Abstract

Identification of protein-protein interactions (PPIs) is of critical importance for deciphering the underlying mechanisms of almost all biological processes of cell and providing great insight into the study of human disease. Although much effort has been devoted to identifying PPIs from various organisms, existing high-throughput biological techniques are time-consuming, expensive, and have high false positive and negative results. Thus it is highly urgent to develop in silico methods to predict PPIs efficiently and accurately in this post genomic era. In this article, we report a novel computational model combining our newly developed discriminative vector machine classifier (DVM) and an improved Weber local descriptor (IWLD) for the prediction of PPIs. Two components, differential excitation and orientation, are exploited to build evolutionary features for each protein sequence. The main characteristics of the proposed method lies in introducing an effective feature descriptor IWLD which can capture highly discriminative evolutionary information from position-specific scoring matrixes (PSSM) of protein data, and employing the powerful and robust DVM classifier. When applying the proposed method to Yeast and H. pylori data sets, we obtained excellent prediction accuracies as high as 96.52% and 91.80%, respectively, which are significantly better than the previous methods. Extensive experiments were then performed for predicting cross-species PPIs and the predictive results were also pretty promising. To further validate the performance of the proposed method, we compared it with the state-of-the-art support vector machine (SVM) classifier on Human data set. The experimental results obtained indicate that our method is highly effective for PPIs prediction and can be taken as a supplementary tool for future proteomics research.

Highlights

  • In this post-genomic era, protein-protein interactions (PPIs) can provide great insights into the intrinsic mechanisms of biological processes within a cell and so the PPI networks have been drawing increasing attention

  • We report a novel computational model combining our newly developed discriminative vector machine classifier (DVM) and an improved Weber local descriptor (IWLD) for the prediction of PPIs

  • The main characteristics of the proposed method lies in introducing an effective feature descriptor IWLD which can capture highly discriminative evolutionary information from position-specific scoring matrixes (PSSM) of protein data, and employing the powerful and robust DVM classifier

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Summary

Introduction

In this post-genomic era, protein-protein interactions (PPIs) can provide great insights into the intrinsic mechanisms of biological processes within a cell and so the PPI networks have been drawing increasing attention. A large amount of PPI data from various kinds of organisms has been collected, and a number of databases, like DIP [4], BIND [5] and MINT [6], have been constructed. Such experimental methods for identifying PPIs are usually labor-intensive and time-consuming. What's worse, those high-throughput techniques suffer from high rates of false positive and false negative results All these limitations require robust and effective in silico methods as a complement to biological experimental techniques for protein-protein interactions prediction

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