BioMog: a computational framework for the de novo generation or modification of essential biomass components.

The success of genome-scale metabolic modeling is contingent on a model's ability to accurately predict growth and metabolic behaviors. To date, little focus has been directed towards developing systematic methods of proposing, modifying and interrogating an organism's biomass requirements...

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Main Authors: Christopher J Tervo, Jennifer L Reed
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3855262?pdf=render
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spelling doaj-1c2dc69ed37c45e388f9fe7d0060ab1c2020-11-25T02:34:22ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01812e8132210.1371/journal.pone.0081322BioMog: a computational framework for the de novo generation or modification of essential biomass components.Christopher J TervoJennifer L ReedThe success of genome-scale metabolic modeling is contingent on a model's ability to accurately predict growth and metabolic behaviors. To date, little focus has been directed towards developing systematic methods of proposing, modifying and interrogating an organism's biomass requirements that are used in constraint-based models. To address this gap, the biomass modification and generation (BioMog) framework was created and used to generate lists of biomass components de novo, as well as to modify predefined biomass component lists, for models of Escherichia coli (iJO1366) and of Shewanella oneidensis (iSO783) from high-throughput growth phenotype and fitness datasets. BioMog's de novo biomass component lists included, either implicitly or explicitly, up to seventy percent of the components included in the predefined biomass equations, and the resulting de novo biomass equations outperformed the predefined biomass equations at qualitatively predicting mutant growth phenotypes by up to five percent. Additionally, the BioMog procedure can quantify how many experiments support or refute a particular metabolite's essentiality to a cell, and it facilitates the determination of inconsistent experiments and inaccurate reaction and/or gene to reaction associations. To further interrogate metabolite essentiality, the BioMog framework includes an experiment generation algorithm that allows for the design of experiments to test whether a metabolite is essential. Using BioMog, we correct experimental results relating to the essentiality of thyA gene in E. coli, as well as perform knockout experiments supporting the essentiality of protoheme. With these capabilities, BioMog can be a valuable resource for analyzing growth phenotyping data and component of a model developer's toolbox.http://europepmc.org/articles/PMC3855262?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Christopher J Tervo
Jennifer L Reed
spellingShingle Christopher J Tervo
Jennifer L Reed
BioMog: a computational framework for the de novo generation or modification of essential biomass components.
PLoS ONE
author_facet Christopher J Tervo
Jennifer L Reed
author_sort Christopher J Tervo
title BioMog: a computational framework for the de novo generation or modification of essential biomass components.
title_short BioMog: a computational framework for the de novo generation or modification of essential biomass components.
title_full BioMog: a computational framework for the de novo generation or modification of essential biomass components.
title_fullStr BioMog: a computational framework for the de novo generation or modification of essential biomass components.
title_full_unstemmed BioMog: a computational framework for the de novo generation or modification of essential biomass components.
title_sort biomog: a computational framework for the de novo generation or modification of essential biomass components.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description The success of genome-scale metabolic modeling is contingent on a model's ability to accurately predict growth and metabolic behaviors. To date, little focus has been directed towards developing systematic methods of proposing, modifying and interrogating an organism's biomass requirements that are used in constraint-based models. To address this gap, the biomass modification and generation (BioMog) framework was created and used to generate lists of biomass components de novo, as well as to modify predefined biomass component lists, for models of Escherichia coli (iJO1366) and of Shewanella oneidensis (iSO783) from high-throughput growth phenotype and fitness datasets. BioMog's de novo biomass component lists included, either implicitly or explicitly, up to seventy percent of the components included in the predefined biomass equations, and the resulting de novo biomass equations outperformed the predefined biomass equations at qualitatively predicting mutant growth phenotypes by up to five percent. Additionally, the BioMog procedure can quantify how many experiments support or refute a particular metabolite's essentiality to a cell, and it facilitates the determination of inconsistent experiments and inaccurate reaction and/or gene to reaction associations. To further interrogate metabolite essentiality, the BioMog framework includes an experiment generation algorithm that allows for the design of experiments to test whether a metabolite is essential. Using BioMog, we correct experimental results relating to the essentiality of thyA gene in E. coli, as well as perform knockout experiments supporting the essentiality of protoheme. With these capabilities, BioMog can be a valuable resource for analyzing growth phenotyping data and component of a model developer's toolbox.
url http://europepmc.org/articles/PMC3855262?pdf=render
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