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Identification of rumen microbial biomarkers linked to methane emission in Holstein dairy cows.

Authors :
Ramayo‐Caldas, Yuliaxis
Zingaretti, Laura
Popova, Milka
Estellé, Jordi
Bernard, Aurelien
Pons, Nicolas
Bellot, Pau
Mach, Núria
Rau, Andrea
Roume, Hugo
Perez‐Enciso, Miguel
Faverdin, Philippe
Edouard, Nadège
Ehrlich, Dusko
Morgavi, Diego P.
Renand, Gilles
Source :
Journal of Animal Breeding & Genetics; Jan2020, Vol. 137 Issue 1, p49-59, 11p
Publication Year :
2020

Abstract

Mitigation of greenhouse gas emissions is relevant for reducing the environmental impact of ruminant production. In this study, the rumen microbiome from Holstein cows was characterized through a combination of 16S rRNA gene and shotgun metagenomic sequencing. Methane production (CH4) and dry matter intake (DMI) were individually measured over 4–6 weeks to calculate the CH4 yield (CH4y = CH4/DMI) per cow. We implemented a combination of clustering, multivariate and mixed model analyses to identify a set of operational taxonomic unit (OTU) jointly associated with CH4y and the structure of ruminal microbial communities. Three ruminotype clusters (R1, R2 and R3) were identified, and R2 was associated with higher CH4y. The taxonomic composition on R2 had lower abundance of Succinivibrionaceae and Methanosphaera, and higher abundance of Ruminococcaceae, Christensenellaceae and Lachnospiraceae. Metagenomic data confirmed the lower abundance of Succinivibrionaceae and Methanosphaera in R2 and identified genera (Fibrobacter and unclassified Bacteroidales) not highlighted by metataxonomic analysis. In addition, the functional metagenomic analysis revealed that samples classified in cluster R2 were overrepresented by genes coding for KEGG modules associated with methanogenesis, including a significant relative abundance of the methyl‐coenzyme M reductase enzyme. Based on the cluster assignment, we applied a sparse partial least‐squares discriminant analysis at the taxonomic and functional levels. In addition, we implemented a sPLS regression model using the phenotypic variation of CH4y. By combining these two approaches, we identified 86 discriminant bacterial OTUs, notably including families linked to CH4 emission such as Succinivibrionaceae, Ruminococcaceae, Christensenellaceae, Lachnospiraceae and Rikenellaceae. These selected OTUs explained 24% of the CH4y phenotypic variance, whereas the host genome contribution was ~14%. In summary, we identified rumen microbial biomarkers associated with the methane production of dairy cows; these biomarkers could be used for targeted methane‐reduction selection programmes in the dairy cattle industry provided they are heritable. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09312668
Volume :
137
Issue :
1
Database :
Complementary Index
Journal :
Journal of Animal Breeding & Genetics
Publication Type :
Academic Journal
Accession number :
141076582
Full Text :
https://doi.org/10.1111/jbg.12427