cellmigRation
github.com/ocbe-uio/cellmigrationImport TIFF images of fluorescently labeled cells, and track cell movements over time. Parallelization is supported for image processing and for fast computation of cell trajectories. In-depth analysis of cell trajectories is enabled by 15 trajectory analysis functions.
Sourced from
- Bioconductor — cellmigRation
- GitHub — github.com/ocbe-uio/cellmigration
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