Litcius/Paper detail

Benchmarking differential abundance analysis methods for correlated microbiome sequencing data

Lu Yang, Jun Chen

2022Briefings in Bioinformatics41 citationsDOIOpen Access PDF

Abstract

Differential abundance analysis (DAA) is one central statistical task in microbiome data analysis. A robust and powerful DAA tool can help identify highly confident microbial candidates for further biological validation. Current microbiome studies frequently generate correlated samples from different microbiome sampling schemes such as spatial and temporal sampling. In the past decade, a number of DAA tools for correlated microbiome data (DAA-c) have been proposed. Disturbingly, different DAA-c tools could sometimes produce quite discordant results. To recommend the best practice to the field, we performed the first comprehensive evaluation of existing DAA-c tools using real data-based simulations. Overall, the linear model-based methods LinDA, MaAsLin2 and LDM are more robust than methods based on generalized linear models. The LinDA method is the only method that maintains reasonable performance in the presence of strong compositional effects.

Topics & Concepts

BenchmarkingMicrobiomeComputational biologyAbundance (ecology)Differential (mechanical device)Computer scienceDNA sequencingData miningData scienceBiologyBioinformaticsGeneticsEcologyDNAEngineeringMarketingAerospace engineeringBusinessGut microbiota and healthGenetic Associations and EpidemiologyGene expression and cancer classification