dandelionR
github.com/tuonglab/dandelionrdandelionR is an R package for performing single-cell immune repertoire trajectory analysis, based on the original python implementation. It provides the necessary functions to interface with scRepertoire and a custom implementation of an absorbing Markov chain for pseudotime inference, inspired by the Palantir Python package.
Sourced from
- Bioconductor — dandelionR
- GitHub — github.com/tuonglab/dandelionr
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