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Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction

LncRNA and miRNA are two non-coding RNA types that are popular in current research. LncRNA interacts with miRNA to regulate gene transcription, further affecting human health and disease. Accurate identification of lncRNA–miRNA interactions contributes to the in-depth study of the biological functio...

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Detalles Bibliográficos
Autores principales: Fan, Yongxian, Cui, Juan, Zhu, QingQi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9050493/
https://www.ncbi.nlm.nih.gov/pubmed/35496629
http://dx.doi.org/10.1039/c9ra11043g
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author Fan, Yongxian
Cui, Juan
Zhu, QingQi
author_facet Fan, Yongxian
Cui, Juan
Zhu, QingQi
author_sort Fan, Yongxian
collection PubMed
description LncRNA and miRNA are two non-coding RNA types that are popular in current research. LncRNA interacts with miRNA to regulate gene transcription, further affecting human health and disease. Accurate identification of lncRNA–miRNA interactions contributes to the in-depth study of the biological functions and mechanisms of non-coding RNA. However, relying on biological experiments to obtain interaction information is time-consuming and expensive. Considering the rapid accumulation of gene information and the few computational methods, it is urgent to supplement the effective computational models to predict lncRNA–miRNA interactions. In this work, we propose a heterogeneous graph inference method based on similarity network fusion (SNFHGILMI) to predict potential lncRNA–miRNA interactions. First, we calculated multiple similarity data, including lncRNA sequence similarity, miRNA sequence similarity, lncRNA Gaussian nuclear similarity, and miRNA Gaussian nuclear similarity. Second, the similarity network fusion method was employed to integrate the data and get the similarity network of lncRNA and miRNA. Then, we constructed a bipartite network by combining the known interaction network and similarity network of lncRNA and miRNA. Finally, the heterogeneous graph inference method was introduced to construct a prediction model. On the real dataset, the model SNFHGILMI achieved AUC of 0.9501 and 0.9426 ± 0.0035 based on LOOCV and 5-fold cross validation, respectively. Furthermore, case studies also demonstrate that SNFHGILMI is a high-performance prediction method that can accurately predict new lncRNA–miRNA interactions. The Matlab code and readme file of SNFHGILMI can be downloaded from https://github.com/cj-DaSE/SNFHGILMI.
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spelling pubmed-90504932022-04-29 Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction Fan, Yongxian Cui, Juan Zhu, QingQi RSC Adv Chemistry LncRNA and miRNA are two non-coding RNA types that are popular in current research. LncRNA interacts with miRNA to regulate gene transcription, further affecting human health and disease. Accurate identification of lncRNA–miRNA interactions contributes to the in-depth study of the biological functions and mechanisms of non-coding RNA. However, relying on biological experiments to obtain interaction information is time-consuming and expensive. Considering the rapid accumulation of gene information and the few computational methods, it is urgent to supplement the effective computational models to predict lncRNA–miRNA interactions. In this work, we propose a heterogeneous graph inference method based on similarity network fusion (SNFHGILMI) to predict potential lncRNA–miRNA interactions. First, we calculated multiple similarity data, including lncRNA sequence similarity, miRNA sequence similarity, lncRNA Gaussian nuclear similarity, and miRNA Gaussian nuclear similarity. Second, the similarity network fusion method was employed to integrate the data and get the similarity network of lncRNA and miRNA. Then, we constructed a bipartite network by combining the known interaction network and similarity network of lncRNA and miRNA. Finally, the heterogeneous graph inference method was introduced to construct a prediction model. On the real dataset, the model SNFHGILMI achieved AUC of 0.9501 and 0.9426 ± 0.0035 based on LOOCV and 5-fold cross validation, respectively. Furthermore, case studies also demonstrate that SNFHGILMI is a high-performance prediction method that can accurately predict new lncRNA–miRNA interactions. The Matlab code and readme file of SNFHGILMI can be downloaded from https://github.com/cj-DaSE/SNFHGILMI. The Royal Society of Chemistry 2020-03-23 /pmc/articles/PMC9050493/ /pubmed/35496629 http://dx.doi.org/10.1039/c9ra11043g Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Fan, Yongxian
Cui, Juan
Zhu, QingQi
Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title_full Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title_fullStr Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title_full_unstemmed Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title_short Heterogeneous graph inference based on similarity network fusion for predicting lncRNA–miRNA interaction
title_sort heterogeneous graph inference based on similarity network fusion for predicting lncrna–mirna interaction
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9050493/
https://www.ncbi.nlm.nih.gov/pubmed/35496629
http://dx.doi.org/10.1039/c9ra11043g
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AT zhuqingqi heterogeneousgraphinferencebasedonsimilaritynetworkfusionforpredictinglncrnamirnainteraction