Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.

BACKGROUND:Identifying cancer subtypes is an important component of the personalised medicine framework. An increasing number of computational methods have been developed to identify cancer subtypes. However, existing methods rarely use information from gene regulatory networks to facilitate the sub...

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Main Authors: Taosheng Xu, Thuc Duy Le, Lin Liu, Rujing Wang, Bingyu Sun, Jiuyong Li
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4818025?pdf=render
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author Taosheng Xu
Thuc Duy Le
Lin Liu
Rujing Wang
Bingyu Sun
Jiuyong Li
author_facet Taosheng Xu
Thuc Duy Le
Lin Liu
Rujing Wang
Bingyu Sun
Jiuyong Li
author_sort Taosheng Xu
collection DOAJ
description BACKGROUND:Identifying cancer subtypes is an important component of the personalised medicine framework. An increasing number of computational methods have been developed to identify cancer subtypes. However, existing methods rarely use information from gene regulatory networks to facilitate the subtype identification. It is widely accepted that gene regulatory networks play crucial roles in understanding the mechanisms of diseases. Different cancer subtypes are likely caused by different regulatory mechanisms. Therefore, there are great opportunities for developing methods that can utilise network information in identifying cancer subtypes. RESULTS:In this paper, we propose a method, weighted similarity network fusion (WSNF), to utilise the information in the complex miRNA-TF-mRNA regulatory network in identifying cancer subtypes. We firstly build the regulatory network where the nodes represent the features, i.e. the microRNAs (miRNAs), transcription factors (TFs) and messenger RNAs (mRNAs) and the edges indicate the interactions between the features. The interactions are retrieved from various interatomic databases. We then use the network information and the expression data of the miRNAs, TFs and mRNAs to calculate the weight of the features, representing the level of importance of the features. The feature weight is then integrated into a network fusion approach to cluster the samples (patients) and thus to identify cancer subtypes. We applied our method to the TCGA breast invasive carcinoma (BRCA) and glioblastoma multiforme (GBM) datasets. The experimental results show that WSNF performs better than the other commonly used computational methods, and the information from miRNA-TF-mRNA regulatory network contributes to the performance improvement. The WSNF method successfully identified five breast cancer subtypes and three GBM subtypes which show significantly different survival patterns. We observed that the expression patterns of the features in some miRNA-TF-mRNA sub-networks vary across different identified subtypes. In addition, pathway enrichment analyses show that the top pathways involving the most differentially expressed genes in each of the identified subtypes are different. The results would provide valuable information for understanding the mechanisms characterising different cancer subtypes and assist the design of treatment therapies. All datasets and the R scripts to reproduce the results are available online at the website: http://nugget.unisa.edu.au/Thuc/cancersubtypes/.
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spelling doaj.art-28e9c9d380944113943831f61612e5952022-12-21T22:45:11ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01114e015279210.1371/journal.pone.0152792Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.Taosheng XuThuc Duy LeLin LiuRujing WangBingyu SunJiuyong LiBACKGROUND:Identifying cancer subtypes is an important component of the personalised medicine framework. An increasing number of computational methods have been developed to identify cancer subtypes. However, existing methods rarely use information from gene regulatory networks to facilitate the subtype identification. It is widely accepted that gene regulatory networks play crucial roles in understanding the mechanisms of diseases. Different cancer subtypes are likely caused by different regulatory mechanisms. Therefore, there are great opportunities for developing methods that can utilise network information in identifying cancer subtypes. RESULTS:In this paper, we propose a method, weighted similarity network fusion (WSNF), to utilise the information in the complex miRNA-TF-mRNA regulatory network in identifying cancer subtypes. We firstly build the regulatory network where the nodes represent the features, i.e. the microRNAs (miRNAs), transcription factors (TFs) and messenger RNAs (mRNAs) and the edges indicate the interactions between the features. The interactions are retrieved from various interatomic databases. We then use the network information and the expression data of the miRNAs, TFs and mRNAs to calculate the weight of the features, representing the level of importance of the features. The feature weight is then integrated into a network fusion approach to cluster the samples (patients) and thus to identify cancer subtypes. We applied our method to the TCGA breast invasive carcinoma (BRCA) and glioblastoma multiforme (GBM) datasets. The experimental results show that WSNF performs better than the other commonly used computational methods, and the information from miRNA-TF-mRNA regulatory network contributes to the performance improvement. The WSNF method successfully identified five breast cancer subtypes and three GBM subtypes which show significantly different survival patterns. We observed that the expression patterns of the features in some miRNA-TF-mRNA sub-networks vary across different identified subtypes. In addition, pathway enrichment analyses show that the top pathways involving the most differentially expressed genes in each of the identified subtypes are different. The results would provide valuable information for understanding the mechanisms characterising different cancer subtypes and assist the design of treatment therapies. All datasets and the R scripts to reproduce the results are available online at the website: http://nugget.unisa.edu.au/Thuc/cancersubtypes/.http://europepmc.org/articles/PMC4818025?pdf=render
spellingShingle Taosheng Xu
Thuc Duy Le
Lin Liu
Rujing Wang
Bingyu Sun
Jiuyong Li
Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
PLoS ONE
title Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
title_full Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
title_fullStr Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
title_full_unstemmed Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
title_short Identifying Cancer Subtypes from miRNA-TF-mRNA Regulatory Networks and Expression Data.
title_sort identifying cancer subtypes from mirna tf mrna regulatory networks and expression data
url http://europepmc.org/articles/PMC4818025?pdf=render
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