BulkSignalR
github.com/jcolinge/bulksignalrInference of ligand-receptor (LR) interactions from bulk expression (transcriptomics/proteomics) data, or spatial transcriptomics. BulkSignalR bases its inferences on the LRdb database included in our other package, SingleCellSignalR available from Bioconductor. It relies on a statistical model that is specific to bulk data sets. Different visualization and data summary functions are proposed to help navigating prediction results.
Sourced from
- Bioconductor — BulkSignalR
- GitHub — github.com/jcolinge/bulksignalr
Related resources
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