Abstract

The study of protein-protein interaction is of great biological significance, and the prediction of protein-protein interaction sites can promote the understanding of cell biological activity and will be helpful for drug development. However, uneven distribution between interaction and non-interaction sites is common because only a small number of protein interactions have been confirmed by experimental techniques, which greatly affects the predictive capability of computational methods. In this work, two imbalanced data processing strategies based on XGBoost algorithm were proposed to re-balance the original dataset from inherent relationship between positive and negative samples for the prediction of protein-protein interaction sites. Herein, a feature extraction method was applied to represent the protein interaction sites based on evolutionary conservatism of proteins, and the influence of overlapping regions of positive and negative samples was considered in prediction performance. Our method showed good prediction performance, such as prediction accuracy of 0.807 and MCC of 0.614, on an original dataset with 10,455 surface residues but only 2297 interface residues. Experimental results demonstrated the effectiveness of our XGBoost-based method.

Highlights

  • Protein-protein interaction (PPI) is the main way to realize the regulation of biological information, and it is an important factor to determine the fate of cells [1,2,3]

  • Predicting protein-protein interaction sites using computational methods has become a hot topic with the development of machine learning algorithms [4,5,6,7,8]

  • Wang et al proposed a new method for predicting protein interaction sites in hetero-complexes using a radial basis function neural network (RBFNN) set model, which uses only evolutionary conservation information and spatial sequence profile of proteins, and achieved a good predictive result [19]

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Summary

Introduction

Protein-protein interaction (PPI) is the main way to realize the regulation of biological information, and it is an important factor to determine the fate of cells [1,2,3]. Predicting protein-protein interaction sites using computational methods has become a hot topic with the development of machine learning algorithms [4,5,6,7,8]. Previous studies showed that support vector machine (SVM) and its improved methods can predict effectively protein interaction sites [9,10,11,12,13,14]. Computational algorithms such as random forests, KNN, and Naive Bayes Classifier have been applied to the prediction of PPIs [15,16,17,18]. Wang et al proposed a new method for predicting protein interaction sites in hetero-complexes using a radial basis function neural network (RBFNN) set model, which uses only evolutionary conservation information and spatial sequence profile of proteins, and achieved a good predictive result [19]

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