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Hierarchical Representation and Graph Convolutional Networks for the Prediction of Protein-Protein Interaction Sites

机译:用于预测蛋白质 - 蛋白质相互作用位点的分层表示和图形卷积网络

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Proteins carry out a broad range of functions in living organisms usually by interacting with other molecules. Protein-protein interaction (PPI) is an important base for understanding disease mechanisms and for deciphering rational drug design. The identification of protein interactions using experimental methods is expensive and time-consuming. Therefore, efficient computational methods to predict PPIs are of great value to biologists. This work focuses on predicting protein interfaces and investigates the effect of different molecular representations in the prediction of such sites. We introduce a molecular representation according to its hierarchical structure. Therefore, proteins are abstracted in terms of spatial and sequential neighboring among amino acid pairs, while we use a deep learning framework, Graph Convolutional Networks, for data training. We tested the framework on two classes of proteins, Antibody-Antigen and Antigen-Bound Antibody, extracted from the Protein-Protein Docking Benchmark 5.0. The obtained results in terms of the area under the ROC curve (AU-ROC) on these classes are remarkable.
机译:蛋白质通常通过与其他分子相互作用而在生物体中进行广泛的功能。蛋白质 - 蛋白质相互作用(PPI)是了解疾病机制和解密合理药物设计的重要基础。使用实验方法鉴定蛋白质相互作用是昂贵且耗时的。因此,预测PPI的有效计算方法对生物学家具有很大的价值。这项工作侧重于预测蛋白质界面并研究不同分子表示在这些位点预测中的效果。我们根据其等级结构引入分子表示。因此,在氨基酸对中的空间和顺序相邻方面抽象蛋白质,而我们使用深度学习框架,图形卷积网络,用于数据培训。我们在两类蛋白质,抗体 - 抗原和抗原结合抗体上测试了框架,从蛋白质 - 蛋白质对接基准5.0中提取。在这些课程上的ROC曲线(AU-ROC)下的区域的结果是显着的。

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