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Application of the Random Forest Classification Algorithm to a SELDI-TOF Proteomics Study in the Setting of a Cancer Prevention Trial
Annals of the New York Academy of Sciences
- United States
doi 10.1196/annals.1310.015
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Abstract
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Categories
Genetics
Molecular Biology
Biochemistry
Neuroscience
History
Philosophy of Science
Date
May 1, 2004
Authors
GRANT IZMIRLIAN
Publisher
Wiley
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