Literature DB >> 32444875

Attentional multi-level representation encoding based on convolutional and variance autoencoders for lncRNA-disease association prediction.

Nan Sheng, Hui Cui, Tiangang Zhang, Ping Xuan.   

Abstract

As the abnormalities of long non-coding RNAs (lncRNAs) are closely related to various human diseases, identifying disease-related lncRNAs is important for understanding the pathogenesis of complex diseases. Most of current data-driven methods for disease-related lncRNA candidate prediction are based on diseases and lncRNAs. Those methods, however, fail to consider the deeply embedded node attributes of lncRNA-disease pairs, which contain multiple relations and representations across lncRNAs, diseases and miRNAs. Moreover, the low-dimensional feature distribution at the pairwise level has not been taken into account. We propose a prediction model, VADLP, to extract, encode and adaptively integrate multi-level representations. Firstly, a triple-layer heterogeneous graph is constructed with weighted inter-layer and intra-layer edges to integrate the similarities and correlations among lncRNAs, diseases and miRNAs. We then define three representations including node attributes, pairwise topology and feature distribution. Node attributes are derived from the graph by an embedding strategy to represent the lncRNA-disease associations, which are inferred via their common lncRNAs, diseases and miRNAs. Pairwise topology is formulated by random walk algorithm and encoded by a convolutional autoencoder to represent the hidden topological structural relations between a pair of lncRNA and disease. The new feature distribution is modeled by a variance autoencoder to reveal the underlying lncRNA-disease relationship. Finally, an attentional representation-level integration module is constructed to adaptively fuse the three representations for lncRNA-disease association prediction. The proposed model is tested over a public dataset with a comprehensive list of evaluations. Our model outperforms six state-of-the-art lncRNA-disease prediction models with statistical significance. The ablation study showed the important contributions of three representations. In particular, the improved recall rates under different top $k$ values demonstrate that our model is powerful in discovering true disease-related lncRNAs in the top-ranked candidates. Case studies of three cancers further proved the capacity of our model to discover potential disease-related lncRNAs.
© The Author(s) 2020. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.

Entities:  

Keywords:  convolutional and variance autoencoders; deep learning; lncRNA–disease association prediction; representation-level attention

Year:  2021        PMID: 32444875     DOI: 10.1093/bib/bbaa067

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  10 in total

1.  HBRWRLDA: predicting potential lncRNA-disease associations based on hypergraph bi-random walk with restart.

Authors:  Guobo Xie; Yinting Zhu; Zhiyi Lin; Yuping Sun; Guosheng Gu; Jianming Li; Weiming Wang
Journal:  Mol Genet Genomics       Date:  2022-06-25       Impact factor: 2.980

2.  Heterogeneous graph neural network for lncRNA-disease association prediction.

Authors:  Hong Shi; Xiaomeng Zhang; Lin Tang; Lin Liu
Journal:  Sci Rep       Date:  2022-10-20       Impact factor: 4.996

3.  Improving protein fold recognition using triplet network and ensemble deep learning.

Authors:  Yan Liu; Ke Han; Yi-Heng Zhu; Ying Zhang; Long-Chen Shen; Jiangning Song; Dong-Jun Yu
Journal:  Brief Bioinform       Date:  2021-11-05       Impact factor: 13.994

4.  A representation learning model based on variational inference and graph autoencoder for predicting lncRNA-disease associations.

Authors:  Zhuangwei Shi; Han Zhang; Chen Jin; Xiongwen Quan; Yanbin Yin
Journal:  BMC Bioinformatics       Date:  2021-03-21       Impact factor: 3.169

5.  Fusion of KATZ measure and space projection to fast probe potential lncRNA-disease associations in bipartite graphs.

Authors:  Yi Zhang; Min Chen; Li Huang; Xiaolan Xie; Xin Li; Hong Jin; Xiaohua Wang; Hanyan Wei
Journal:  PLoS One       Date:  2021-11-22       Impact factor: 3.240

6.  Finding Lung-Cancer-Related lncRNAs Based on Laplacian Regularized Least Squares With Unbalanced Bi-Random Walk.

Authors:  Zhifeng Guo; Yan Hui; Fanlong Kong; Xiaoxi Lin
Journal:  Front Genet       Date:  2022-07-22       Impact factor: 4.772

7.  lncRNA-disease association prediction based on matrix decomposition of elastic network and collaborative filtering.

Authors:  Bo Wang; RunJie Liu; XiaoDong Zheng; XiaoXin Du; ZhengFei Wang
Journal:  Sci Rep       Date:  2022-07-26       Impact factor: 4.996

8.  Comprehensive analysis of key genes and pathways for biological and clinical implications in thyroid-associated ophthalmopathy.

Authors:  Yueyue Wang; Yanfei Shao; Haitao Zhang; Jun Wang; Peng Zhang; Weizhong Zhang; Huanhuan Chen
Journal:  BMC Genomics       Date:  2022-09-02       Impact factor: 4.547

9.  Prediction of lncRNA-Disease Associations via Closest Node Weight Graphs of the Spatial Neighborhood Based on the Edge Attention Graph Convolutional Network.

Authors:  Jianwei Li; Mengfan Kong; Duanyang Wang; Zhenwu Yang; Xiaoke Hao
Journal:  Front Genet       Date:  2022-01-04       Impact factor: 4.599

Review 10.  Bioinformatics Analysis of Long Non-coding RNA and Related Diseases: An Overview.

Authors:  Yuxin Gong; Wen Zhu; Meili Sun; Lei Shi
Journal:  Front Genet       Date:  2021-12-08       Impact factor: 4.599

  10 in total

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