolism, analytics, and
diagnostics
JT. Smilowitz, AM. Zivkovic, Yu-Jui Y Wan, SM. Watkins, et al.
Mol. Nutr. Food Res2013, 00, 1–17.
http://dx.doi.org:/10.1002/mnfr.201200808

The term lipidomics is quite new, first appearing in 2001. Its definition
is still being debated, from “the comprehensive analysis of all lipid
components in a biological sample” to “the full characterization of
lipid molecular species and their biological roles with respect to the
genes that encode proteins that regulate lipid metabolism”. In principle,
lipidomics is a field taking advantage of the innovations in the separation
sciences and MS together with bioinformatics to characterize the lipid
compositions of biological samples (biofluids, cells, tissues, organisms)
compositionally and quantitatively.

Biochemical pathways of lipid metabolism remain incomplete and the
tools to map lipid compositional data to pathways are still being assembled.
Biology itself is dauntingly complex and simply separating biological
structures remains a key challenge to lipidomics. Nonetheless, the
strategy of combining tandem analytical methods to perform the sensitive,
high-throughput, quantitative, and comprehensive analysis of lipid
metabolites of very large numbers of molecules is poised to drive
the field forward rapidly. Among the next steps for nutrition to understand
the changes in structures, compositions, and function of lipid biomolecules
in response to diet is to describe their distribution within discrete functional
compartments lipoproteins. Additionally, lipidomics must tackle the task
of assigning the functions of lipids as signaling molecules, nutrient sensors,
and intermediates of metabolic pathways.

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