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What is metabolomics /metabonomics?. Jules Griffin Department of Biochemistry, University of Cambridge. An overview. Some definitions A brief overview of key literature Given the subsequent talks this will focus on non-cancer related applications Phenotyping yeast by NMR
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What is metabolomics/metabonomics? Jules Griffin Department of Biochemistry, University of Cambridge
An overview • Some definitions • A brief overview of key literature • Given the subsequent talks this will focus on non-cancer related applications • Phenotyping yeast by NMR • GC-MS and plant phenotypes • CAD and screening patients using blood plasma • Future directions
What’s in a name? Metabonomics “…measurement of the dynamic multiparametric metabolic response of living systems to pathophysiological stimuli or genetic modification…” Nicholson et al., 1999 Metabolomics “...the complete set of metabolites/low-molecular-weight intermediates, which are context dependent, varying according to the physiology, developmental or pathological state of the cell, tissue, organ or organism…” Oliver2002
Systems Biology and the rise of the “-omes” • Genomics • Study of genes – the only -ome which is not context dependent • Transcriptomics • All the mRNA in a cell/tissue/organism • Proteomics • All the proteins in a cell/tissue/organism • Metabonomics/Metabolomics • All the metabolites in a cell/tissue/organism
The challenges of metabolomics Conc. Range 109 • How many metabolites? • Just considering one class there are a huge number of permutations • 40 common fatty acids • 40 FA acyl CoA • 64000 TAGs • 120 1-, 2-, 3- MAG • 4800 1,2-, 1,3-, 2,3- DAGs • Total = 69000 Global profiles NMR GC-MS LC-MS Custom assays Polarity Log -6 to 14 Mass < 1500 amu From a talk by J van der Greef
Open or Closed? • Open analysis • An analysis of the total detectable content of the sample (e.g. an NMR spectrum of urine) • Primarily used for the detection of novel entities • Closed analysis • An analysis focused onto a specific molecule or molecules (e.g. measurement of a specific m/z) • Used for the measurement of known variables for a model
A procedure for Metabonomics • Measure small molecule concentrations through a global approach • Use pattern recognition to define metabolism in a multidimensional space • Define a metabolic phenotype (metabotype) • Use this information to determine an end point (e.g. drug toxicity, disease state) or use to data mine another –omic technology.
Global Profiling Tools • NMR spectroscopy • Solution state, solid state, in vivo • High throughput • Relatively robust • GC- and LC-Mass spectroscopy • More analytically sensitive • Potentially truly global • Problems with ionisation though? • Coulombic arrays • FT-IR spectroscopy • TLC • Metabolite arrays • Used to monitor E.Coli strains • Use biochemical assays
Key Publications Examples Showing The Potential Of Metabolomics
Genomics v. Metabonomics Listening to Silent Phenotypes • Standard way to phenotype yeast strains is to see how rapidly a strain grows on a given substrate mixture • If the mutation does not alter the rate of growth it is said to be a silent mutation • Can we use metabolomics to distinguish these silent phenotypes? • Can we cluster similar genes together? • Yeast was the first eukaryote to be sequenced • Mutants for the 6000 genes in yeast can now be taken from banks such as EUROFAN • Suggests we can completely phenotype all the genes in yeast • Have a significant impact on human disease through comparison of gene sequence/similarities Raamsdonk et al. (2001) Nat. Biotechnol. 19, 45-50.
FANCY - Functional ANalysis by Co-responses in Yeast • 1H NMR spectroscopy to study the metabolic changes induced in the different yeast strains • Metabolic perturbations can be used to classify strains • clusters mutants from similar deletions together. • Two mutants involving 6-phosphofructo-2-kinase, and oxidative phosphorylation made up two clusters PLS Component 3 PLS Component 2 Raamsdonk et al. (2001) Nat. Biotechnol. 19, 45-50.
GC/MS and plant metabolomics • Huge challenge • plant genomes contain 20,000-50,000 genes, • currently 50,000 metabolites identified • number set to rise ~200,000 • Current plant metabolomics uses metabolic profiling through GC-MS of plant extracts. Fiehn O et al. 2000 Nature Biotechnology, 18, 1157-1161.
GC/MS and plant metabolomics • Fiehn et al. - GC-MS quantifies 326 distinct compounds in Arabidopsis thaliana leaf extracts • chemical structure to half of these. • PCA separates 4 genotypes • GC-TOF-MS now detected & characterised ~1000 metabolites. • Since used these data bases to identify metabolic cliques Fiehn O et al. 2000 Nature Biotechnology, 18, 1157-1161.
Predicting Coronary Artery Disease In Humans • Predict the occurrence and severity of coronary artery disease using blood plasma. • Models could be built that distinguish the different disease groups • e.g. NCA vs. single vessel, single vessel vs. double vessel • Disease presence and severity can be predicted • Such systems may produce significant financial savings • angiography, currently the gold standard for diagnosis. Brindle JT et al., 2002. Nat Med. 8(12), 1439-45.
Future directions A wish list from current research….
Future directions I: Rapid Phenotyping • As part of a large scale mutagenesis program at the MRC Mammalian Genetics unit, Harwell • Harwell Mutagenesis program • Use N-ethyl n-nirosourea to induce mutations • Aim to generate 100 F1 progeny of mutagenised animals per week! • Mice with interesting phenotypes will then be posted for the wider research community • Need a high through put phenotyping tool to correlate with the genotype information PCA of 160 urine samples from a diabetic mouse model (dbdb mouse maintained at MRC Harwell). Class 1 – Male Wild Type/Heterozygous; Class 2 - Male Homozygous; Class 3 - Female WT/Heterozygous; Class 4 - Female Homozygous.
Future directions II • Improvements in metabolomic technology • Cryoprobes • LC-NMR • LC-MS, GC-MS • HRMAS • Integration of these approaches
Female Day Male Day DIURNAL DIFFERENCE Female Night Male Night GENDER DIFFERENCE Rat Urine baseline study: A Combined NMR and LC-MS study
Female Night Female Day GENDER DIFFERENCE Male Day Male Night DIURNAL DIFFERENCE LC/MS
LC/MS Male Male Female Female
Tentative assignment of 333.24: Ovarian steroid hormone such as 17a-hydroxypregnenolone or isomer thereof 315.24 = single water loss 297.22 = double water loss 355.26 = Na adduct; ~372 = K adduct 817.5935 = ? Male Male Female Female Results: LC/MS
5 6 1 3 4 2 day 8 day 6 day 4 day 2 day 0 STEAM Increase in PUFAs during PCD • Used a combined MRI, MRS, HRMAS and high res NMR approach to following PCD in tumours (see Prof Kauppinen’s talk) • During PCD lipids increase in intensity for both saturated and unsaturated resonances • 5.3, 2.8 3-fold • 1.3 2-fold • This increase in PUFAs also detected in T2 hyperintensive core of tumours • Lipid changes associated both with PCD and cell debris region Entire region Hyper-intensive region
Metabolomics and transcriptomics – Fatty liver disease • Non-alcoholic steatohepatisis is a common feature of the Metabolic Syndrome & toxic reactions to pharmacological drugs. • Orotic acid supplementation induces fatty liver • disruption of Apo proteins production? • Applied a genomic, proteomic and metabolomics approach to the problem Griffin et al., Physiol Genomics 2004
A simple system, but polygenic challenge 10 m m m m m m m m m m 0 m m m m m m m m m m m -10 m m m -20 -10 0 10 20 PC 1 Increased lipids & PtdChol, decreased glucose • Two rat strains used • Wistar - classically used - Out bred strain • Kyoto - prone to fatty liver accumulation -In bred • Comparable to pharmacogenomics Wistar Kyoto Wistar Kyoto Griffin et al., Physiol Genomics 2004
ATP ADP NAD NADH Sn-Glycerol 3-phosphate Glycerol Glycolysis Adenosine Uricase Sarcosine Dimethylglycine Betaine Glycerol 3 phosphate acyltransferase Glycolate Glucose Glycogen phosphorylase Betaine aldehyde 1-Acylglycerol 3-phosphate TMAO Glycogen Glyoxylate Glycine Creatine Deposition of hepatic lipid triglyceride Fatty acid synthesis: ATP citrate lyase Acyl carrier protein domain of fatty acid synthetase Stearyl-CoA Desaturase -Oxidation -hydroxy-butyrate Fatty acid Coenzyme A ligase Transport ApoB Apo C III OROTIC ACID Choline TMA Serine 1,2-diacylglycerol phosphate UTP Phosphocholine CTP Phosphoserine 1,2 Diacylglycerol PP 1,2 Diacylglycerol Phosphoserine aminotransferase CDP-choline CMP 3P-Hydroxypyruvate Triacylglycerol Phosphatidylcholine D-3-phosphoglycerate dehydrogenase Phosphatidyserine & Phosphatidylethanolamine 3P-D glycerate Griffin et al., Physiol Genomics 2004
NMR derived metabolic profiles ideal for phenotyping animals FANCY in yeast Can we mine information from a number of mouse models simultaneously (PIMP)? Development of metabolomic databases MIAME for metabolomics? Future Directions III
Acknowledgements • JLG Group • Helen Atherton • Melanie Gulston • Mark Hodson • Oliver Jones • Mahon Maguire • Michael Pears • Denis Rubtsov • Reza Salek • Jeff Troke • MRC Harwell • Steve Brown • Michael Cheeseman • Tertius Hough • GlaxoSmithKline • Brian Sweatman • John Haselden • Andy Nicholls • Sue Connor • Imperial College • James Scott • Jeremy Nicholson • University of Birmingham • Risto Kauppinen • Waters • John Shockcor