Prediction of Metabolic Flux Distribution from Gene Expression Data Based on the Flux Minimization Principle

Abstract

Prediction of possible flux distributions in a metabolic network provides detailed phenotypic information that links metabolism to cellular physiology. To estimate metabolic steady-state fluxes, the most common approach is to solve a set of macroscopic mass balance equations subjected to stoichiometric constraints while attempting to optimize an assumed optimal objective function. This assumption is justifiable in specific cases but may be invalid when tested across different conditions, cell populations, or other organisms. With an aim to providing a more consistent and reliable prediction of flux distributions over a wide range of conditions, in this article we propose a framework that uses the flux minimization principle to predict active metabolic pathways from mRNA expression data. The proposed algorithm minimizes a weighted sum of flux magnitudes, while biomass production can be bounded to fit an ample range from very low to very high values according to the analyzed context. We have formulated the flux weights as a function of the corresponding enzyme reaction's gene expression value, enabling the creation of context-specific fluxes based on a generic metabolic network. In case studies of wild-type Saccharomyces cerevisiae, and wild-type and mutant Escherichia coli strains, our method achieved high prediction accuracy, as gauged by correlation coefficients and sums of squared error, with respect to the experimentally measured values. In contrast to other approaches, our method was able to provide quantitative predictions for both model organisms under a variety of conditions. Our approach requires no prior knowledge or assumption of a context-specific metabolic functionality and does not require trial-and-error parameter adjustments. Thus, our framework is of general applicability for modeling the transcription-dependent metabolism of bacteria and yeasts.

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Document Details

Document Type
Technical Report
Publication Date
Nov 14, 2014
Accession Number
ADA618967

Entities

People

  • Anders Wallqvist
  • Hyun-seob Song
  • Jaques Reifman

Organizations

  • United States Army Medical Research and Development Command

Tags

Communities of Interest

  • Biomedical

DTIC Thesaurus Topics

  • Algorithms
  • Biological Sciences
  • Biotechnology
  • Case Studies
  • Coefficients
  • Computational Biology
  • Data Sets
  • Escherichia
  • Escherichia Coli
  • Experimental Data
  • Gene Expression
  • Metabolism
  • Network Science
  • Production
  • Statistical Analysis
  • Steady State
  • United States

Fields of Study

  • Biology

Readers

  • Molecular Genetics
  • Molecular and Cellular Biology
  • Thermal Physics or Thermal Science.