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Prediction of Protein-Protein Interaction Using Distance Frequency of Amino Acids Grouped with their Physicochemical Properties

机译:使用物理化学性质对氨基酸距离频率预测蛋白质 - 蛋白质相互作用

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Protein-protein interactions (PPIs) play a key role in many cellular processes. These interactions form the basis of phenomena such as DNA replication and transcription, metabolic pathway, signaling pathway, and cell cycle control. Knowing how proteins interact with each other can help the biological scientist understand the molecular mechanism of the cell. Unfortunately, the experimental methods of identifying PPIs are both time-consuming and expensive. Therefore, developing computational approaches for predicting PPIs would be of significant value. Here, we propose a novel method for predicting the PPI using distance frequency of amino acids grouped with their physicochemical properties (hydrophobicity, normalized van der Waals volume, polarity and polarizability) and PCA. First, the 20 basic amino acids were divided into three groups according to the four kinds of physicochemical property values. Second, the distance frequency feature extraction method was introduced to represent the protein pairs, and also fused the feature vectors extracted with four physicochemical properties to form different feature vector sets. Third, the PCA method was used to reduce the vector dimension, and support vector machine was adopted as the classifier. The overall success rate of our method for hydrophobicity, normalized van der Waals volume, polarity and polarizability are 89.88%, 89.72%, 89.28% and 89.24% in 10CV test, which are 6.65%, 8.05%, 9.72% and 8.09% higher than that of Guo's auto-covariance function feature extraction method respectively. The total predicting accuracy of fusing the four physicochemical properties arrives at 91.79%. The results show that the current approach is very promising for predicting PPI, and may become a useful tool in the relevant areas.
机译:蛋白质 - 蛋白质相互作用(PPI)在许多细胞过程中起关键作用。这些相互作用构成了现象的基础,例如DNA复制和转录,代谢途径,信号通路和细胞周期控制。了解蛋白质如何互相互动可以帮助生物科学家了解细胞的分子机制。不幸的是,鉴定PPI的实验方法既耗时又昂贵。因此,开发用于预测PPI的计算方法将具有重要价值。在此,我们提出了一种新的方法,用于使用与其物理化学性质(疏水性,标准化范德瓦尔斯体积,极性和极化性)和PCA分组的氨基酸的距离频率预测PPI的新方法。首先,根据四种物理化学性质值将20个基本氨基酸分成三组。其次,引入距离频率特征提取方法以表示蛋白质对,并且还融合了用四个物理化学性质提取的特征载体以形成不同的特征向量组。第三,使用PCA方法来减少矢量维度,并采用支持向量机作为分类器。我们对疏水性的方法的总体成功率,标准化范德瓦尔斯体积,极性和极化性为10CV试验中的89.88%,89.72%,89.28%和89.24%,比为6.65%,8.05%,9.72%和8.09%郭自动协方差函数特征提取方法。融合四个物理化学性质的总预测准确性到达91.79%。结果表明,目前的方法非常有前途预测PPI,并且可能成为相关领域的有用工具。

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