RankMap

github.com/jinming-cheng/rankmap
Active2updated 2 months ago
R
GPL-3.0+

RankMap is a fast and scalable tool for reference-based cell type annotation of single-cell and spatial transcriptomics data. It uses ranked gene expression and multinomial regression to achieve robust predictions, even with partial gene coverage. Compatible with Seurat, SingleCellExperiment, and SpatialExperiment objects, RankMap offers flexible preprocessing and significantly faster runtime than tools like SingleR, Azimuth, and RCTD.

Sourced from

  • BioconductorRankMap
  • GitHubgithub.com/jinming-cheng/rankmap

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