An accurate classification of native and non-native protein-protein interactions using supervised and semi-supervised learning approaches

Nan Zhao, Bin Pang, C. Shyu, Dmitry Korkin
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Abstract

The progress in experimental and computational structural biology has led to a rapid growth of experimentally resolved structures and computational models of proteinprotein interactions. However, distinguishing between the physiological and non-physiological interactions remains a challenging problem. In this work, two related problems of interface classification have been addressed. The first problem is concerned with classification of the physiological and crystal-packing interactions. The second problem deals with the classification of the physiological interactions, or their accurate models, and decoys obtained from the inaccurate docking models. We have defined a universal set of interface features and employed supervised and semi-supervised learning approaches to accurately classify the interactions in both problems. Furthermore, we formulated the second problem as a semi-supervised learning problem and employed a transductive SVM to improve the accuracy of classification. Finally, we showed that using the scoring functions from the obtained classifiers, one can improve the accuracy of the docking methods.
使用监督和半监督学习方法对天然和非天然蛋白质相互作用进行准确分类
实验和计算结构生物学的进步导致了蛋白质相互作用的实验解决结构和计算模型的快速增长。然而,区分生理和非生理相互作用仍然是一个具有挑战性的问题。本文主要研究了两个相关的界面分类问题。第一个问题是关于生理和晶体堆积相互作用的分类。第二个问题涉及生理相互作用的分类,或它们的精确模型,以及从不准确的对接模型中获得的诱饵。我们定义了一组通用的接口特征,并使用监督和半监督学习方法来准确分类这两个问题中的交互。此外,我们将第二个问题表述为半监督学习问题,并采用了一个换向支持向量机来提高分类的准确性。最后,我们证明了使用得到的分类器的评分函数,可以提高对接方法的准确性。
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