Title of article :
The Virtual Screening of the Drug Protein with a Few Crystal Structures Based on the Adaboost-SVM
Author/Authors :
Wang, Meng-yu School of Computer Science and Technology - Harbin University of Science and Technology - Harbin, China , Li, Peng School of Computer Science and Technology - Harbin University of Science and Technology - Harbin, China , Qiao, Pei-li School of Computer Science and Technology - Harbin University of Science and Technology - Harbin, China
Pages :
9
From page :
1
To page :
9
Abstract :
Using the theory of machine learning to assist the virtual screening (VS) has been an effective plan. However, the quality of the training set may reduce because of mixing with the wrong docking poses and it will affect the screening efficiencies. To solve this problem, we present a method using the ensemble learning to improve the support vector machine to process the generated proteinligand interaction fingerprint (IFP). By combining multiple classifiers, ensemble learning is able to avoid the limitations of the single classifier’s performance and obtain better generalization. According to the research of virtual screening experiment with SRC and Cathepsin K as the target, the results show that the ensemble learning method can effectively reduce the error because the sample quality is not high and improve the effect of the whole virtual screening process.
Keywords :
Adaboost-SVM , Crystal , VS , generalization
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2016
Full Text URL :
Record number :
2607261
Link To Document :
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