Litcius/Paper detail

Probabilistic thermodynamic analysis of metabolic networks

Mattia G. Gollub, Hans‐Michael Kaltenbach, Jörg Stelling

2021Bioinformatics29 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Random sampling of metabolic fluxes can provide a comprehensive description of the capabilities of a metabolic network. However, current sampling approaches do not model thermodynamics explicitly, leading to inaccurate predictions of an organism's potential or actual metabolic operations. RESULTS: We present a probabilistic framework combining thermodynamic quantities with steady-state flux constraints to analyze the properties of a metabolic network. It includes methods for probabilistic metabolic optimization and for joint sampling of thermodynamic and flux spaces. Applied to a model of Escherichia coli, we use the methods to reveal known and novel mechanisms of substrate channeling, and to accurately predict reaction directions and metabolite concentrations. Interestingly, predicted flux distributions are multimodal, leading to discrete hypotheses on E.coli's metabolic capabilities. AVAILABILITY AND IMPLEMENTATION: Python and MATLAB packages available at https://gitlab.com/csb.ethz/pta. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

Python (programming language)Probabilistic logicMetabolic networkComputer scienceMetabolic flux analysisSampling (signal processing)Flux (metallurgy)MATLABData miningBiological systemBioinformaticsChemistryArtificial intelligenceBiologyFilter (signal processing)Operating systemComputer visionBiochemistryOrganic chemistryMetabolismMicrobial Metabolic Engineering and BioproductionSustainability and Ecological Systems Analysisthermodynamics and calorimetric analyses