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CancerDiscover: A configurable pipeline for cancer prediction and biomarker identification using machine learning framework
View ORCID ProfileAkram Mohammed, Greyson Biegert, Jiri Adamec, Tomáš Helikar
doi: https://doi.org/10.1101/182998
Akram Mohammed
1Department of Biochemistry, University of Nebraska, Lincoln, 68503, Nebraska, United States of America
Greyson Biegert
1Department of Biochemistry, University of Nebraska, Lincoln, 68503, Nebraska, United States of America
Jiri Adamec
1Department of Biochemistry, University of Nebraska, Lincoln, 68503, Nebraska, United States of America
Tomáš Helikar
1Department of Biochemistry, University of Nebraska, Lincoln, 68503, Nebraska, United States of America
Posted August 31, 2017.
CancerDiscover: A configurable pipeline for cancer prediction and biomarker identification using machine learning framework
Akram Mohammed, Greyson Biegert, Jiri Adamec, Tomáš Helikar
bioRxiv 182998; doi: https://doi.org/10.1101/182998
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