An integrated gene catalog and over 10,000 metagenome-assembled genomes from the gastrointestinal microbiome of ruminants

Fei Xie(Nanjing Agricultural University), Wei Jin(Nanjing Agricultural University), Huazhe Si(Jilin Agricultural University), Yuan Yuan(Northwestern Polytechnical University), Ye Tao, Junhua Liu(Nanjing Agricultural University), Xiaoxu Wang(Chinese Academy of Agricultural Sciences), Chengjian Yang(Guangxi Buffalo Research Institute), Qiushuang Li(Chinese Academy of Sciences), Xiaoting Yan(Northwestern Polytechnical University), Limei Lin(Nanjing Agricultural University), Qian Jiang(Nanjing Agricultural University), Lei Zhang(Nanjing Agricultural University), Changzheng Guo(Nanjing Agricultural University), Chris Greening(Australian Regenerative Medicine Institute), Rasmus Heller(University of Copenhagen), Le Luo Guan(University of Alberta), Phillip B. Pope(Norwegian University of Life Sciences), Zhiliang Tan(Chinese Academy of Sciences), Weiyun Zhu(Nanjing Agricultural University), Min Wang(Chinese Academy of Sciences), Qiang Qiu(Northwestern Polytechnical University), Zhipeng Li(Chinese Academy of Agricultural Sciences), Shengyong Mao(Nanjing Agricultural University)
Microbiome
June 12, 2021
Cited by 325Open Access
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Abstract

BACKGROUND: Gastrointestinal tract (GIT) microbiomes in ruminants play major roles in host health and thus animal production. However, we lack an integrated understanding of microbial community structure and function as prior studies. are predominantly biased towards the rumen. Therefore, to acquire a microbiota inventory of the discrete GIT compartments, In this study, we used shotgun metagenomics to profile the microbiota of 370 samples that represent 10 GIT regions of seven ruminant species. RESULTS: Our analyses reconstructed a GIT microbial reference catalog with > 154 million nonredundant genes and identified 8745 uncultured candidate species from over 10,000 metagenome-assembled genomes. The integrated gene catalog across the GIT regions demonstrates spatial associations between the microbiome and physiological adaptations, and 8745 newly characterized genomes substantially expand the genomic landscape of ruminant microbiota, particularly those from the lower gut. This substantially expands the previously known set of endogenous microbial diversity and the taxonomic classification rate of the GIT microbiome. These candidate species encode hundreds of enzymes and novel biosynthetic gene clusters that improve our understanding concerning methane production and feed efficiency in ruminants. Overall, this study expands the characterization of the ruminant GIT microbiota at unprecedented spatial resolution and offers clues for improving ruminant livestock production in the future. CONCLUSIONS: Having access to a comprehensive gene catalog and collections of microbial genomes provides the ability to perform efficiently genome-based analysis to achieve a detailed classification of GIT microbial ecosystem composition. Our study will bring unprecedented power in future association studies to investigate the impact of the GIT microbiota in ruminant health and production. Video abstract.


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