Gene set bagging for estimating the probability a statistically significant result will replicate. Author Andrew Jaffe, John Storey, Hongkai Ji, Jeffrey Leek Publication Year 2013 Type Journal Article Abstract BACKGROUND: Significance analysis plays a major role in identifying and ranking genes, transcription factor binding sites, DNA methylation regions, and other high-throughput features associated with illness. We propose a new approach, called gene set bagging, for measuring the probability that a gene set replicates in future studies. Gene set bagging involves resampling the original high-throughput data, performing gene-set analysis on the resampled data, and confirming that biological categories replicate in the bagged samples. RESULTS: Using both simulated and publicly-available genomics data, we demonstrate that significant categories in a gene set enrichment analysis may be unstable when subjected to resampling. We show our method estimates the replication probability (R), the probability that a gene set will replicate as a significant result in future studies, and show in simulations that this method reflects replication better than each set's p-value. CONCLUSIONS: Our results suggest that gene lists based on p-values are not necessarily stable, and therefore additional steps like gene set bagging may improve biological inference on gene sets. Journal BMC bioinformatics Volume 14 Pages 360 Date Published 12/2013 ISSN Number 1471-2105 DOI 10.1186/1471-2105-14-360 Alternate Journal BMC Bioinformatics PMCID PMC3890500 PMID 24330332 PubMedPubMed CentralGoogle ScholarBibTeXEndNote X3 XML