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A Guide to Enterotypes across the Human Body: Meta-Analysis of Microbial Community Structures in Human Microbiome Datasets

机译:整个人体肠型的指南:人类微生物组数据集中微生物群落结构的荟萃分析

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摘要

Recent analyses of human-associated bacterial diversity have categorized individuals into ‘enterotypes’ or clusters based on the abundances of key bacterial genera in the gut microbiota. There is a lack of consensus, however, on the analytical basis for enterotypes and on the interpretation of these results. We tested how the following factors influenced the detection of enterotypes: clustering methodology, distance metrics, OTU-picking approaches, sequencing depth, data type (whole genome shotgun (WGS) vs.16S rRNA gene sequence data), and 16S rRNA region. We included 16S rRNA gene sequences from the Human Microbiome Project (HMP) and from 16 additional studies and WGS sequences from the HMP and MetaHIT. In most body sites, we observed smooth abundance gradients of key genera without discrete clustering of samples. Some body habitats displayed bimodal (e.g., gut) or multimodal (e.g., vagina) distributions of sample abundances, but not all clustering methods and workflows accurately highlight such clusters. Because identifying enterotypes in datasets depends not only on the structure of the data but is also sensitive to the methods applied to identifying clustering strength, we recommend that multiple approaches be used and compared when testing for enterotypes.
机译:最近对人类相关细菌多样性的分析已根据肠道菌群中关键细菌属的丰度将个体分类为“个体型”或簇。然而,就肠分型的分析基础和对这些结果的解释缺乏共识。我们测试了以下因素如何影响肠型的检测:聚类方法,距离度量,OTU挑选方法,测序深度,数据类型(全基因组shot弹枪(WGS)与16S rRNA基因序列数据)和16S rRNA区域。我们纳入了人类微生物组计划(HMP)和其他16项研究的16S rRNA基因序列,以及HMP和MetaHIT的WGS序列。在大多数身体部位,我们观察到关键属的平滑丰度梯度,而没有离散的样本聚类。一些身体栖息地显示出样品丰度的双峰分布(例如肠道)或多峰分布(例如阴道),但并非所有聚类方法和工作流程都能准确地突出显示此类聚类。由于在数据集中识别肠型不仅取决于数据的结构,而且对识别聚类强度的方法很敏感,因此我们建议在测试肠型时使用多种方法并进行比较。

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