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Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine

A network analysis including relative abundances of all ruminal microbial genera (archaea, bacteria, fungi, and protists) and their genes was performed to improve our understanding of how the interactions within the ruminal microbiome affects methane emissions (CH(4)). Metagenomics and CH(4) data we...

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Autores principales: Martínez-Álvaro, Marina, Auffret, Marc D., Stewart, Robert D., Dewhurst, Richard J., Duthie, Carol-Anne, Rooke, John A., Wallace, R. John, Shih, Barbara, Freeman, Tom C., Watson, Mick, Roehe, Rainer
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7181398/
https://www.ncbi.nlm.nih.gov/pubmed/32362882
http://dx.doi.org/10.3389/fmicb.2020.00659
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author Martínez-Álvaro, Marina
Auffret, Marc D.
Stewart, Robert D.
Dewhurst, Richard J.
Duthie, Carol-Anne
Rooke, John A.
Wallace, R. John
Shih, Barbara
Freeman, Tom C.
Watson, Mick
Roehe, Rainer
author_facet Martínez-Álvaro, Marina
Auffret, Marc D.
Stewart, Robert D.
Dewhurst, Richard J.
Duthie, Carol-Anne
Rooke, John A.
Wallace, R. John
Shih, Barbara
Freeman, Tom C.
Watson, Mick
Roehe, Rainer
author_sort Martínez-Álvaro, Marina
collection PubMed
description A network analysis including relative abundances of all ruminal microbial genera (archaea, bacteria, fungi, and protists) and their genes was performed to improve our understanding of how the interactions within the ruminal microbiome affects methane emissions (CH(4)). Metagenomics and CH(4) data were available from 63 bovines of a two-breed rotational cross, offered two basal diets. Co-abundance network analysis revealed 10 clusters of functional niches. The most abundant hydrogenotrophic Methanobacteriales with key microbial genes involved in methanogenesis occupied a different functional niche (i.e., “methanogenesis” cluster) than methylotrophic Methanomassiliicoccales (Candidatus Methanomethylophylus) and acetogens (Blautia). Fungi and protists clustered together and other plant fiber degraders like Fibrobacter occupied a seperate cluster. A Partial Least Squares analysis approach to predict CH(4) variation in each cluster showed the methanogenesis cluster had the best prediction ability (57.3%). However, the most important explanatory variables in this cluster were genes involved in complex carbohydrate degradation, metabolism of sugars and amino acids and Candidatus Azobacteroides carrying nitrogen fixation genes, but not methanogenic archaea and their genes. The cluster containing Fibrobacter, isolated from other microorganisms, was positively associated with CH(4) and explained 49.8% of its variability, showing fermentative advantages compared to other bacteria and fungi in providing substrates (e.g., formate) for methanogenesis. In other clusters, genes with enhancing effect on CH(4) were related to lactate and butyrate (Butyrivibrio and Pseudobutyrivibrio) production and simple amino acids metabolism. In comparison, ruminal genes negatively related to CH(4) were involved in carbohydrate degradation via lactate and succinate and synthesis of more complex amino acids by γ-Proteobacteria. When analyzing low- and high-methane emitters data in separate networks, competition between methanogens in the methanogenesis cluster was uncovered by a broader diversity of methanogens involved in the three methanogenesis pathways and larger interactions within and between communities in low compared to high emitters. Generally, our results suggest that differences in CH(4) are mainly explained by other microbial communities and their activities rather than being only methanogens-driven. Our study provides insight into the interactions of the rumen microbial communities and their genes by uncovering functional niches affecting CH(4), which will benefit the development of efficient CH(4) mitigation strategies.
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spelling pubmed-71813982020-05-01 Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine Martínez-Álvaro, Marina Auffret, Marc D. Stewart, Robert D. Dewhurst, Richard J. Duthie, Carol-Anne Rooke, John A. Wallace, R. John Shih, Barbara Freeman, Tom C. Watson, Mick Roehe, Rainer Front Microbiol Microbiology A network analysis including relative abundances of all ruminal microbial genera (archaea, bacteria, fungi, and protists) and their genes was performed to improve our understanding of how the interactions within the ruminal microbiome affects methane emissions (CH(4)). Metagenomics and CH(4) data were available from 63 bovines of a two-breed rotational cross, offered two basal diets. Co-abundance network analysis revealed 10 clusters of functional niches. The most abundant hydrogenotrophic Methanobacteriales with key microbial genes involved in methanogenesis occupied a different functional niche (i.e., “methanogenesis” cluster) than methylotrophic Methanomassiliicoccales (Candidatus Methanomethylophylus) and acetogens (Blautia). Fungi and protists clustered together and other plant fiber degraders like Fibrobacter occupied a seperate cluster. A Partial Least Squares analysis approach to predict CH(4) variation in each cluster showed the methanogenesis cluster had the best prediction ability (57.3%). However, the most important explanatory variables in this cluster were genes involved in complex carbohydrate degradation, metabolism of sugars and amino acids and Candidatus Azobacteroides carrying nitrogen fixation genes, but not methanogenic archaea and their genes. The cluster containing Fibrobacter, isolated from other microorganisms, was positively associated with CH(4) and explained 49.8% of its variability, showing fermentative advantages compared to other bacteria and fungi in providing substrates (e.g., formate) for methanogenesis. In other clusters, genes with enhancing effect on CH(4) were related to lactate and butyrate (Butyrivibrio and Pseudobutyrivibrio) production and simple amino acids metabolism. In comparison, ruminal genes negatively related to CH(4) were involved in carbohydrate degradation via lactate and succinate and synthesis of more complex amino acids by γ-Proteobacteria. When analyzing low- and high-methane emitters data in separate networks, competition between methanogens in the methanogenesis cluster was uncovered by a broader diversity of methanogens involved in the three methanogenesis pathways and larger interactions within and between communities in low compared to high emitters. Generally, our results suggest that differences in CH(4) are mainly explained by other microbial communities and their activities rather than being only methanogens-driven. Our study provides insight into the interactions of the rumen microbial communities and their genes by uncovering functional niches affecting CH(4), which will benefit the development of efficient CH(4) mitigation strategies. Frontiers Media S.A. 2020-04-17 /pmc/articles/PMC7181398/ /pubmed/32362882 http://dx.doi.org/10.3389/fmicb.2020.00659 Text en Copyright © 2020 Martínez-Álvaro, Auffret, Stewart, Dewhurst, Duthie, Rooke, Wallace, Shih, Freeman, Watson and Roehe. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Microbiology
Martínez-Álvaro, Marina
Auffret, Marc D.
Stewart, Robert D.
Dewhurst, Richard J.
Duthie, Carol-Anne
Rooke, John A.
Wallace, R. John
Shih, Barbara
Freeman, Tom C.
Watson, Mick
Roehe, Rainer
Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title_full Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title_fullStr Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title_full_unstemmed Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title_short Identification of Complex Rumen Microbiome Interaction Within Diverse Functional Niches as Mechanisms Affecting the Variation of Methane Emissions in Bovine
title_sort identification of complex rumen microbiome interaction within diverse functional niches as mechanisms affecting the variation of methane emissions in bovine
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7181398/
https://www.ncbi.nlm.nih.gov/pubmed/32362882
http://dx.doi.org/10.3389/fmicb.2020.00659
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