ClusterJudge

Software

ClusterJudge implements the functions, examples and other software published as an algorithm by Gibbons, FD and Roth FP. The article is called "Judging the Quality of Gene Expression-Based Clustering Methods Using Gene Annotation" and it appeared in Genome Research, vol. 12, pp1574-1581 (2002). See package?ClusterJudge for an overview.

Source attribution

  • BioconductorClusterJudge

Related resources

This package provide a method for doing gene set analysis based on multiple omics data.

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