Litcius/Paper detail

A Framework for Effective Application of Machine Learning to Microbiome-Based Classification Problems

Begüm D. Topçuoğlu, Nicholas A. Lesniak, Mack T. Ruffin, Jenna Wiens, Patrick D. Schloss

2020mBio257 citationsDOIOpen Access PDF

Abstract

Diagnosing diseases using machine learning (ML) is rapidly being adopted in microbiome studies. However, the estimated performance associated with these models is likely overoptimistic. Moreover, there is a trend toward using black box models without a discussion of the difficulty of interpreting such models when trying to identify microbial biomarkers of disease. This work represents a step toward developing more-reproducible ML practices in applying ML to microbiome research. We implement a rigorous pipeline and emphasize the importance of selecting ML models that reflect the goal of the study. These concepts are not particular to the study of human health but can also be applied to environmental microbiology studies.

Topics & Concepts

MicrobiomeComputer sciencePipeline (software)Black boxMachine learningData scienceArtificial intelligenceHuman microbiomeHuman Microbiome ProjectHuman healthHuman diseaseDiseaseBioinformaticsMedicineBiologyPathologyProgramming languageEnvironmental healthGene expression and cancer classificationAI in cancer detectionCell Image Analysis Techniques