"
Improved Protein Phosphorylation Site Prediction by a New Combination of Feature Set and Feature Selection"
written by Favorisen Rosyking Lumbanraja, Ngoc Giang Nguyen, Dau Phan, Mohammad Reza Faisal, Bahriddin Abapihi, Bedy Purnama, Mera Kartika Delimayanti, Mamoru Kubo, Kenji Satou,
published by
Journal of Biomedical Science and Engineering,
Vol.11 No.6, 2018
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