Abstract

In recent years, lncRNAs (long non-coding RNAs) have been proved to be closely related to many diseases that are seriously harmful to human health. Although researches on clarifying the relationships between lncRNAs and diseases are developing rapidly, associations between the lncRNAs and diseases are still remaining largely unknown. In this manuscript, a novel Local Random Walk based prediction model called LRWHLDA is proposed for inferring potential associations between human lncRNAs and diseases. In LRWHLDA, a new heterogeneous network is established first, which allows that LRWHLDA can be implemented in the case of lacking known lncRNA-disease associations. And then, an improved local random walk method is designed for prediction of novel lncRNA-disease associations, which can help LRWHLDA achieve high prediction accuracy but with low time complexity. Finally, in order to evaluate the prediction performance of LRWHLDA, different frameworks such as LOOCV, 2-folds CV, and 5-folds CV have been implemented, simulation results indicate that LRWHLDA can achieve reliable AUCs of 0.8037, 0.8354, and 0.8556 under the frameworks of 2-fold CV, 5-fold CV, and LOOCV, respectively. Hence, it is easy to know that LRWHLDA contains the potential to be a representative of emerging methods in the field of research on potential lncRNA-disease associations prediction.

Highlights

  • A few years ago, genetic information has long been considered to be stored only in protein-coding genes and a RNA is just an intermediary between a DNA sequence and its encoded protein [1], [2], [3]

  • In LRWHLDA, a new heterogeneous network was established first through integrating the disease similarity network, the integrated lncRNA similarity network and the known lncRNA-disease similarity network, which guarantees that LRWHLDA can overcome the shortcoming existed in traditional Random Walk with Restart (RWR) based prediction models that these RWR based prediction models cannot start walking while lack of known lncRNA-disease associations

  • Based on the newly constructed heterogeneous network, a superimposed local random walk method is designed for prediction of potential lncRNAdisease associations, which guarantees that LRWHLDA can achieve excellent prediction performance with limited time consumption through taking full advantage of the local information of the heterogeneous network generated by the random walks

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Summary

A Novel Approach for Potential Human LncRNA-Disease Association Prediction

Jiechen Li , Haochen Zhao , Zhanwei Xuan, Jingwen Yu, Xiang Feng, Bo Liao , and Lei Wang. Researches on clarifying the relationships between lncRNAs and diseases are developing rapidly, associations between the lncRNAs and diseases are still remaining largely unknown. In this manuscript, a novel Local Random Walk based prediction model called LRWHLDA is proposed for inferring potential associations between human lncRNAs and diseases. An improved local random walk method is designed for prediction of novel lncRNAdisease associations, which can help LRWHLDA achieve high prediction accuracy but with low time complexity. It is easy to know that LRWHLDA contains the potential to be a representative of emerging methods in the field of research on potential lncRNA-disease associations prediction

INTRODUCTION
Known Human LncRNA-Disease Associations
Disease Semantic Similarity
Gaussian Interaction Profile Kernel Similarity for Diseases
Disease Integrated Similarity
LncRNA Functional Similarity
Gaussian Interaction Profile Kernel
Process of Random Walk
LncRNA Integrated Similarity
Local Random Walk for the Heterogeneous
P11ðtÞ
PERFORMANCE EVALUATION
ANALYSIS ON EFFECTS OF PARAMETERS
COMPARISON WITH OTHER METHODS
Method LRWHLDA LRLSLDA RWRLNCD NRWRH
CASE STUDIES
H19 MALAT1 HOTAIR MEG3 PVT1 GAS5 UCA1 TUG1 XIST HULC
Findings
DISCUSSION
Full Text
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