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mbImpute: an accurate and robust imputation method for microbiome data

Ruochen Jiang, Wei Vivian Li, Jingyi Jessica Li

2021Genome biology75 citationsDOIOpen Access PDF

Abstract

A critical challenge in microbiome data analysis is the existence of many non-biological zeros, which distort taxon abundance distributions, complicate data analysis, and jeopardize the reliability of scientific discoveries. To address this issue, we propose the first imputation method for microbiome data-mbImpute-to identify and recover likely non-biological zeros by borrowing information jointly from similar samples, similar taxa, and optional metadata including sample covariates and taxon phylogeny. We demonstrate that mbImpute improves the power of identifying disease-related taxa from microbiome data of type 2 diabetes and colorectal cancer, and mbImpute preserves non-zero distributions of taxa abundances.

Topics & Concepts

BiologyMicrobiomeTaxonImputation (statistics)Computational biologyMetadataCovariateBiological dataEvolutionary biologyBioinformaticsMissing dataComputer scienceEcologyMachine learningOperating systemGut microbiota and healthMetabolomics and Mass Spectrometry StudiesColorectal Cancer Screening and Detection
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