deconvR

github.com/bimsbbioinfo/deconvr
Idle10updated 11 months ago
R
Artistic-2.0

This package provides a collection of functions designed for analyzing deconvolution of the bulk sample(s) using an atlas of reference omic signature profiles and a user-selected model. Users are given the option to create or extend a reference atlas and,also simulate the desired size of the bulk signature profile of the reference cell types.The package includes the cell-type-specific methylation atlas and, Illumina Epic B5 probe ids that can be used in deconvolution. Additionally,we included BSmeth2Probe, to make mapping WGBS data to their probe IDs easier.

Sourced from

  • GitHubgithub.com/bimsbbioinfo/deconvr
  • BioconductordeconvR

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