Literature DB >> 32500265

FCGCNMDA: predicting miRNA-disease associations by applying fully connected graph convolutional networks.

Jiashu Li1,2, Zhengwei Li3,4,5, Ru Nie6,7, Zhuhong You8, Wenzhang Bao9.   

Abstract

Growing evidence indicates that the development and progression of multiple complex diseases are influenced by microRNA (miRNA). Identifying more miRNAs as biomarkers for clinical diagnosis, treatment and prognosis is vital to promote the development of bioinformatics and medicine. Considering that the traditional biological experimental methods are generally time-consuming and expensive, high-efficient computational methods are encouraged to uncover potential disease-related miRNAs. In this paper, FCGCNMDA is presented to predict latent miRNA-disease associations by utilizing fully connected graph convolutional networks. Specially, our method first constructs a fully connected graph in which edge weights represent correlation coefficient between any two pairs of miRNA-disease pair, and then feeds this fully connected graph along with miRNA-disease pairs feature matrix into a two-layer graph convolutional networks (GCN) for training. At last, we utilize the trained network to predict the scores for unknown miRNA-disease pairs. As a result, FCGCNMDA achieves AUC value of [Formula: see text] and AUPRC value of [Formula: see text] in HMDD v2.0 based on five-fold cross validation. Moreover, case studies on Lymphoma, Breast Neoplasms and Prostate Neoplasms shown that 98%, 98%, 98% of the top 50 selected miRNAs were validated by recent experimental evidence. From above results, we can deduce that FCGCNMDA can be regarded as reliable method for potential miRNA-disease associations prediction.

Entities:  

Keywords:  Deep learning; Fully connected graph; Graph convolutional networks; miRNA-disease association

Year:  2020        PMID: 32500265     DOI: 10.1007/s00438-020-01693-7

Source DB:  PubMed          Journal:  Mol Genet Genomics        ISSN: 1617-4623            Impact factor:   3.291


  5 in total

1.  DNRLCNN: A CNN Framework for Identifying MiRNA-Disease Associations Using Latent Feature Matrix Extraction with Positive Samples.

Authors:  Jiancheng Zhong; Wubin Zhou; Jiedong Kang; Zhuo Fang; Minzhu Xie; Qiu Xiao; Wei Peng
Journal:  Interdiscip Sci       Date:  2022-04-15       Impact factor: 2.233

2.  GCAEMDA: Predicting miRNA-disease associations via graph convolutional autoencoder.

Authors:  Lei Li; Yu-Tian Wang; Cun-Mei Ji; Chun-Hou Zheng; Jian-Cheng Ni; Yan-Sen Su
Journal:  PLoS Comput Biol       Date:  2021-12-10       Impact factor: 4.475

3.  Efficient framework for predicting MiRNA-disease associations based on improved hybrid collaborative filtering.

Authors:  Ru Nie; Zhengwei Li; Zhu-Hong You; Wenzheng Bao; Jiashu Li
Journal:  BMC Med Inform Decis Mak       Date:  2021-08-30       Impact factor: 2.796

4.  Computational method using heterogeneous graph convolutional network model combined with reinforcement layer for MiRNA-disease association prediction.

Authors:  Dan Huang; JiYong An; Lei Zhang; BaiLong Liu
Journal:  BMC Bioinformatics       Date:  2022-07-25       Impact factor: 3.307

5.  ANMDA: anti-noise based computational model for predicting potential miRNA-disease associations.

Authors:  Xue-Jun Chen; Xin-Yun Hua; Zhen-Ran Jiang
Journal:  BMC Bioinformatics       Date:  2021-07-02       Impact factor: 3.169

  5 in total

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