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Exploring the functional composition of the human microbiome using a hand-curated microbial trait database

Version 2 2022-08-23, 07:28
Version 1 2021-06-08, 03:28
Posted on 2022-08-23 - 07:28
Abstract Background Even when microbial communities vary wildly in their taxonomic composition, their functional composition is often surprisingly stable. This suggests that a functional perspective could provide much deeper insight into the principles governing microbiome assembly. Much work to date analyzing the functional composition of microbial communities, however, relies heavily on inference from genomic features. Unfortunately, output from these methods can be hard to interpret and often suffers from relatively high error rates. Results We built and analyzed a domain-specific microbial trait database from known microbe-trait pairs recorded in the literature to better understand the functional composition of the human microbiome. Using a combination of phylogentically conscious machine learning tools and a network science approach, we were able to link particular traits to areas of the human body, discover traits that determine the range of body areas a microbe can inhabit, and uncover drivers of metabolic breadth. Conclusions Domain-specific trait databases are an effective compromise between noisy methods to infer complex traits from genomic data and exhaustive, expensive attempts at database curation from the literature that do not focus on any one subset of taxa. They provide an accurate account of microbial traits and, by limiting the number of taxa considered, are feasible to build within a reasonable time-frame. We present a database specific for the human microbiome, in the hopes that this will prove useful for research into the functional composition of human-associated microbial communities.

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BMC Bioinformatics

AUTHORS (16)

  • J L Weissman
    Sonia Dogra
    Keyan Javadi
    Samantha Bolten
    Rachel Flint
    Cyrus Davati
    Jess Beattie
    Keshav Dixit
    Tejasvi Peesay
    Shehar Awan
    Peter Thielen
    Florian Breitwieser
    Philip L. F. Johnson
    David Karig
    William F. Fagan
    Sharon Bewick
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