Transcript
Page 1: Cellular Metabolic Network Modeling

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.

Microbial Systems GroupBiosciences & Biotechnology Division

Lawrence Livermore National Laboratory

Eivind Almaas

Cellular Metabolic Network Modeling

NetSci Conference 2007New York Hall of Science

UCRL-PRES-231343

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Microbes are ubiquitous

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 … !!

Gypsum crustBison hot spring

Roadside puddle

Eliat salt pondYellowstone Nat’l Park

Next to road, PA

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Micro-organisms: The good, the bad & the ugly

Saccharomyces cerevisiae

Helicobacter pylori

Escherichia coli

Cells are chemical factories

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Metabolic Network Structure

H. Jeong, B. Tombor, R. Albert, Z.N. Oltvai, and A.L. Barabasi, Nature 407, 651 (2000).

Organisms from all 3

domains of life are scale-free

networks.

Archaea Bacteria Eukaryotes

Nodes: chemicals (substrates)

Links: chem. reaction

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Metabolic network representations

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Effect of network representations

E. Almaas, J. Exp. Biol. 210, 1548 (2007)

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Effect of network representations

E. Almaas, J. Exp. Biol. 210, 1548 (2007)

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Whole-cell levelmetabolic dynamics

(fluxes)

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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 (FBA)

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Constraints & Optimization for growth

R1

R2

R3

R4

R5

R6

T1

T2

T3

M1

M2 M3

M4 M5

M1ext

M5ext

M3ext

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)

Flux Balance Analysis

M1M2…

M5

R1 R2 … RNS11S21

S12S22

…..

V1V2

...

= 0

Stoichiometricmatrix Flux vector

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Simple network example

1 2 6

3 4 5 7

1 1 2 6 4

3 4 5 7

2

3

b

b

b

b

Optimization goal

Optimal growth curve

J.S. Edwards et al, Biotechn. Bioeng. 77, 27 (2002)

1

2

3

0

optimal growth line

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R.U. Ibarra, J.S. Edwards & B.O. Palsson, Nature 420, 186 (2002)

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

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How does network structure

affect flux organization?

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Statistical properties of optimal fluxes

SUCC: Succinate uptakeGLU : 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).

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Mass predominantly flows along un-branched pathways!

2Evaluate single metabolite usepattern by calculating:

Two possible extremes:(a) All fluxes approx equal (b) One flux dominates

Single metabolite use patterns

E. Almaas, B. Kovacs, T. Vicsec, Z. Oltvai and A.-L. Barabási, Nature 427, 839 (2004).

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Carbon source: Glutamate Carbon source: Succinate

The metabolite high-flux pathways are connected, creating a

High Flux Backbone

Metabolic super-highways

E. Almaas, B. Kovacs, T. Vicsec, Z. Oltvai and A.-L. Barabási, Nature 427, 839 (2004).

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How does microbial metabolism adapt to

its environment?

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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

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• 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

Metabolic plasticity

E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005)

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The metabolic core

E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005)

A connected set of reactions that are ALWAYS active not random effect

The larger the network, the smaller the core a collective network effect

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• 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

The metabolic core is essential

E. Almaas, Z. N. Oltvai, A.-L. Barabási, PLoS Comput. Biol. 1(7):e68 (2005)

Correlation in mRNA expressions

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Genetic interactionsmediated by metabolic

network

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Epistasis: Nonlinear gene - gene interactions Partly responsible for inherent complexity and non-

linearity in genome – phenotype relationship Non-local gene effects are mediated by network of

metabolic interactions

Epistatic interactions & cellular metabolism

Hypothesis: Damage inflicted on metabolic function by a gene

deletion may be alleviated through further gene impairments.

Consequence: New paradigm for gene essentiality!

A.E. Motter, N. Gulbahce, E. Almaas, A.-L. Barabási, Submitted.

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

E. coli experiments

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Results: Gene knockoutsknockouts can improve function

Computational predictions in E. coli:Two types of metabolic recovery from gene knockoutson 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.

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• University of Notre Dame:A.-L. BarabásiZ. DeszoB. KovacsP.J. Macdonald

• Northwestern UniversityA. Motter

•Los Alamos Nat’l LabN. Gulbahce

• University of PittsburghZ. Oltvai

• Virginia TechR. Kulkarni

• Kent State UniversityR. Jin

• Trinity UniversityA. Holder

• Network Biology Group (LLNL)Eivind AlmaasJoya DeriCheol-Min GhimSungmin LeeAli Navid

Collaborators


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