demuxmix
A package for demultiplexing single-cell sequencing experiments of pooled cells labeled with barcode oligonucleotides. The package implements methods to fit regression mixture models for a probabilistic classification of cells, including multiplet detection. Demultiplexing error rates can be estimated, and methods for quality control are provided.
README
demuxmix demuxmix is a package for demultiplexing single-cell sequencing experiments of pooled cells labeled with barcode oligonucleotides. The package implements methods to fit regression mixture models for a probabilistic classification of cells, including multiplet detection. Demultiplexing error rates can be estimated, and methods for quality control are provided. Installation The package is available at Bioconductor and can be installed via BiocManager::install: The package only needs to…
- Repository
- github.com/huklein/demuxmix
Source attribution
- Bioconductor — demuxmix
- GitHub — github.com/huklein/demuxmix
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