InteractiveComplexHeatmap
github.com/jokergoo/interactivecomplexheatmapThis package can easily make heatmaps which are produced by the ComplexHeatmap package into interactive applications. It provides two types of interactivities: 1. on the interactive graphics device, and 2. on a Shiny app. It also provides functions for integrating the interactive heatmap widgets for more complex Shiny app development.
Sourced from
- GitHub — github.com/jokergoo/interactivecomplexheatmap
- Bioconductor — InteractiveComplexHeatmap
Related resources
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