2016
DOI: 10.1186/s12859-016-1299-8
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Unsupervised gene set testing based on random matrix theory

Abstract: BackgroundGene set testing, or pathway analysis, is a bioinformatics technique that performs statistical testing on biologically meaningful sets of genomic variables. Although originally developed for supervised analyses, i.e., to test the association between gene sets and an outcome variable, gene set testing also has important unsupervised applications, e.g., p-value weighting. For unsupervised testing, however, few effective gene set testing methods are available with support especially poor for several bio… Show more

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“…REVIGO [35] was proposed as a Web server to summarize the long unintelligible lists returned by statistical testing for enriched gene functional categories. Furthermore, in 2016, the first two unsupervised rankings for gene sets based on hypothesis testing appeared in Frost et al [36].…”
Section: Plos Onementioning
confidence: 99%
“…REVIGO [35] was proposed as a Web server to summarize the long unintelligible lists returned by statistical testing for enriched gene functional categories. Furthermore, in 2016, the first two unsupervised rankings for gene sets based on hypothesis testing appeared in Frost et al [36].…”
Section: Plos Onementioning
confidence: 99%