首页> 外文期刊>Journal of biosciences >Proteina€“Protein interaction site prediction in Homo sapiens and E. coli using an interaction-affinity based membership function in fuzzy SVM
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Proteina€“Protein interaction site prediction in Homo sapiens and E. coli using an interaction-affinity based membership function in fuzzy SVM

机译:在模糊SVM中使用基于交互亲和性的隶属函数预测智人和大肠杆菌中的蛋白相互作用位点

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Proteina€“protein interaction (PPI) site prediction aids to ascertain the interface residues that participate in interaction processes. Fuzzy support vector machine (F-SVM) is proposed as an effective method to solve this problem, and we have shown that the performance of the classical SVM can be enhanced with the help of an interaction-affinity based fuzzy membership function. The performances of both SVM and F-SVM on the PPI databases of the Homo sapiens and E. coli organisms are evaluated and estimated the statistical significance of the developed method over classical SVM and other fuzzy membership-based SVM methods available in the literature. Our membership function uses the residue-level interaction affinity scores for each pair of positive and negative sequence fragments. The average AUC scores in the 10-fold cross-validation experiments are measured as 79.94% and 80.48% for the Homo sapiens and E. coli organisms respectively. On the independent test datasets, AUC scores are obtained as 76.59% and 80.17% respectively for the two organisms. In almost all cases, the developed F-SVM method improves the performances obtained by the corresponding classical SVM and the other classifiers, available in the literature.
机译:蛋白质相互作用(PPI)的位点预测有助于确定参与相互作用过程的界面残基。提出了一种模糊支持向量机(F-SVM)作为解决该问题的有效方法,并且我们已经表明,借助基于交互亲和力的模糊隶属函数,可以提高经典支持向量机的性能。评估了智人和大肠杆菌生物的PPI数据库上SVM和F-SVM的性能,并评估了该开发方法相对于经典SVM和其他现有文献中基于模糊成员资格的SVM方法的统计意义。我们的隶属度函数使用每一对正负序列片段的残基级相互作用亲和力得分。在十倍交叉验证实验中,智人和大肠杆菌生物的平均AUC分数分别为79.94%和80.48%。在独立的测试数据集上,两种生物的AUC得分分别为76.59%和80.17%。在几乎所有情况下,已开发的F-SVM方法都会改进相应的经典SVM和文献中提供的其他分类器的性能。

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