atacInferCnv
The package prepares input scATAC-seq data and adapts for copy number variance profiling with InferCNV package usage. It has also various paramters to control the analysis (e.g. external normal reference usage, meta-cells, bin size, etc) and custom plot visualizations.
- Repository
- github.com/kokonech/atacinfercnv
Source attribution
- Bioconductor — atacInferCnv
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