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Clipper: p-value-free FDR control on high-throughput data from two conditions

Xinzhou Ge, Yiling Elaine Chen, Dongyuan Song, MeiLu McDermott, Kyla Woyshner, Antigoni Manousopoulou, Ning Wang, Wei Li, Leo D. Wang, Jingyi Jessica Li

2021Genome biology54 citationsDOIOpen Access PDF

Abstract

High-throughput biological data analysis commonly involves identifying features such as genes, genomic regions, and proteins, whose values differ between two conditions, from numerous features measured simultaneously. The most widely used criterion to ensure the analysis reliability is the false discovery rate (FDR), which is primarily controlled based on p-values. However, obtaining valid p-values relies on either reasonable assumptions of data distribution or large numbers of replicates under both conditions. Clipper is a general statistical framework for FDR control without relying on p-values or specific data distributions. Clipper outperforms existing methods for a broad range of applications in high-throughput data analysis.

Topics & Concepts

Clipper (electronics)BiologyThroughputHuman geneticsValue (mathematics)Computational biologyGeneticsStatisticsComputer scienceMathematicsGeneOperating systemEngineeringWirelessMechanical engineeringCardiovascular Function and Risk FactorsModel Reduction and Neural NetworksAdvanced Data Storage Technologies