BreastSubtypeR

github.com/yqkiuo/breastsubtyper
Active5updated 4 months ago
R
GPL-3.0

BreastSubtypeR provides an assumption-aware, multi-method framework for intrinsic molecular subtyping of breast cancer. The package harmonizes several published nearest-centroid (NC) and single-sample predictor (SSP) classifiers, supplies method-specific preprocessing and robust probe-to-gene mapping, and implements a cohort-aware AUTO mode that selectively enables classifiers compatible with the cohort composition. A local Shiny app (iBreastSubtypeR) is included for interactive analyses and to support users without programming experience.

Sourced from

  • BioconductorBreastSubtypeR
  • GitHubgithub.com/yqkiuo/breastsubtyper

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