Abstract

Proteins play essential roles in almost all life processes. The prediction of protein function is of significance for the understanding of molecular function and evolution. Network alignment provides a fast and effective framework to automatically identify functionally conserved proteins in a systematic way. However, due to the fast growing genomic data, interactions and annotation data, there is an increasing demand for more accurate and efficient tools to deal with multiple PPI networks. Here, we present a novel global alignment algorithm NetCoffee2 based on graph feature vectors to discover functionally conserved proteins and predict function for unknown proteins. To test the algorithm performance, NetCoffee2 and three other notable algorithms were applied on eight real biological datasets. Functional analyses were performed to evaluate the biological quality of these alignments. Results show that NetCoffee2 is superior to existing algorithms IsoRankN, NetCoffee and multiMAGNA++ in terms of both coverage and consistency. The binary and source code are freely available under the GNU GPL v3 license at https://github.com/screamer/NetCoffee2.

Highlights

  • Protein function is a fundamental problem that attracts many researchers in the fields of both molecular function and evolution

  • In order to measure the biological quality for alignment results, we analyzed the functional similarity based on Gene Ontology terms [41], which include molecular function (MF), biological process (BP) and cellular component (CC)

  • We developed an efficient algorithm NetCoffee2 based on graph feature vectors to globally align multiple protein-protein interaction (PPI) networks

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Summary

Introduction

Protein function is a fundamental problem that attracts many researchers in the fields of both molecular function and evolution. Thanks to the development of next-generation sequencing [4], computational methods become a major strength for discovering the molecular function and phylogenetic [5,6,7,8,9,10,11,12,13,14,15,16,17]. Global network alignment provides an effective computational framework to systematically identify functionally. IsoRank was the first algorithm proposed to solve global network alignment, which takes advantage of a method analogous to Google’s PageRank method [27].

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