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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

2021Genome biology278 citationsDOIOpen Access PDF

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 .

Topics & Concepts

MetagenomicsToolboxMicrobiomeBiologyComputational biologyGeneralizationMachine learningHuman Microbiome ProjectSet (abstract data type)Artificial intelligenceSoftwareComputer scienceHuman microbiomeBioinformaticsData scienceGeneticsGeneMathematicsProgramming languageMathematical analysisGut microbiota and healthMetabolomics and Mass Spectrometry StudiesColorectal Cancer Screening and Detection
Microbiome meta-analysis and cross-disease comparison enabled by the SIAMCAT machine learning toolbox | Litcius