SCFA

Survival
Stale3updated 3 years ago
R

Subtyping via Consensus Factor Analysis (SCFA) can efficiently remove noisy signals from consistent molecular patterns in multi-omics data. SCFA first uses an autoencoder to select only important features and then repeatedly performs factor analysis to represent the data with different numbers of factors. Using these representations, it can reliably identify cancer subtypes and accurately predict risk scores of patients.

README

SCFA Subtyping via Consensus Factor Analysis (SCFA) can efficiently remove noisy signals from consistent molecular patterns in order to reliably identify cancer subtypes and accurately predict risk scores of patients. How to install The package can be installed from this repository. Install devtools: utils::install.packages('devtools') Install the package using: devtools::installgithub('duct317/SCFA') When the package is loaded, it will check for the necessary libtorch: library(SCFA) libtorch…

Source attribution

  • GitHubgithub.com/duct317/scfa
  • BioconductorSCFA

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