Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction

Abnormal miRNA functions are widely involved in many diseases recorded in the database of experimentally supported human miRNA-disease associations (HMDD). Some of the associations are complicated: There can be up to five heterogeneous association types of miRNA with the same disease, including gene...

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Main Authors: Dong-Ling Yu, Zu-Guo Yu, Guo-Sheng Han, Jinyan Li, Vo Anh
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Biomedicines
Subjects:
Online Access:https://www.mdpi.com/2227-9059/9/9/1152
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spelling doaj-a0ea1be3004c48f285ce36a25abdf25a2021-09-25T23:46:29ZengMDPI AGBiomedicines2227-90592021-09-0191152115210.3390/biomedicines9091152Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and PredictionDong-Ling Yu0Zu-Guo Yu1Guo-Sheng Han2Jinyan Li3Vo Anh4Key Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University, Xiangtan 411105, ChinaKey Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University, Xiangtan 411105, ChinaKey Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University, Xiangtan 411105, ChinaData Science Institute, University of Technology Sydney, Broadway, NSW 2007, AustraliaFaculty of Science, Engineering and Technology, Swinburne University of Technology, Hawthorn, VIC 3122, AustraliaAbnormal miRNA functions are widely involved in many diseases recorded in the database of experimentally supported human miRNA-disease associations (HMDD). Some of the associations are complicated: There can be up to five heterogeneous association types of miRNA with the same disease, including genetics type, epigenetics type, circulating miRNAs type, miRNA tissue expression type and miRNA-target interaction type. When one type of association is known for an miRNA-disease pair, it is important to predict any other types of the association for a better understanding of the disease mechanism. It is even more important to reveal associations for currently unassociated miRNAs and diseases. Methods have been recently proposed to make predictions on the association types of miRNA-disease pairs through restricted Boltzman machines, label propagation theories and tensor completion algorithms. None of them has exploited the non-linear characteristics in the miRNA-disease association network to improve the performance. We propose to use attributed multi-layer heterogeneous network embedding to learn the latent representations of miRNAs and diseases from each association type and then to predict the existence of the association type for all the miRNA-disease pairs. The performance of our method is compared with two newest methods via 10-fold cross-validation on the database HMDD v3.2 to demonstrate the superior prediction achieved by our method under different settings. Moreover, our real predictions made beyond the HMDD database can be all validated by NCBI literatures, confirming that our method is capable of accurately predicting new associations of miRNAs with diseases and their association types as well.https://www.mdpi.com/2227-9059/9/9/1152miRNA-diseaseheterogeneous association typesattributed multi-layer heterogeneous network embeddingNode2vec
collection DOAJ
language English
format Article
sources DOAJ
author Dong-Ling Yu
Zu-Guo Yu
Guo-Sheng Han
Jinyan Li
Vo Anh
spellingShingle Dong-Ling Yu
Zu-Guo Yu
Guo-Sheng Han
Jinyan Li
Vo Anh
Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
Biomedicines
miRNA-disease
heterogeneous association types
attributed multi-layer heterogeneous network embedding
Node2vec
author_facet Dong-Ling Yu
Zu-Guo Yu
Guo-Sheng Han
Jinyan Li
Vo Anh
author_sort Dong-Ling Yu
title Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
title_short Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
title_full Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
title_fullStr Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
title_full_unstemmed Heterogeneous Types of miRNA-Disease Associations Stratified by Multi-Layer Network Embedding and Prediction
title_sort heterogeneous types of mirna-disease associations stratified by multi-layer network embedding and prediction
publisher MDPI AG
series Biomedicines
issn 2227-9059
publishDate 2021-09-01
description Abnormal miRNA functions are widely involved in many diseases recorded in the database of experimentally supported human miRNA-disease associations (HMDD). Some of the associations are complicated: There can be up to five heterogeneous association types of miRNA with the same disease, including genetics type, epigenetics type, circulating miRNAs type, miRNA tissue expression type and miRNA-target interaction type. When one type of association is known for an miRNA-disease pair, it is important to predict any other types of the association for a better understanding of the disease mechanism. It is even more important to reveal associations for currently unassociated miRNAs and diseases. Methods have been recently proposed to make predictions on the association types of miRNA-disease pairs through restricted Boltzman machines, label propagation theories and tensor completion algorithms. None of them has exploited the non-linear characteristics in the miRNA-disease association network to improve the performance. We propose to use attributed multi-layer heterogeneous network embedding to learn the latent representations of miRNAs and diseases from each association type and then to predict the existence of the association type for all the miRNA-disease pairs. The performance of our method is compared with two newest methods via 10-fold cross-validation on the database HMDD v3.2 to demonstrate the superior prediction achieved by our method under different settings. Moreover, our real predictions made beyond the HMDD database can be all validated by NCBI literatures, confirming that our method is capable of accurately predicting new associations of miRNAs with diseases and their association types as well.
topic miRNA-disease
heterogeneous association types
attributed multi-layer heterogeneous network embedding
Node2vec
url https://www.mdpi.com/2227-9059/9/9/1152
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