barcodetrackR

Software
Stale5updated 5 years ago
R
CC0-1.0

barcodetrackR is an R package developed for the analysis and visualization of clonal tracking data. Data required is samples and tag abundances in matrix form. Usually from cellular barcoding experiments, integration site retrieval analyses, or similar technologies.

README

barcodetrackR barcodetrackR is an R package developed for the analysis and visualization of clonal tracking data from cellular barcoding experiments. The R package and functions were created by Diego A. Espinoza, Ryland D. Mortlock, Samson J. Koelle, and others at Cynthia Dunbar's laboratory at the National Heart, Lung, and Blood Institutes of Health. Installation Three options for installation are available. For the most recent version of the package, install from GitHub using remotes or…

Source attribution

  • GitHubgithub.com/dunbarlabnih/barcodetrackr
  • BioconductorbarcodetrackR

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