A Novel Computational Approach for Identifying Essential Proteins From Multiplex Biological Networks

The identification of essential proteins can help in understanding the minimum requirements for cell survival and development. Ever-increasing amounts of high-throughput data provide us with opportunities to detect essential proteins from protein interaction networks (PINs). Existing network-based a...

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Published inFrontiers in genetics Vol. 11; p. 343
Main Authors Zhao, Bihai, Hu, Sai, Liu, Xiner, Xiong, Huijun, Han, Xiao, Zhang, Zhihong, Li, Xueyong, Wang, Lei
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 21.04.2020
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Summary:The identification of essential proteins can help in understanding the minimum requirements for cell survival and development. Ever-increasing amounts of high-throughput data provide us with opportunities to detect essential proteins from protein interaction networks (PINs). Existing network-based approaches are limited by the poor quality of the underlying PIN data, which exhibits high rates of false positive and false negative results. To overcome this problem, researchers have focused on the prediction of essential proteins by combining PINs with other biological data, which has led to the emergence of various interactions between proteins. It remains challenging, however, to use aggregated multiplex interactions within a single analysis framework to identify essential proteins. In this study, we created a multiplex biological network (MON) by initially integrating PINs, protein domains, and gene expression profiles. Next, we proposed a new approach to discover essential proteins by extending the random walk with restart algorithm to the tensor, which provides a data model representation of the MON. In contrast to existing approaches, the proposed MON approach considers for the importance of nodes and the different types of interactions between proteins during the iteration. MON was implemented to identify essential proteins within two yeast PINs. Our comprehensive experimental results demonstrated that MON outperformed 11 other state-of-the-art approaches in terms of precision-recall curve, jackknife curve, and other criteria.
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This article was submitted to Bioinformatics and Computational Biology, a section of the journal Frontiers in Genetics
Reviewed by: Juan Ye, National Institutes of Health (NIH), United States; Weiyu Chen, Stanford University, United States
Edited by: Ling Kui, Harvard Medical School, United States
These authors have contributed equally to this work
ISSN:1664-8021
1664-8021
DOI:10.3389/fgene.2020.00343