EpiDISH
github.com/sjczheng/epidishEpiDISH is a R package to infer the proportions of a priori known cell-types present in a sample representing a mixture of such cell-types. Right now, the package can be used on DNAm data of blood-tissue of any age, from birth to old-age, generic epithelial tissue and breast tissue. Besides, the package provides a function that allows the identification of differentially methylated cell-types and their directionality of change in Epigenome-Wide Association Studies.
Sourced from
- Bioconductor — EpiDISH
- GitHub — github.com/sjczheng/epidish
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