CellRank
github.com/scverse/cellrankProbabilistic framework for inferring cell fate decisions and trajectory dynamics from multi-view single-cell data using Markov chains and machine learning, integrating RNA velocity, pseudotime, and metabolic labeling to predict differentiation paths and terminal states (scverse/Theis Lab, 449+ stars, BSD 3-Clause)
Sourced from
- Awesome AI for Science — github.com/scverse/cellrank
- GitHub — github.com/scverse/cellrank
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