Researchers introduced
CellRank, a computational framework designed to map
cellular development and
regeneration trajectories using single-cell data. The methodology utilizes
Markov chains and
Schur decomposition to identify initial and terminal states while calculating the probability of a cell reaching a specific fate. In the pancreas, the tool discovered several
novel regulator genes involved in delta cell maturation. When applied to lung injury models, it predicted an unexpected
dedifferentiation path where goblet cells revert to basal stem cells. This biological prediction was confirmed through
immunofluorescence staining, which identified intermediate cell stages only present during the repair phase. Overall, the sources detail a robust mathematical approach for uncovering
unseen lineage transitions in complex tissues.
References:
- Lange, M., Bergen, V., Klein, M. et al. CellRank for directed single-cell fate mapping. Nat Methods 19, 159–170 (2022). doi.org