tximport

github.com/thelovelab/tximport
Active145updated 2 months ago
R
LGPL-2.0+

Imports transcript-level abundance, estimated counts and transcript lengths, and summarizes into matrices for use with downstream gene-level analysis packages. Average transcript length, weighted by sample-specific transcript abundance estimates, is provided as a matrix which can be used as an offset for different expression of gene-level counts.

Sourced from

  • Bioconductortximport
  • GitHubgithub.com/thelovelab/tximport

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