flowClust

ImmunoOncology
R
MIT

Robust model-based clustering using a t-mixture model with Box-Cox transformation. Note: users should have GSL installed. Windows users: 'consult the README file available in the inst directory of the source distribution for necessary configuration instructions'.

Source attribution

  • BioconductorflowClust

Related resources

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354 years ago
R