decemedip

github.com/nshen7/decemedip
Active4updated 3 months ago
R
MIT

The R package decemedip is a novel computational paradigm developed for inferring the relative abundances of cell types and tissues measure by methylated DNA immunoprecipitation sequencing (MeDIP-Seq). This paradigm allows using reference data from other technologies such as microarray or WGBS.

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  • GitHubgithub.com/nshen7/decemedip
  • Bioconductordecemedip

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