tripr

github.com/biodataanalysisgroup/tripr
Active3updated 1 month ago
R
MIT

TRIP is a software framework that provides analytics services on antigen receptor (B cell receptor immunoglobulin, BcR IG | T cell receptor, TR) gene sequence data. It is a web application written in R Shiny. It takes as input the output files of the IMGT/HighV-Quest tool. Users can select to analyze the data from each of the input samples separately, or the combined data files from all samples and visualize the results accordingly.

Sourced from

  • Bioconductortripr
  • GitHubgithub.com/biodataanalysisgroup/tripr

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