Prediction of Protein-Protein Interaction Sites Using Constructive Neural Network Ensemble

Yan-Ping Zhang, Li-na Zhang, Yongcheng Wang
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引用次数: 1

Abstract

Abstract-Prediction of protein-proteininteraction sites is very important to the function of a protein and drug design. In this paper, we adequately utilize the characters of ensemble learning, which can improve the accuracy of individual classifier and generalization ability of the system, and propose a new prediction method of protein-protein interaction sites: ensemble learning method based on the constructive neural network. Protein sequence profile and residue accessible area are used as input feature vectors. We evaluate the ensemble classifiers and compare them with several traditional methods (SVM, ANN, CA and Bayesian) on the dataset of 61 protein chains with 5-fold cross validation. The results clearly show that the proposed ensemble method is quite effective in predicting protein binding sites. Our method achieves good performance (Accuracy of 73.26%, Sensitivity of 58.38%, Specificity of 68.87%, CC of 35.47% and F1-measure of 63.04%), which is significantly better than that of the compared methods. The results obtained show that our proposed method is a promising approach for predicting protein-protein interaction sites.The experiments show the validation and correctness of the ensemble method based on Covering Algorithm (CA).
利用构造神经网络集成预测蛋白质-蛋白质相互作用位点
摘要-蛋白质相互作用位点的预测对蛋白质的功能和药物设计非常重要。本文充分利用集成学习提高个体分类器准确率和系统泛化能力的特点,提出了一种新的蛋白质-蛋白质相互作用位点预测方法:基于构造性神经网络的集成学习方法。以蛋白质序列轮廓和残基可及面积作为输入特征向量。我们在61个蛋白质链数据集上评估了集成分类器,并将其与几种传统方法(SVM、ANN、CA和Bayesian)进行了5倍交叉验证。结果清楚地表明,所提出的集合方法在预测蛋白质结合位点方面是非常有效的。本方法的准确率为73.26%,灵敏度为58.38%,特异性为68.87%,CC为35.47%,F1-measure为63.04%,明显优于其他方法。结果表明,我们提出的方法是一种很有前途的预测蛋白质相互作用位点的方法。实验验证了基于覆盖算法(CA)的集成方法的正确性。
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