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UCRL-PRES-231343 NetSci Conference 2007 New York Hall of Science Cellular Metabolic Network Modeling Eivind Almaas Microbial Systems Group Biosciences & Biotechnology Division Lawrence Livermore National Laboratory This work was performed under the auspices of the U.S. Department of Energy by University of California, Lawrence Livermore National Laboratory under Contract W-7405-Eng-48. Microbes are ubiquitous Bison hot spring Gypsum crust Yellowstone Nat’l Park Eliat salt pond Roadside puddle Next to road, PA Observations • Total biomass on earth dominated by microbes • Microbes co-exist as “communities” in a range of environments spanning the soil and the ocean; critically affect C and N cycling; potential source of biofuels • Even found in extreme environments, such as hypersaline ponds, hot springs, permafrost, acidity of pH<1, pressure of >1 kbar … Important for human health • Periodontal disease (risk of spont. abortions, heart problems) • Stomach cancer • Obesity … !! Micro-organisms: The good, the bad & the ugly Escherichia coli Cells are chemical factories Helicobacter pylori Saccharomyces cerevisiae Metabolic Network Structure Nodes: chemicals (substrates) Links: chem. reaction Archaea Bacteria Eukaryotes Organisms from all 3 domains of life are scale-free networks. H. Jeong, B. Tombor, R. Albert, Z.N. Oltvai, and A.L. Barabasi, Nature 407, 651 (2000). Metabolic network representations Effect of network representations E. Almaas, J. Exp. Biol. 210, 1548 (2007) Effect of network representations E. Almaas, J. Exp. Biol. 210, 1548 (2007) Whole-cell level metabolic dynamics (fluxes) Flux Balance Analysis (FBA) FBA input: • • • • • List of metabolic reactions Reaction stoichiometry Impose mass balance Impose steady state Optimization goal FBA ignores: • • • • • • Fluctuations and transients Enzyme efficiencies Metabolite concentrations / toxicity Regulatory effects Cellular localization … Flux Balance Analysis T3 M2 M1ext T1 M1 M3ext M3 R3 R1 R4 M4 R5 M5 R2 M5ext R6 T2 Stoichiometric matrix … RN V1 V2 … ... R1 R2 M1 S11 S12 M2 S21 S22 Flux vector =0 Constraints & Optimization for growth M5 J.S. Edwards & B.O. Palsson, Proc. Natl. Acad. Sci. USA 97, 5528 (2000) R.U. Ibarra, J.S. Edwards & B.O. Palsson, Nature 420, 186 (2002) D. Segre, D. Vitkup & G.M. Church, Proc. Natl. Acad. Sci. USA 99, 15112 (2002) Simple network example Optimal growth curve b3 b1 1 1 2 6 2 b4 6 3 3 44 5 5 7 7 b2 Optimization goal 0 1 2 optimal growth line J.S. Edwards et al, Biotechn. Bioeng. 77, 27 (2002) 3 Experimental confirmation: E. coli on glycerol Adaptive growth of E. coli with glycerol & O2: • 60-day experiment • Three independent populations: E1 & E2 @ T=30ºC; E3 @ T=37ºC • Initially sub-optimal performance R.U. Ibarra, J.S. Edwards & B.O. Palsson, Nature 420, 186 (2002) How does network structure affect flux organization? Statistical properties of optimal fluxes SUCC: Succinate uptake GLU : Glutamate uptake Central Metabolism, Emmerling et. al, J Bacteriol 184, 152 (2002) E. Almaas, B. Kovacs, T. Vicsec, Z. Oltvai and A.-L. Barabási, Nature 427, 839 (2004). Single metabolite use patterns 2 Evaluate single metabolite use pattern by calculating: Two possible extremes: (a) All fluxes approx equal (b) One flux dominates Mass predominantly flows along un-branched pathways! E. Almaas, B. Kovacs, T. Vicsec, Z. Oltvai and A.-L. Barabási, Nature 427, 839 (2004). Metabolic super-highways The metabolite high-flux pathways are connected, creating a High Flux Backbone Carbon source: Glutamate Carbon source: Succinate E. Almaas, B. Kovacs, T. Vicsec, Z. Oltvai and A.-L. Barabási, Nature 427, 839 (2004). How does microbial metabolism adapt to its environment? Metabolic plasticity • Sample 30,000 different optimal conditions randomly and uniformly • Metabolic network adapts to environmental changes using: (a) Flux plasticity (changes in flux rates) (b) Structural plasticity (reaction [de-] activation) Flux plasticity Structural plasticity Metabolic plasticity • Sample 30,000 different optimal conditions randomly and uniformly • Metabolic network adapts to environmental changes using: (a) Flux plasticity (changes in flux rates) (b) Structural plasticity (reaction [de-] activation) • There exists a group of reactions NOT subject to structural plasticity: the metabolic core • These reactions must play a key role in maintaining the metabolism’s overall functional integrity E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005) The metabolic core A connected set of reactions that are ALWAYS active not random effect The larger the network, the smaller the core a collective network effect E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005) The metabolic core is essential • The core is highly essential: 75% lethal (only 20% in non-core) for E. coli. 84% lethal (16% non-core) for S. cerevisiae. • The core is highly evolutionary conserved: 72% of core enzymes (48% of non-core) for E. coli. • The mRNA core activity is highly correlated in E. coli Correlation in mRNA expressions E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005) Genetic interactions mediated by metabolic network Epistatic interactions & cellular metabolism Epistasis: Nonlinear gene - gene interactions Partly responsible for inherent complexity and nonlinearity in genome – phenotype relationship Non-local gene effects are mediated by network of metabolic interactions Hypothesis: Damage inflicted on metabolic function by a gene deletion may be alleviated through further gene impairments. E. coli experiments Consequence: New paradigm for gene essentiality! Experimental data supports hypothesis: - No satisfactory explanation existed previously! - Comparison of wild-type E. coli (sub-optimal) growth with growth in mutants. - Multiple examples of suboptimal recovery. suboptimal wild-type growth rate single-knockout mutant A.E. Motter, N. Gulbahce, E. Almaas, A.-L. Barabási, Submitted. Results: Gene knockouts can improve function Computational predictions in E. coli: Two types of metabolic recovery from gene knockouts on minimal medium with glucose: (a) Suboptimal recovery (b) Synthetic viability Epistatic mechanism Epistatic interaction mechanism: • Gene-knockout flux rerouting • Choose genes for knockout that align mutant flux distribution with optimal A.E. Motter, N. Gulbahce, E. Almaas, A.-L. Barabási, Submitted. Collaborators • Network Biology Group (LLNL) Eivind Almaas Joya Deri Cheol-Min Ghim Sungmin Lee Ali Navid • University of Notre Dame: A.-L. Barabási Z. Deszo B. Kovacs P.J. Macdonald • Northwestern University A. Motter •Los Alamos Nat’l Lab N. Gulbahce • University of Pittsburgh Z. Oltvai • Virginia Tech R. Kulkarni • Kent State University R. Jin • Trinity University A. Holder