Prediction of Protein-Protein Interaction Sites Using Only Sequence Information and Using Both Sequence and Structural Information

Masanori Kakuta, Shugo Nakamura, K. Shimizu
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引用次数: 7

Abstract

Protein-protein interactions play an important role in a number of biological activities. We developed two methods of predictingprotein-protein interaction site residues. One method uses only sequence information and the other method uses both sequence and structural information. We used support vector machine (SVM) with a position specific scoring matrix (PSSM) as sequence information and accessible surface area(ASA) of polar and non-polar atoms as structural information. SVM is used in two stages. In the first stage, an interaction residue is predicted by taking PSSMs of sequentially neighboring residues or taking PSSMs and ASAs of spatially neighboring residues as features. The second stage acts as a filter to refine the prediction results. The recall and precision of the predictor using both sequence and structural information are 73.6% and 50.5%, respectively. We found that using PSSM instead of frequency of amino acid appearance was the main factor of improvement of our methods.
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仅使用序列信息和同时使用序列和结构信息的蛋白质相互作用位点预测
蛋白质之间的相互作用在许多生物活动中起着重要作用。我们开发了两种预测蛋白质相互作用位点残基的方法。一种方法只使用序列信息,另一种方法同时使用序列和结构信息。我们使用具有位置特定评分矩阵(PSSM)的支持向量机(SVM)作为序列信息,并使用极性和非极性原子的可及表面积(ASA)作为结构信息。支持向量机的使用分为两个阶段。在第一阶段,通过取序列相邻残基的pssm或取空间相邻残基的pssm和asa作为特征来预测相互作用残基。第二阶段充当过滤器,以细化预测结果。同时使用序列和结构信息的预测器的召回率和精度分别为73.6%和50.5%。我们发现用PSSM代替氨基酸出现频率是我们改进方法的主要因素。
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