ComplexHeatmap

github.com/jokergoo/complexheatmap
Active1.5Kupdated 3 months ago
R
MIT

Complex heatmaps are efficient to visualize associations between different sources of data sets and reveal potential patterns. Here the ComplexHeatmap package provides a highly flexible way to arrange multiple heatmaps and supports various annotation graphics.

Sourced from

  • BioconductorComplexHeatmap
  • GitHubgithub.com/jokergoo/complexheatmap

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