aggregateBioVar

github.com/jasonratcliff/aggregatebiovar
Stale5updated 5 years ago
R
GPL-3.0

For single cell RNA-seq data collected from more than one subject (e.g. biological sample or technical replicates), this package contains tools to summarize single cell gene expression profiles at the level of subject. A SingleCellExperiment object is taken as input and converted to a list of SummarizedExperiment objects, where each list element corresponds to an assigned cell type. The SummarizedExperiment objects contain aggregate gene-by-subject count matrices and inter-subject column metadata for individual subjects that can be processed using downstream bulk RNA-seq tools.

Sourced from

  • GitHubgithub.com/jasonratcliff/aggregatebiovar
  • BioconductoraggregateBioVar

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