iSEEhex
github.com/isee/iseehexThis package provides panels summarising data points in hexagonal bins for `iSEE`. It is part of `iSEEu`, the iSEE universe of panels that extend the `iSEE` package.
Sourced from
- Bioconductor — iSEEhex
- GitHub — github.com/isee/iseehex
Related resources
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