Download the latest updates from https://github.com/z0on/GO_MWU

This project is about gene expression analysis.

In contrast to most other "GO enrichment analysis" methods, this one does not look for GO categories enriched within a list of "significant" genes. Instead, it uses a rank-based test to measure how much each GO category is enriched with either up or down-regulated genes. The significant GO categories are clustered based on the number of genes shared between them and the results are represented in the form of a colored dendrogram (see screenshot).

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Registered

2014-10-13