scDblFinder
github.com/plger/scdblfinderThe scDblFinder package gathers various methods for the detection and handling of doublets/multiplets in single-cell sequencing data (i.e. multiple cells captured within the same droplet or reaction volume). It includes methods formerly found in the scran package, the new fast and comprehensive scDblFinder method, and a reimplementation of the Amulet detection method for single-cell ATAC-seq.
Sourced from
- Bioconductor — scDblFinder
- GitHub — github.com/plger/scdblfinder
Related resources
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