Individuality and temporal stability of the human gut microbiome

基因组 生物 微生物群 背景(考古学) 系统发育树 单核苷酸多态性 遗传学 基因型 人口 人体微生物群 人类微生物组计划 进化生物学 计算生物学 基因 古生物学 人口学 社会学
作者
Shinichi Sunagawa,Siegfried Schloissnig,Manimozhiyan Arumugam,Sofia K. Forslund,Makedonka Mitreva,Julien Tap,Ana Zhu,Alison S. Waller,Daniel R. Mende,Jens Roat Kultima,John C. Martin,Karthik Kota,Shamil Sunyaev,Athanasios Typas,George M. Weinstock,Peer Bork
出处
期刊:Central Asian Journal of Global Health [University Library System, University of Pittsburgh]
卷期号:2 被引量:7
标识
DOI:10.5195/cajgh.2013.120
摘要

The breakthrough of next generation sequencing-technologies has enabled large-scale studies of natural microbial communities and the 16S rRNA genes have been widely used as a phylogenetic marker to study community structure. However, major limitations of this approach are that neither strain-level resolution nor genomic context of microorganisms can be provided. This information, however, is crucial to answer fundamental questions about the temporal stability and distinctiveness of natural microbial communities.We developed a methodological framework for metagenomic single nucleotide polymorphism (SNP) variation analysis and applied it to publicly available data from 252 human fecal samples from 207 European and North American individuals. We further analyzed samples from 43 healthy subjects that were sampled at least twice over time intervals of up to one year and measured population similarities of dominant gut species.We detected 10.3 million SNPs in 101 species, which nearly amounts to the number identified in more than 1,000 humans.The most striking result was that host-specific strains appear to be retained over long time periods. This indicates that individual-specific strains are not easily exchanged with the environment and furthermore, that an individuals appear to have a unique metagenomic genotype. This, in turn, is linked to implications for human gut physiology, such as the stability of antibiotic resistance potential.

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