Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks
Identification of disease-associated miRNAs (disease miRNAs) are critical for understanding etiology and pathogenesis. Most previous methods focus on integrating similarities and associating information contained in heterogeneous miRNA-disease networks. However, these methods establish only shallow...
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doaj-8025e0f237834843a3c9195aa86106812020-11-25T02:45:27ZengMDPI AGInternational Journal of Molecular Sciences1422-00672019-07-012015364810.3390/ijms20153648ijms20153648Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural NetworksPing Xuan0Hao Sun1Xiao Wang2Tiangang Zhang3Shuxiang Pan4School of Computer Science and Technology, Heilongjiang University, Harbin 150080, ChinaSchool of Computer Science and Technology, Heilongjiang University, Harbin 150080, ChinaSchool of Computer Science, Beijing University of Posts and Telecommunications, Beijing 100876, ChinaSchool of Mathematical Science, Heilongjiang University, Harbin 150080, ChinaSchool of Computer Science and Technology, Heilongjiang University, Harbin 150080, ChinaIdentification of disease-associated miRNAs (disease miRNAs) are critical for understanding etiology and pathogenesis. Most previous methods focus on integrating similarities and associating information contained in heterogeneous miRNA-disease networks. However, these methods establish only shallow prediction models that fail to capture complex relationships among miRNA similarities, disease similarities, and miRNA-disease associations. We propose a prediction method on the basis of network representation learning and convolutional neural networks to predict disease miRNAs, called CNNMDA. CNNMDA deeply integrates the similarity information of miRNAs and diseases, miRNA-disease associations, and representations of miRNAs and diseases in low-dimensional feature space. The new framework based on deep learning was built to learn the original and global representation of a miRNA-disease pair. First, diverse biological premises about miRNAs and diseases were combined to construct the embedding layer in the left part of the framework, from a biological perspective. Second, the various connection edges in the miRNA-disease network, such as similarity and association connections, were dependent on each other. Therefore, it was necessary to learn the low-dimensional representations of the miRNA and disease nodes based on the entire network. The right part of the framework learnt the low-dimensional representation of each miRNA and disease node based on non-negative matrix factorization, and these representations were used to establish the corresponding embedding layer. Finally, the left and right embedding layers went through convolutional modules to deeply learn the complex and non-linear relationships among the similarities and associations between miRNAs and diseases. Experimental results based on cross validation indicated that CNNMDA yields superior performance compared to several state-of-the-art methods. Furthermore, case studies on lung, breast, and pancreatic neoplasms demonstrated the powerful ability of CNNMDA to discover potential disease miRNAs.https://www.mdpi.com/1422-0067/20/15/3648disease-associated miRNAsnetwork representation learningconvolutional neural networknon-negative matrix factorizationdeep learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ping Xuan Hao Sun Xiao Wang Tiangang Zhang Shuxiang Pan |
spellingShingle |
Ping Xuan Hao Sun Xiao Wang Tiangang Zhang Shuxiang Pan Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks International Journal of Molecular Sciences disease-associated miRNAs network representation learning convolutional neural network non-negative matrix factorization deep learning |
author_facet |
Ping Xuan Hao Sun Xiao Wang Tiangang Zhang Shuxiang Pan |
author_sort |
Ping Xuan |
title |
Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks |
title_short |
Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks |
title_full |
Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks |
title_fullStr |
Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks |
title_full_unstemmed |
Inferring the Disease-Associated miRNAs Based on Network Representation Learning and Convolutional Neural Networks |
title_sort |
inferring the disease-associated mirnas based on network representation learning and convolutional neural networks |
publisher |
MDPI AG |
series |
International Journal of Molecular Sciences |
issn |
1422-0067 |
publishDate |
2019-07-01 |
description |
Identification of disease-associated miRNAs (disease miRNAs) are critical for understanding etiology and pathogenesis. Most previous methods focus on integrating similarities and associating information contained in heterogeneous miRNA-disease networks. However, these methods establish only shallow prediction models that fail to capture complex relationships among miRNA similarities, disease similarities, and miRNA-disease associations. We propose a prediction method on the basis of network representation learning and convolutional neural networks to predict disease miRNAs, called CNNMDA. CNNMDA deeply integrates the similarity information of miRNAs and diseases, miRNA-disease associations, and representations of miRNAs and diseases in low-dimensional feature space. The new framework based on deep learning was built to learn the original and global representation of a miRNA-disease pair. First, diverse biological premises about miRNAs and diseases were combined to construct the embedding layer in the left part of the framework, from a biological perspective. Second, the various connection edges in the miRNA-disease network, such as similarity and association connections, were dependent on each other. Therefore, it was necessary to learn the low-dimensional representations of the miRNA and disease nodes based on the entire network. The right part of the framework learnt the low-dimensional representation of each miRNA and disease node based on non-negative matrix factorization, and these representations were used to establish the corresponding embedding layer. Finally, the left and right embedding layers went through convolutional modules to deeply learn the complex and non-linear relationships among the similarities and associations between miRNAs and diseases. Experimental results based on cross validation indicated that CNNMDA yields superior performance compared to several state-of-the-art methods. Furthermore, case studies on lung, breast, and pancreatic neoplasms demonstrated the powerful ability of CNNMDA to discover potential disease miRNAs. |
topic |
disease-associated miRNAs network representation learning convolutional neural network non-negative matrix factorization deep learning |
url |
https://www.mdpi.com/1422-0067/20/15/3648 |
work_keys_str_mv |
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