Strains, functions and dynamics in the expanded Human Microbiome Project

Jason Lloyd‐Price(Broad Institute), Anup Mahurkar(University of Maryland, Baltimore), Ali Rahnavard(Broad Institute), Jonathan Crabtree(University of Maryland, Baltimore), Joshua Orvis(University of Maryland, Baltimore), A. Brantley Hall(Broad Institute), Arthur Brady(University of Maryland, Baltimore), Heather H. Creasy(University of Maryland, Baltimore), Carrie McCracken(University of Maryland, Baltimore), Michelle Giglio(University of Maryland, Baltimore), Daniel McDonald(University of California San Diego), Eric A. Franzosa(Broad Institute), Rob Knight(University of California San Diego), Owen White(University of Maryland, Baltimore), Curtis Huttenhower(Broad Institute)
Nature
September 19, 2017
Cited by 1,356Open Access
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Abstract

The characterization of baseline microbial and functional diversity in the human microbiome has enabled studies of microbiome-related disease, diversity, biogeography, and molecular function. The National Institutes of Health Human Microbiome Project has provided one of the broadest such characterizations so far. Here we introduce a second wave of data from the study, comprising 1,631 new metagenomes (2,355 total) targeting diverse body sites with multiple time points in 265 individuals. We applied updated profiling and assembly methods to provide new characterizations of microbiome personalization. Strain identification revealed subspecies clades specific to body sites; it also quantified species with phylogenetic diversity under-represented in isolate genomes. Body-wide functional profiling classified pathways into universal, human-enriched, and body site-enriched subsets. Finally, temporal analysis decomposed microbial variation into rapidly variable, moderately variable, and stable subsets. This study furthers our knowledge of baseline human microbial diversity and enables an understanding of personalized microbiome function and dynamics.


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