EnrichmentBrowser

https://bioconductor.org/packages/EnrichmentBrowser

The EnrichmentBrowser package implements essential functionality for the enrichment analysis of gene expression data. The analysis combines the advantages of set-based and network-based enrichment analysis in order to derive high-confidence gene sets and biological pathways that are differentially regulated in the expression data under investigation. Besides, the package facilitates the visualization and exploration of such sets and pathways.

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  • BioconductorEnrichmentBrowser

Related resources

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