Model-based quantification of metabolic interactions from dynamic microbial-community data.

An important challenge in microbial ecology is to infer metabolic-exchange fluxes between growing microbial species from community-level data, concerning species abundances and metabolite concentrations. Here we apply a model-based approach to integrate such experimental data and thereby infer metab...

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Main Authors: Mark Hanemaaijer, Brett G Olivier, Wilfred F M Röling, Frank J Bruggeman, Bas Teusink
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5344373?pdf=render
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spelling doaj-b26c737e061947ab9c7068725ee068a22020-11-25T02:13:19ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01123e017318310.1371/journal.pone.0173183Model-based quantification of metabolic interactions from dynamic microbial-community data.Mark HanemaaijerBrett G OlivierWilfred F M RölingFrank J BruggemanBas TeusinkAn important challenge in microbial ecology is to infer metabolic-exchange fluxes between growing microbial species from community-level data, concerning species abundances and metabolite concentrations. Here we apply a model-based approach to integrate such experimental data and thereby infer metabolic-exchange fluxes. We designed a synthetic anaerobic co-culture of Clostridium acetobutylicum and Wolinella succinogenes that interact via interspecies hydrogen transfer and applied different environmental conditions for which we expected the metabolic-exchange rates to change. We used stoichiometric models of the metabolism of the two microorganisms that represents our current physiological understanding and found that this understanding - the model - is sufficient to infer the identity and magnitude of the metabolic-exchange fluxes and it suggested unexpected interactions. Where the model could not fit all experimental data, it indicates specific requirement for further physiological studies. We show that the nitrogen source influences the rate of interspecies hydrogen transfer in the co-culture. Additionally, the model can predict the intracellular fluxes and optimal metabolic exchange rates, which can point to engineering strategies. This study therefore offers a realistic illustration of the strengths and weaknesses of model-based integration of heterogenous data that makes inference of metabolic-exchange fluxes possible from community-level experimental data.http://europepmc.org/articles/PMC5344373?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Mark Hanemaaijer
Brett G Olivier
Wilfred F M Röling
Frank J Bruggeman
Bas Teusink
spellingShingle Mark Hanemaaijer
Brett G Olivier
Wilfred F M Röling
Frank J Bruggeman
Bas Teusink
Model-based quantification of metabolic interactions from dynamic microbial-community data.
PLoS ONE
author_facet Mark Hanemaaijer
Brett G Olivier
Wilfred F M Röling
Frank J Bruggeman
Bas Teusink
author_sort Mark Hanemaaijer
title Model-based quantification of metabolic interactions from dynamic microbial-community data.
title_short Model-based quantification of metabolic interactions from dynamic microbial-community data.
title_full Model-based quantification of metabolic interactions from dynamic microbial-community data.
title_fullStr Model-based quantification of metabolic interactions from dynamic microbial-community data.
title_full_unstemmed Model-based quantification of metabolic interactions from dynamic microbial-community data.
title_sort model-based quantification of metabolic interactions from dynamic microbial-community data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description An important challenge in microbial ecology is to infer metabolic-exchange fluxes between growing microbial species from community-level data, concerning species abundances and metabolite concentrations. Here we apply a model-based approach to integrate such experimental data and thereby infer metabolic-exchange fluxes. We designed a synthetic anaerobic co-culture of Clostridium acetobutylicum and Wolinella succinogenes that interact via interspecies hydrogen transfer and applied different environmental conditions for which we expected the metabolic-exchange rates to change. We used stoichiometric models of the metabolism of the two microorganisms that represents our current physiological understanding and found that this understanding - the model - is sufficient to infer the identity and magnitude of the metabolic-exchange fluxes and it suggested unexpected interactions. Where the model could not fit all experimental data, it indicates specific requirement for further physiological studies. We show that the nitrogen source influences the rate of interspecies hydrogen transfer in the co-culture. Additionally, the model can predict the intracellular fluxes and optimal metabolic exchange rates, which can point to engineering strategies. This study therefore offers a realistic illustration of the strengths and weaknesses of model-based integration of heterogenous data that makes inference of metabolic-exchange fluxes possible from community-level experimental data.
url http://europepmc.org/articles/PMC5344373?pdf=render
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AT wilfredfmroling modelbasedquantificationofmetabolicinteractionsfromdynamicmicrobialcommunitydata
AT frankjbruggeman modelbasedquantificationofmetabolicinteractionsfromdynamicmicrobialcommunitydata
AT basteusink modelbasedquantificationofmetabolicinteractionsfromdynamicmicrobialcommunitydata
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