Literature DB >> 15178193

Monte Carlo sampling can be used to determine the size and shape of the steady-state flux space.

Sharon J Wiback1, Iman Famili, Harvey J Greenberg, Bernhard Ø Palsson.   

Abstract

Constraint-based modeling results in a convex polytope that defines a solution space containing all possible steady-state flux distributions. The properties of this polytope have been studied extensively using linear programming to find the optimal flux distribution under various optimality conditions and convex analysis to define its extreme pathways (edges) and elementary modes. The work presented herein further studies the steady-state flux space by defining its hyper-volume. In low dimensions (i.e. for small sample networks), exact volume calculation algorithms were used. However, due to the #P-hard nature of the vertex enumeration and volume calculation problem in high dimensions, random Monte Carlo sampling was used to characterize the relative size of the solution space of the human red blood cell metabolic network. Distributions of the steady-state flux levels for each reaction in the metabolic network were generated to show the range of flux values for each reaction in the polytope. These results give insight into the shape of the high-dimensional solution space. The value of measuring uptake and secretion rates in shrinking the steady-state flux solution space is illustrated through singular value decomposition of the randomly sampled points. The V(max) of various reactions in the network are varied to determine the sensitivity of the solution space to the maximum capacity constraints. The methods developed in this study are suitable for testing the implication of additional constraints on a metabolic network system and can be used to explore the effects of single nucleotide polymorphisms (SNPs) on network capabilities.

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Year:  2004        PMID: 15178193     DOI: 10.1016/j.jtbi.2004.02.006

Source DB:  PubMed          Journal:  J Theor Biol        ISSN: 0022-5193            Impact factor:   2.691


  52 in total

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3.  Decoding how a soil bacterium extracts building blocks and metabolic energy from ligninolysis provides road map for lignin valorization.

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4.  A novel methodology to estimate metabolic flux distributions in constraint-based models.

Authors:  Francesco Alessandro Massucci; Francesc Font-Clos; Andrea De Martino; Isaac Pérez Castillo
Journal:  Metabolites       Date:  2013-09-20

5.  Quantitative prediction of cellular metabolism with constraint-based models: the COBRA Toolbox v2.0.

Authors:  Jan Schellenberger; Richard Que; Ronan M T Fleming; Ines Thiele; Jeffrey D Orth; Adam M Feist; Daniel C Zielinski; Aarash Bordbar; Nathan E Lewis; Sorena Rahmanian; Joseph Kang; Daniel R Hyduke; Bernhard Ø Palsson
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6.  Genome-scale thermodynamic analysis of Escherichia coli metabolism.

Authors:  Christopher S Henry; Matthew D Jankowski; Linda J Broadbelt; Vassily Hatzimanikatis
Journal:  Biophys J       Date:  2005-11-18       Impact factor: 4.033

7.  Brønsted-Evans-Polanyi relationships for C-C bond forming and C-C bond breaking reactions in thiamine-catalyzed decarboxylation of 2-keto acids using density functional theory.

Authors:  Rajeev Surendran Assary; Linda J Broadbelt; Larry A Curtiss
Journal:  J Mol Model       Date:  2011-04-27       Impact factor: 1.810

8.  Dynamic Bayesian sensitivity analysis of a myocardial metabolic model.

Authors:  D Calvetti; R Hageman; R Occhipinti; E Somersalo
Journal:  Math Biosci       Date:  2007-11-01       Impact factor: 2.144

9.  Steady-state kinetic modeling constrains cellular resting states and dynamic behavior.

Authors:  Jeremy E Purvis; Ravi Radhakrishnan; Scott L Diamond
Journal:  PLoS Comput Biol       Date:  2009-03-06       Impact factor: 4.475

Review 10.  Genome-scale models of bacterial metabolism: reconstruction and applications.

Authors:  Maxime Durot; Pierre-Yves Bourguignon; Vincent Schachter
Journal:  FEMS Microbiol Rev       Date:  2008-12-03       Impact factor: 16.408

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