4.5 Article

Quantitative Assessment of Thermodynamic Constraints on the Solution Space of Genome-Scale Metabolic Models

Journal

BIOPHYSICAL JOURNAL
Volume 105, Issue 2, Pages 512-522

Publisher

CELL PRESS
DOI: 10.1016/j.bpj.2013.06.011

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Funding

  1. National Science Foundation through a CAREER grant (NSF) [1053712]
  2. Graduate Research Fellowship [DGE-0718123]
  3. Khorana Program at the University of Wisconsin-Madison
  4. Directorate For Engineering
  5. Div Of Chem, Bioeng, Env, & Transp Sys [1053712] Funding Source: National Science Foundation

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Constraint-based methods provide powerful computational techniques to allow understanding and prediction of cellular behavior. These methods rely on physiochemical constraints to eliminate infeasible behaviors from the space of available behaviors. One such constraint is thermodynamic feasibility, the requirement that intracellular flux distributions obey the laws of thermodynamics. The past decade has seen several constraint-based methods that interpret this constraint in different ways, including those that are limited to small networks, rely on predefined reaction directions, and/or neglect the relationship between reaction free energies and metabolite concentrations. In this work, we utilize one such approach, thermodynamics-based metabolic flux analysis (TMFA), to make genome-scale, quantitative predictions about metabolite concentrations and reaction free energies in the absence of prior knowledge of reaction directions, while accounting for uncertainties in thermodynamic estimates. We applied TMFA to a genome-scale network reconstruction of Escherichia coli and examined the effect of thermodynamic constraints on the flux space. We also assessed the predictive performance of TMFA against gene essentiality and quantitative metabolomics data, under both aerobic and anaerobic, and optimal and suboptimal growth conditions. Based on these results, we propose that TMFA is a useful tool for validating phenotypes and generating hypotheses, and that additional types of data and constraints can improve predictions of metabolite concentrations.

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