GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.

Genome-scale metabolic reconstructions are typically validated by comparing in silico growth predictions across different mutants utilizing different carbon sources with in vivo growth data. This comparison results in two types of model-prediction inconsistencies; either the model predicts growth wh...

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Main Authors: Vinay Satish Kumar, Costas D Maranas
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-03-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2645679?pdf=render
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author Vinay Satish Kumar
Costas D Maranas
author_facet Vinay Satish Kumar
Costas D Maranas
author_sort Vinay Satish Kumar
collection DOAJ
description Genome-scale metabolic reconstructions are typically validated by comparing in silico growth predictions across different mutants utilizing different carbon sources with in vivo growth data. This comparison results in two types of model-prediction inconsistencies; either the model predicts growth when no growth is observed in the experiment (GNG inconsistencies) or the model predicts no growth when the experiment reveals growth (NGG inconsistencies). Here we propose an optimization-based framework, GrowMatch, to automatically reconcile GNG predictions (by suppressing functionalities in the model) and NGG predictions (by adding functionalities to the model). We use GrowMatch to resolve inconsistencies between the predictions of the latest in silico Escherichia coli (iAF1260) model and the in vivo data available in the Keio collection and improved the consistency of in silico with in vivo predictions from 90.6% to 96.7%. Specifically, we were able to suggest consistency-restoring hypotheses for 56/72 GNG mutants and 13/38 NGG mutants. GrowMatch resolved 18 GNG inconsistencies by suggesting suppressions in the mutant metabolic networks. Fifteen inconsistencies were resolved by suppressing isozymes in the metabolic network, and the remaining 23 GNG mutants corresponding to blocked genes were resolved by suitably modifying the biomass equation of iAF1260. GrowMatch suggested consistency-restoring hypotheses for five NGG mutants by adding functionalities to the model whereas the remaining eight inconsistencies were resolved by pinpointing possible alternate genes that carry out the function of the deleted gene. For many cases, GrowMatch identified fairly nonintuitive model modification hypotheses that would have been difficult to pinpoint through inspection alone. In addition, GrowMatch can be used during the construction phase of new, as opposed to existing, genome-scale metabolic models, leading to more expedient and accurate reconstructions.
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spelling doaj.art-36ee252ee1244f03a4c7967326e6c2682022-12-22T01:43:09ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582009-03-0153e100030810.1371/journal.pcbi.1000308GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.Vinay Satish KumarCostas D MaranasGenome-scale metabolic reconstructions are typically validated by comparing in silico growth predictions across different mutants utilizing different carbon sources with in vivo growth data. This comparison results in two types of model-prediction inconsistencies; either the model predicts growth when no growth is observed in the experiment (GNG inconsistencies) or the model predicts no growth when the experiment reveals growth (NGG inconsistencies). Here we propose an optimization-based framework, GrowMatch, to automatically reconcile GNG predictions (by suppressing functionalities in the model) and NGG predictions (by adding functionalities to the model). We use GrowMatch to resolve inconsistencies between the predictions of the latest in silico Escherichia coli (iAF1260) model and the in vivo data available in the Keio collection and improved the consistency of in silico with in vivo predictions from 90.6% to 96.7%. Specifically, we were able to suggest consistency-restoring hypotheses for 56/72 GNG mutants and 13/38 NGG mutants. GrowMatch resolved 18 GNG inconsistencies by suggesting suppressions in the mutant metabolic networks. Fifteen inconsistencies were resolved by suppressing isozymes in the metabolic network, and the remaining 23 GNG mutants corresponding to blocked genes were resolved by suitably modifying the biomass equation of iAF1260. GrowMatch suggested consistency-restoring hypotheses for five NGG mutants by adding functionalities to the model whereas the remaining eight inconsistencies were resolved by pinpointing possible alternate genes that carry out the function of the deleted gene. For many cases, GrowMatch identified fairly nonintuitive model modification hypotheses that would have been difficult to pinpoint through inspection alone. In addition, GrowMatch can be used during the construction phase of new, as opposed to existing, genome-scale metabolic models, leading to more expedient and accurate reconstructions.http://europepmc.org/articles/PMC2645679?pdf=render
spellingShingle Vinay Satish Kumar
Costas D Maranas
GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
PLoS Computational Biology
title GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
title_full GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
title_fullStr GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
title_full_unstemmed GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
title_short GrowMatch: an automated method for reconciling in silico/in vivo growth predictions.
title_sort growmatch an automated method for reconciling in silico in vivo growth predictions
url http://europepmc.org/articles/PMC2645679?pdf=render
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AT costasdmaranas growmatchanautomatedmethodforreconcilinginsilicoinvivogrowthpredictions