BMC Bioinformatics (Oct 2017)

Fusing multiple protein-protein similarity networks to effectively predict lncRNA-protein interactions

  • Xiaoxiong Zheng,
  • Yang Wang,
  • Kai Tian,
  • Jiaogen Zhou,
  • Jihong Guan,
  • Libo Luo,
  • Shuigeng Zhou

DOI
https://doi.org/10.1186/s12859-017-1819-1
Journal volume & issue
Vol. 18, no. S12
pp. 11 – 18

Abstract

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Abstract Background Long non-coding RNA (lncRNA) plays important roles in many biological and pathological processes, including transcriptional regulation and gene regulation. As lncRNA interacts with multiple proteins, predicting lncRNA-protein interactions (lncRPIs) is an important way to study the functions of lncRNA. Up to now, there have been a few works that exploit protein-protein interactions (PPIs) to help the prediction of new lncRPIs. Results In this paper, we propose to boost the prediction of lncRPIs by fusing multiple protein-protein similarity networks (PPSNs). Concretely, we first construct four PPSNs based on protein sequences, protein domains, protein GO terms and the STRING database respectively, then build a more informative PPSN by fusing these four constructed PPSNs. Finally, we predict new lncRPIs by a random walk method with the fused PPSN and known lncRPIs. Our experimental results show that the new approach outperforms the existing methods. Conclusion Fusing multiple protein-protein similarity networks can effectively boost the performance of predicting lncRPIs.

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