人病毒体
生物
病毒学
细小病毒科
病毒
胃肠道
动物
基因组
病毒性疾病
遗传学
基因
生物化学
作者
Andrey N. Shkoporov,Stephen R. Stockdale,Aonghus Lavelle,Ivanela Kondova,Cara M. Hueston,Aditya Upadrasta,Ekaterina V. Khokhlova,Imme van der Kamp,Boudewijn Ouwerling,Lorraine A. Draper,Jan A. M. Langermans,R. Paul Ross,Colin Hill
出处
期刊:Nature microbiology
日期:2022-08-02
卷期号:7 (8): 1301-1311
被引量:35
标识
DOI:10.1038/s41564-022-01178-w
摘要
The mammalian virome has been linked to health and disease but our understanding of how it is structured along the longitudinal axis of the mammalian gastrointestinal tract (GIT) and other organs is limited. Here, we report a metagenomic analysis of the prokaryotic and eukaryotic virome occupying luminal and mucosa-associated habitats along the GIT, as well as parenchymal organs (liver, lung and spleen), in two representative mammalian species, the domestic pig and rhesus macaque (six animals per species). Luminal samples from the large intestine of both mammals harboured the highest loads and diversity of bacteriophages (class Caudoviricetes, family Microviridae and others). Mucosal samples contained much lower viral loads but a higher proportion of eukaryotic viruses (families Astroviridae, Caliciviridae, Parvoviridae). Parenchymal organs contained bacteriophages of gut origin, in addition to some eukaryotic viruses. Overall, GIT virome composition was specific to anatomical region and host species. Upper GIT and mucosa-specific viruses were greatly under-represented in distal colon samples (a proxy for faeces). Nonetheless, certain viral and phage species were ubiquitous in all samples from the oral cavity to the distal colon. The dataset and its accompanying methodology may provide an important resource for future work investigating the biogeography of the mammalian gut virome. Metagenomic analysis of the gut virome along the mammalian gastrointestinal tract of two mammalian species reveals the biogeography of bacteriophage, including region- and species-specific variations in virome composition.
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