Application of the random forest classification algorithm to a SELDI-TOF proteomics study in the setting of a cancer prevention trial.

@article{Izmirlian2004ApplicationOT,
  title={Application of the random forest classification algorithm to a SELDI-TOF proteomics study in the setting of a cancer prevention trial.},
  author={Grant Izmirlian},
  journal={Annals of the New York Academy of Sciences},
  year={2004},
  volume={1020},
  pages={154-74}
}
  • Grant Izmirlian
  • Published 2004 in Annals of the New York Academy of Sciences
A thorough discussion of the random forest (RF) algorithm as it relates to a SELDI-TOF proteomics study is presented, with special emphasis on its application for cancer prevention: specifically, what makes it an efficient, yet reliable classifier, and what makes it optimal among the many available approaches. The main body of the paper treats the particulars of how to successfully apply the RF algorithm in a proteomics profiling study to construct a classifier and discover peak intensities… CONTINUE READING

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