IRWRLDA: Improved random walk with restart for lncRNA-disease association prediction

Xing Chen, Zhu Hong You, Gui Ying Yan, Dun Wei Gong

Research output: Contribution to journalArticlepeer-review

202 Scopus citations

Abstract

In recent years, accumulating evidences have shown that the dysregulations of lncRNAs are associated with a wide range of human diseases. It is necessary and feasible to analyze known lncRNA-disease associations, predict potential lncRNAdisease associations, and provide the most possible lncRNA-disease pairs for experimental validation. Considering the limitations of traditional Random Walk with Restart (RWR), the model of Improved Random Walk with Restart for LncRNA-Disease Association prediction (IRWRLDA) was developed to predict novel lncRNA-disease associations by integrating known lncRNA-disease associations, disease semantic similarity, and various lncRNA similarity measures. The novelty of IRWRLDA lies in the incorporation of lncRNA expression similarity and disease semantic similarity to set the initial probability vector of the RWR. Therefore, IRWRLDA could be applied to diseases without any known related lncRNAs. IRWRLDA significantly improved previous classical models with reliable AUCs of 0.7242 and 0.7872 in two known lncRNA-disease association datasets downloaded from the lncRNADisease database, respectively. Further case studies of colon cancer and leukemia were implemented for IRWRLDA and 60% of lncRNAs in the top 10 prediction lists have been confirmed by recent experimental reports.

Original languageEnglish
Pages (from-to)57919-57931
Number of pages13
JournalOncotarget
Volume7
Issue number36
DOIs
StatePublished - 2016
Externally publishedYes

Keywords

  • Cancer
  • Disease
  • lncRNAs
  • Random walk with restart

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