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It takes guts to learn: machine learning techniques for disease detection from the gut microbiome

Kristen D. Curry, Michael G. Nute, Todd J. Treangen

2021Emerging Topics in Life Sciences29 citationsDOIOpen Access PDF

Abstract

Associations between the human gut microbiome and expression of host illness have been noted in a variety of conditions ranging from gastrointestinal dysfunctions to neurological deficits. Machine learning (ML) methods have generated promising results for disease prediction from gut metagenomic information for diseases including liver cirrhosis and irritable bowel disease, but have lacked efficacy when predicting other illnesses. Here, we review current ML methods designed for disease classification from microbiome data. We highlight the computational challenges these methods have effectively overcome and discuss the biological components that have been overlooked to offer perspectives on future work in this area.

Topics & Concepts

MetagenomicsMicrobiomeDiseaseMachine learningGut microbiomeArtificial intelligenceIrritable bowel syndromeComputational biologyBioinformaticsBiologyVariety (cybernetics)Gut floraInflammatory bowel diseaseMedicineComputer scienceHuman diseaseHuman microbiomeHost (biology)CirrhosisClinical PracticeGastrointestinal diseaseGut bacteriaLiver diseaseBiomarkerComputational modelGut microbiota and healthMachine Learning in BioinformaticsNutritional Studies and Diet
It takes guts to learn: machine learning techniques for disease detection from the gut microbiome | Litcius