Heatplus
Display a rectangular heatmap (intensity plot) of a data matrix. By default, both samples (columns) and features (row) of the matrix are sorted according to a hierarchical clustering, and the corresponding dendrogram is plotted. Optionally, panels with additional information about samples and features can be added to the plot.
- Repository
- github.com/alexploner/heatplus
Source attribution
- Bioconductor — Heatplus
Related resources
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