M3Drop

github.com/tallulandrews/m3drop
Stale33updated 2 years ago
R
GPL-2.0+

This package fits a model to the pattern of dropouts in single-cell RNASeq data. This model is used as a null to identify significantly variable (i.e. differentially expressed) genes for use in downstream analysis, such as clustering cells. Also includes an method for calculating exact Pearson residuals in UMI-tagged data using a library-size aware negative binomial model.

Sourced from

  • BioconductorM3Drop
  • GitHubgithub.com/tallulandrews/m3drop

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