Literature DB >> 23450699

Optimization-driven identification of genetic perturbations accelerates the convergence of model parameters in ensemble modeling of metabolic networks.

Ali R Zomorrodi1, Jimmy G Lafontaine Rivera, James C Liao, Costas D Maranas.   

Abstract

The ensemble modeling (EM) approach has shown promise in capturing kinetic and regulatory effects in the modeling of metabolic networks. Efficacy of the EM procedure relies on the identification of model parameterizations that adequately describe all observed metabolic phenotypes upon perturbation. In this study, we propose an optimization-based algorithm for the systematic identification of genetic/enzyme perturbations to maximally reduce the number of models retained in the ensemble after each round of model screening. The key premise here is to design perturbations that will maximally scatter the predicted steady-state fluxes over the ensemble parameterizations. We demonstrate the applicability of this procedure for an Escherichia coli metabolic model of central metabolism by successively identifying single, double, and triple enzyme perturbations that cause the maximum degree of flux separation between models in the ensemble. Results revealed that optimal perturbations are not always located close to reaction(s) whose fluxes are measured, especially when multiple perturbations are considered. In addition, there appears to be a maximum number of simultaneous perturbations beyond which no appreciable increase in the divergence of flux predictions is achieved. Overall, this study provides a systematic way of optimally designing genetic perturbations for populating the ensemble of models with relevant model parameterizations.
Copyright © 2013 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  Ensemble modeling; Genetic algorithm; Kinetic modeling; Metabolic networks; Optimal enzyme perturbations

Mesh:

Substances:

Year:  2013        PMID: 23450699     DOI: 10.1002/biot.201200270

Source DB:  PubMed          Journal:  Biotechnol J        ISSN: 1860-6768            Impact factor:   4.677


  6 in total

1.  Acceleration Strategies to Enhance Metabolic Ensemble Modeling Performance.

Authors:  Jennifer L Greene; Andreas Wäechter; Keith E J Tyo; Linda J Broadbelt
Journal:  Biophys J       Date:  2017-09-05       Impact factor: 4.033

Review 2.  Metabolic kinetic modeling provides insight into complex biological questions, but hurdles remain.

Authors:  Jonathan Strutz; Jacob Martin; Jennifer Greene; Linda Broadbelt; Keith Tyo
Journal:  Curr Opin Biotechnol       Date:  2019-03-07       Impact factor: 9.740

Review 3.  Computational strategies for a system-level understanding of metabolism.

Authors:  Paolo Cazzaniga; Chiara Damiani; Daniela Besozzi; Riccardo Colombo; Marco S Nobile; Daniela Gaglio; Dario Pescini; Sara Molinari; Giancarlo Mauri; Lilia Alberghina; Marco Vanoni
Journal:  Metabolites       Date:  2014-11-24

4.  Bayesian inference of metabolic kinetics from genome-scale multiomics data.

Authors:  Peter C St John; Jonathan Strutz; Linda J Broadbelt; Keith E J Tyo; Yannick J Bomble
Journal:  PLoS Comput Biol       Date:  2019-11-04       Impact factor: 4.475

5.  k-OptForce: integrating kinetics with flux balance analysis for strain design.

Authors:  Anupam Chowdhury; Ali R Zomorrodi; Costas D Maranas
Journal:  PLoS Comput Biol       Date:  2014-02-20       Impact factor: 4.475

6.  From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.

Authors:  Charles J Foster; Saratram Gopalakrishnan; Maciek R Antoniewicz; Costas D Maranas
Journal:  PLoS Comput Biol       Date:  2019-09-10       Impact factor: 4.475

  6 in total

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