Predicting protein–protein interaction sites using modified support vector machine

被引:0
|
作者
Hong Guo
Bingjing Liu
Danli Cai
Tun Lu
机构
[1] Fuzhou University,College of Mathematics and Computer Science
[2] Fuzhou University,College of Biological Science and Technology
关键词
Protein interaction sites; Support vector machine; Sliding window; Boost-strap; Particle swarm optimization;
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学科分类号
摘要
Protein–protein interaction plays a fundamental role in many biological processes and diseases. Characterizing protein interaction sites is crucial for the understanding of the mechanism of protein–protein interaction and their cellular functions. In this paper, we proposed a method based on integrated support vector machine (SVM) with a hybrid kernel to predict protein interaction sites. First, a number of features of the protein interaction sites were extracted. Secondly, the technique of sliding window was used to construct a protein feature space based on the influence of the adjacent residues. Thirdly, to avoid the impact of imbalance of the data set on prediction accuracy, we employed boost-strap to re-sample the data. Finally, we built a SVM classifier, whose hybrid kernel comprised a Gaussian kernel and a Polynomial kernel. In addition, an improved particle swarm optimization (PSO) algorithm was applied to optimize the SVM parameters. Experimental results show that the PSO-optimized SVM classifier outperforms existing methods.
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页码:393 / 398
页数:5
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