EnrichedHeatmap

github.com/jokergoo/enrichedheatmap
Active200updated 5 months ago
R
MIT

Enriched heatmap is a special type of heatmap which visualizes the enrichment of genomic signals on specific target regions. Here we implement enriched heatmap by ComplexHeatmap package. Since this type of heatmap is just a normal heatmap but with some special settings, with the functionality of ComplexHeatmap, it would be much easier to customize the heatmap as well as concatenating to a list of heatmaps to show correspondance between different data sources.

Sourced from

  • GitHubgithub.com/jokergoo/enrichedheatmap
  • BioconductorEnrichedHeatmap

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