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BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities

Metagenomics yields enormous numbers of microbial sequences that can be assigned a metabolic function. Using such data to infer community-level metabolic divergence is hindered by the lack of a suitable statistical framework. Here, we describe a novel hierarchical Bayesian model, called BiomeNet (Ba...

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Autores principales: Shafiei, Mahdi, Dunn, Katherine A., Chipman, Hugh, Gu, Hong, Bielawski, Joseph P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4238953/
https://www.ncbi.nlm.nih.gov/pubmed/25412107
http://dx.doi.org/10.1371/journal.pcbi.1003918
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author Shafiei, Mahdi
Dunn, Katherine A.
Chipman, Hugh
Gu, Hong
Bielawski, Joseph P.
author_facet Shafiei, Mahdi
Dunn, Katherine A.
Chipman, Hugh
Gu, Hong
Bielawski, Joseph P.
author_sort Shafiei, Mahdi
collection PubMed
description Metagenomics yields enormous numbers of microbial sequences that can be assigned a metabolic function. Using such data to infer community-level metabolic divergence is hindered by the lack of a suitable statistical framework. Here, we describe a novel hierarchical Bayesian model, called BiomeNet (Bayesian inference of metabolic networks), for inferring differential prevalence of metabolic subnetworks among microbial communities. To infer the structure of community-level metabolic interactions, BiomeNet applies a mixed-membership modelling framework to enzyme abundance information. The basic idea is that the mixture components of the model (metabolic reactions, subnetworks, and networks) are shared across all groups (microbiome samples), but the mixture proportions vary from group to group. Through this framework, the model can capture nested structures within the data. BiomeNet is unique in modeling each metagenome sample as a mixture of complex metabolic systems (metabosystems). The metabosystems are composed of mixtures of tightly connected metabolic subnetworks. BiomeNet differs from other unsupervised methods by allowing researchers to discriminate groups of samples through the metabolic patterns it discovers in the data, and by providing a framework for interpreting them. We describe a collapsed Gibbs sampler for inference of the mixture weights under BiomeNet, and we use simulation to validate the inference algorithm. Application of BiomeNet to human gut metagenomes revealed a metabosystem with greater prevalence among inflammatory bowel disease (IBD) patients. Based on the discriminatory subnetworks for this metabosystem, we inferred that the community is likely to be closely associated with the human gut epithelium, resistant to dietary interventions, and interfere with human uptake of an antioxidant connected to IBD. Because this metabosystem has a greater capacity to exploit host-associated glycans, we speculate that IBD-associated communities might arise from opportunist growth of bacteria that can circumvent the host's nutrient-based mechanism for bacterial partner selection.
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spelling pubmed-42389532014-11-26 BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities Shafiei, Mahdi Dunn, Katherine A. Chipman, Hugh Gu, Hong Bielawski, Joseph P. PLoS Comput Biol Research Article Metagenomics yields enormous numbers of microbial sequences that can be assigned a metabolic function. Using such data to infer community-level metabolic divergence is hindered by the lack of a suitable statistical framework. Here, we describe a novel hierarchical Bayesian model, called BiomeNet (Bayesian inference of metabolic networks), for inferring differential prevalence of metabolic subnetworks among microbial communities. To infer the structure of community-level metabolic interactions, BiomeNet applies a mixed-membership modelling framework to enzyme abundance information. The basic idea is that the mixture components of the model (metabolic reactions, subnetworks, and networks) are shared across all groups (microbiome samples), but the mixture proportions vary from group to group. Through this framework, the model can capture nested structures within the data. BiomeNet is unique in modeling each metagenome sample as a mixture of complex metabolic systems (metabosystems). The metabosystems are composed of mixtures of tightly connected metabolic subnetworks. BiomeNet differs from other unsupervised methods by allowing researchers to discriminate groups of samples through the metabolic patterns it discovers in the data, and by providing a framework for interpreting them. We describe a collapsed Gibbs sampler for inference of the mixture weights under BiomeNet, and we use simulation to validate the inference algorithm. Application of BiomeNet to human gut metagenomes revealed a metabosystem with greater prevalence among inflammatory bowel disease (IBD) patients. Based on the discriminatory subnetworks for this metabosystem, we inferred that the community is likely to be closely associated with the human gut epithelium, resistant to dietary interventions, and interfere with human uptake of an antioxidant connected to IBD. Because this metabosystem has a greater capacity to exploit host-associated glycans, we speculate that IBD-associated communities might arise from opportunist growth of bacteria that can circumvent the host's nutrient-based mechanism for bacterial partner selection. Public Library of Science 2014-11-20 /pmc/articles/PMC4238953/ /pubmed/25412107 http://dx.doi.org/10.1371/journal.pcbi.1003918 Text en © 2014 Shafiei et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Shafiei, Mahdi
Dunn, Katherine A.
Chipman, Hugh
Gu, Hong
Bielawski, Joseph P.
BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title_full BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title_fullStr BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title_full_unstemmed BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title_short BiomeNet: A Bayesian Model for Inference of Metabolic Divergence among Microbial Communities
title_sort biomenet: a bayesian model for inference of metabolic divergence among microbial communities
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4238953/
https://www.ncbi.nlm.nih.gov/pubmed/25412107
http://dx.doi.org/10.1371/journal.pcbi.1003918
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