Genome Biology (Mar 2021)

Microbiome meta-analysis and cross-disease comparison enabled by the SIAMCAT machine learning toolbox

  • Jakob Wirbel,
  • Konrad Zych,
  • Morgan Essex,
  • Nicolai Karcher,
  • Ece Kartal,
  • Guillem Salazar,
  • Peer Bork,
  • Shinichi Sunagawa,
  • Georg Zeller

DOI
https://doi.org/10.1186/s13059-021-02306-1
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 27

Abstract

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Abstract The human microbiome is increasingly mined for diagnostic and therapeutic biomarkers using machine learning (ML). However, metagenomics-specific software is scarce, and overoptimistic evaluation and limited cross-study generalization are prevailing issues. To address these, we developed SIAMCAT, a versatile R toolbox for ML-based comparative metagenomics. We demonstrate its capabilities in a meta-analysis of fecal metagenomic studies (10,803 samples). When naively transferred across studies, ML models lost accuracy and disease specificity, which could however be resolved by a novel training set augmentation strategy. This reveals some biomarkers to be disease-specific, with others shared across multiple conditions. SIAMCAT is freely available from siamcat.embl.de .

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