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

Kinetic models of metabolic networks offer the promise of quantitative phenotype prediction. The mechanistic characterization of enzyme catalyzed reactions allows for tracing the effect of perturbations in metabolite concentrations and reaction fluxes in response to genetic and environmental perturb...

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Main Authors: Charles J Foster, Saratram Gopalakrishnan, Maciek R Antoniewicz, Costas D Maranas
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-09-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007319
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spelling doaj-7668b6446cfa426798cbde694397b6362021-04-21T15:07:34ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-09-01159e100731910.1371/journal.pcbi.1007319From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.Charles J FosterSaratram GopalakrishnanMaciek R AntoniewiczCostas D MaranasKinetic models of metabolic networks offer the promise of quantitative phenotype prediction. The mechanistic characterization of enzyme catalyzed reactions allows for tracing the effect of perturbations in metabolite concentrations and reaction fluxes in response to genetic and environmental perturbation that are beyond the scope of stoichiometric models. In this study, we develop a two-step computational pipeline for the rapid parameterization of kinetic models of metabolic networks using a curated metabolic model and available 13C-labeling distributions under multiple genetic and environmental perturbations. The first step involves the elucidation of all intracellular fluxes in a core model of E. coli containing 74 reactions and 61 metabolites using 13C-Metabolic Flux Analysis (13C-MFA). Here, fluxes corresponding to the mid-exponential growth phase are elucidated for seven single gene deletion mutants from upper glycolysis, pentose phosphate pathway and the Entner-Doudoroff pathway. The computed flux ranges are then used to parameterize the same (i.e., k-ecoli74) core kinetic model for E. coli with 55 substrate-level regulations using the newly developed K-FIT parameterization algorithm. The K-FIT algorithm employs a combination of equation decomposition and iterative solution techniques to evaluate steady-state fluxes in response to genetic perturbations. k-ecoli74 predicted 86% of flux values for strains used during fitting within a single standard deviation of 13C-MFA estimated values. By performing both tasks using the same network, errors associated with lack of congruity between the two networks are avoided, allowing for seamless integration of data with model building. Product yield predictions and comparison with previously developed kinetic models indicate shifts in flux ranges and the presence or absence of mutant strains delivering flux towards pathways of interest from training data significantly impact predictive capabilities. Using this workflow, the impact of completeness of fluxomic datasets and the importance of specific genetic perturbations on uncertainties in kinetic parameter estimation are evaluated.https://doi.org/10.1371/journal.pcbi.1007319
collection DOAJ
language English
format Article
sources DOAJ
author Charles J Foster
Saratram Gopalakrishnan
Maciek R Antoniewicz
Costas D Maranas
spellingShingle Charles J Foster
Saratram Gopalakrishnan
Maciek R Antoniewicz
Costas D Maranas
From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
PLoS Computational Biology
author_facet Charles J Foster
Saratram Gopalakrishnan
Maciek R Antoniewicz
Costas D Maranas
author_sort Charles J Foster
title From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
title_short From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
title_full From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
title_fullStr From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
title_full_unstemmed From Escherichia coli mutant 13C labeling data to a core kinetic model: A kinetic model parameterization pipeline.
title_sort from escherichia coli mutant 13c labeling data to a core kinetic model: a kinetic model parameterization pipeline.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2019-09-01
description Kinetic models of metabolic networks offer the promise of quantitative phenotype prediction. The mechanistic characterization of enzyme catalyzed reactions allows for tracing the effect of perturbations in metabolite concentrations and reaction fluxes in response to genetic and environmental perturbation that are beyond the scope of stoichiometric models. In this study, we develop a two-step computational pipeline for the rapid parameterization of kinetic models of metabolic networks using a curated metabolic model and available 13C-labeling distributions under multiple genetic and environmental perturbations. The first step involves the elucidation of all intracellular fluxes in a core model of E. coli containing 74 reactions and 61 metabolites using 13C-Metabolic Flux Analysis (13C-MFA). Here, fluxes corresponding to the mid-exponential growth phase are elucidated for seven single gene deletion mutants from upper glycolysis, pentose phosphate pathway and the Entner-Doudoroff pathway. The computed flux ranges are then used to parameterize the same (i.e., k-ecoli74) core kinetic model for E. coli with 55 substrate-level regulations using the newly developed K-FIT parameterization algorithm. The K-FIT algorithm employs a combination of equation decomposition and iterative solution techniques to evaluate steady-state fluxes in response to genetic perturbations. k-ecoli74 predicted 86% of flux values for strains used during fitting within a single standard deviation of 13C-MFA estimated values. By performing both tasks using the same network, errors associated with lack of congruity between the two networks are avoided, allowing for seamless integration of data with model building. Product yield predictions and comparison with previously developed kinetic models indicate shifts in flux ranges and the presence or absence of mutant strains delivering flux towards pathways of interest from training data significantly impact predictive capabilities. Using this workflow, the impact of completeness of fluxomic datasets and the importance of specific genetic perturbations on uncertainties in kinetic parameter estimation are evaluated.
url https://doi.org/10.1371/journal.pcbi.1007319
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