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Sequence Conservation in the Prediction of Catalytic Sites
Authors:Yongchao Dou  Xingbo Geng  Hongyun Gao  Jialiang Yang  Xiaoqi Zheng  Jun Wang
Institution:(1) School of Mathematical Science, Dalian University of Technology, Dalian, 116024, People’s Republic of China;(2) College of Advanced Science and Technology, Dalian University of Technology, Dalian, 116024, People’s Republic of China;(3) MPI-CAS Institute of Computational Biology, Chinese Academy of Sciences, Shanghai, 200031, People’s Republic of China;(4) Department of Mathematics, Shanghai Normal University, Shanghai, 200234, People’s Republic of China;(5) Scientific Computing Key Laboratory of Shanghai Universities, Shanghai, 200234, People’s Republic of China;
Abstract:Predicting catalytic sites of a given enzyme is an important open problem of Bioinformatics. Recently, many machine learning-based methods have been developed which have the advantage that they can account for many sequential or structural features. We found that although many kinds of features are incorporated, protein sequence conservation is the main part of information they used and should play an important role in the future. So we tested several conservation features in their ability to predict catalytic sites by using the Support Vector Machine classifier. Our results suggest that position specific scoring matrix performs better than other features and incorporating conservation information of sequentially adjacent sites is more effective than that of structurally adjacent ones. Moreover, although conservation information is effective in predicting catalytic sites, it is a difficult problem to optimize the combination of conservation features and other ones.
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