countsimQC
countsimQC provides functionality to create a comprehensive report comparing a broad range of characteristics across a collection of count matrices. One important use case is the comparison of one or more synthetic count matrices to a real count matrix, possibly the one underlying the simulations. However, any collection of count matrices can be compared.
- Repository
- github.com/csoneson/countsimqc
Source attribution
- Bioconductor — countsimQC
Related resources
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