Journal article
PLSKO: A robust knockoff generator to control false discovery rate in omics variable selection
G Yang, E Menkhorst, E Dimitriadis, KA Lê Cao
Bioinformatics | Oxford University Press | Published : 2025
Abstract
Motivation Integrating the knockoff framework with any variable-selection method delivers stringent false discovery rate (FDR) control without recourse to p-values, offering a powerful alternative for differential expression analysis of high-throughput omics datasets. However, existing knockoff generators rely on restrictive modelling assumptions or coarse approximations that often inflate the FDR when applied to real-world data. Results We introduce Partial Least Squares Knockoff (PLSKO), an efficient, assumption-free generator that remains robust across diverse omics platforms. Our extensive simulations show that PLSKO is the only method to maintain FDR control with sufficient power in com..
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