scDD

ImmunoOncology
Stale35updated 4 years ago
R

This package implements a method to analyze single-cell RNA- seq Data utilizing flexible Dirichlet Process mixture models. Genes with differential distributions of expression are classified into several interesting patterns of differences between two conditions. The package also includes functions for simulating data with these patterns from negative binomial distributions.

README

scDD: An R package to identify differentially distributed genes in scRNA-seq Installation The Bioconductor landing page is https://bioconductor.org/packages/scDD. To install, make sure you have the current version of Bioconductor, and use the following commands: Quick Start For examples and tips on using the package, please see the vignette PDF here which you can alternatively bring up by typing after installing and loading the package into R. Getting Help Please send bug reports and feature…

Source attribution

  • GitHubgithub.com/kdkorthauer/scdd
  • BioconductorscDD

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