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Discrete False-Discovery Rate Improves Identification of Differentially Abundant Microbes
Author(s) -
Lingjing Jiang,
Am Amir,
James T. Morton,
Ruth Heller,
Ery Arias-Castro,
Rob Knight
Publication year - 2017
Publication title -
msystems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.931
H-Index - 39
ISSN - 2379-5077
DOI - 10.1128/msystems.00092-17
Subject(s) - false discovery rate , microbiome , multiple comparisons problem , identification (biology) , computer science , computational biology , data mining , statistical hypothesis testing , statistical power , statistics , biology , pattern recognition (psychology) , artificial intelligence , mathematics , bioinformatics , gene , genetics , botany
Differential abundance testing is a critical task in microbiome studies that is complicated by the sparsity of data matrices. Here we adapt for microbiome studies a solution from the field of gene expression analysis to produce a new method, discrete false-discovery rate (DS-FDR), that greatly improves the power to detect differential taxa by exploiting the discreteness of the data. Additionally, DS-FDR is relatively robust to the number of noninformative features, and thus removes the problem of filtering taxonomy tables by an arbitrary abundance threshold. We show by using a combination of simulations and reanalysis of nine real-world microbiome data sets that this new method outperforms existing methods at the differential abundance testing task, producing a false-discovery rate that is up to threefold more accurate, and halves the number of samples required to find a given difference (thus increasing the efficiency of microbiome experiments considerably). We therefore expect DS-FDR to be widely applied in microbiome studies. IMPORTANCE DS-FDR can achieve higher statistical power to detect significant findings in sparse and noisy microbiome data compared to the commonly used Benjamini-Hochberg procedure and other FDR-controlling procedures.

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