Wang Cun-xin
Beijing University of Technology
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Publication
Featured researches published by Wang Cun-xin.
Science China-life Sciences | 2008
Wang Minghui; Li Chunhua; Chen Weizu; Wang Cun-xin
Phosphorylation is a crucial way to control the activity of proteins in many eukaryotic organisms in vivo. Experimental methods to determine phosphorylation sites in substrates are usually restricted by the in vitro condition of enzymes and very intensive in time and labor. Although some in silico methods and web servers have been introduced for automatic detection of phosphorylation sites, sophisticated methods are still in urgent demand to further improve prediction performances. Protein primary sequences can help predict phosphorylation sites catalyzed by different protein kinase and most computational approaches use a short local peptide to make prediction. However, the useful information may be lost if only the conservative residues that are not close to the phosphorylation site are considered in prediction, which would hamper the prediction results. A novel prediction method named IEPP (Information-Entropy based Phosphorylation Prediction) is presented in this paper for automatic detection of potential phosphorylation sites. In prediction, the sites around the phosphorylation sites are selected or excluded by their entropy values. The algorithm was compared with other methods such as GSP and PPSP on the ABL, MAPK and PKA PK families. The superior prediction accuracies were obtained in various measurements such as sensitivity (Sn) and specificity (Sp). Furthermore, compared with some online prediction web servers on the new discovered phosphorylation sites, IEPP also yielded the best performance. IEPP is another useful computational resource for identification of PK-specific phosphorylation sites and it also has the advantages of simpleness, efficiency and convenience.
Acta Physico-chimica Sinica | 2012
Wang Cun-xin; Chang Shan; Gong Xin-Qi; Yang Feng; Li Chunhua; Chen Weizu
Molecular docking technology is an effective approach for prediction of intermolecular interactions and recognition. The design of a scoring function for selecting near-native structures is very important for successful prediction of complex structures. In this article, the main computational methods for scoring items in protein-protein docking, such as geometric complementarity, contact area, van der Waalsʹ interaction, electrostatic interaction, and statistical pair propensity potential, are reviewed. Including our work, we introduce commonly used scoring schemes and some strategies in screening decoys based on the information for protein binding sites. The characteristic scoring functions in the commonly used docking programs are compared and summarized. The major problems in the existing scoring function in protein-protein docking are discussed along with prospect for future research.
Acta Biophysica Sinica | 2003
Wang Cun-xin
Journal of Beijing University of Technology | 2013
Wang Cun-xin
Journal of Beijing University of Technology | 2013
Wang Cun-xin
China Biotechnology | 2013
Wang Cun-xin
China Biotechnology | 2012
Wang Cun-xin
Journal of Medical Postgraduates | 2011
Wang Cun-xin
Journal of Beijing University of Technology | 2011
Wang Cun-xin
Journal of Higher Education in Science & Technology | 2010
Wang Cun-xin