Literature DB >> 35127729

WAFNRLTG: A Novel Model for Predicting LncRNA Target Genes Based on Weighted Average Fusion Network Representation Learning Method.

Jianwei Li1,2, Zhenwu Yang1, Duanyang Wang1, Zhiguang Li1.   

Abstract

Long non-coding RNAs (lncRNAs) do not encode proteins, yet they have been well established to be involved in complex regulatory functions, and lncRNA regulatory dysfunction can lead to a variety of human complex diseases. LncRNAs mostly exert their functions by regulating the expressions of target genes, and accurate prediction of potential lncRNA target genes would be helpful to further understanding the functional annotations of lncRNAs. Considering the limitations in traditional computational methods for predicting lncRNA target genes, a novel model which was named Weighted Average Fusion Network Representation learning for predicting LncRNA Target Genes (WAFNRLTG) was proposed. First, a novel heterogeneous network was constructed by integrating lncRNA sequence similarity network, mRNA sequence similarity network, lncRNA-mRNA interaction network, lncRNA-miRNA interaction network and mRNA-miRNA interaction network. Next, four popular network representation learning methods were utilized to gain the representation vectors of lncRNA and mRNA nodes. Then, the representations of lncRNAs and target genes in the heterogeneous network were obtained with the weighted average fusion network representation learning method. Finally, we merged the representations of lncRNAs and related target genes to form lncRNA-gene pairs, trained the XGBoost classifier and predicted potential lncRNA target genes. In five-cross validations on the training and independent datasets, the experimental results demonstrated that WAFNRLTG obtained better AUC scores (0.9410, 0.9350) and AUPR scores (0.9391, 0.9350). Moreover, case studies of three common lncRNAs were performed for predicting their potential lncRNA target genes and the results confirmed the effectiveness of WAFNRLTG. The source codes and all data of WAFNRLTG can be freely downloaded at https://github.com/HGDYZW/WAFNRLTG.
Copyright © 2022 Li, Yang, Wang and Li.

Entities:  

Keywords:  XGBoost; heterogeneous network; lncRNA target genes prediction; machine learning; weighted average fusion network representation learning

Year:  2022        PMID: 35127729      PMCID: PMC8807548          DOI: 10.3389/fcell.2021.820342

Source DB:  PubMed          Journal:  Front Cell Dev Biol        ISSN: 2296-634X


  33 in total

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Authors:  Leon Wong; Yu-An Huang; Zhu-Hong You; Zhan-Heng Chen; Mei-Yuan Cao
Journal:  J Cell Mol Med       Date:  2019-09-30       Impact factor: 5.310

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