Abstract

BackgroundMicroRNAs (miRNAs) are involved in many biological processes by regulating post-transcriptional gene expression. The alterations of the regulatory pathways can cause different diseases including cancer. Although many works have been done to study the gene-miRNA regulatory network, the intertwined relationship is far from being fully understood. The objective of this study is to integrate both gene expression data and miRNA data so as to explore the complex relationships among them.MethodsBy integrating the networks consisting of gene coexpression, miRNA coexpression, gene-miRNA coexpression, and the known gene-miRNA interactions, we aim to find the most connected network modules so as to study their functions and properties. In this paper, we proposed an optimization model for identification of the modules in the integrated networks. This model tries to find both the modules in the gene-gene and miRNA-miRNA coexpression networks and the densely connected gene-miRNA subneworks. An approximation computational method was developed to solve the optimization problem.ResultsWe applied the method to 556 human ovarian cancer samples with both gene expression data and miRNA expression data. The identified modules are significantly enriched by miRNA clusters, GO-BPs, and KEGG pathways. We compared our method with some existing methods and showed the better performance of our method. We also showed that the miRNAs and genes in our identified modules are associated with cancers, especially ovarian cancer.ConclusionsThis study provides strong support that the subnetworks consisting of genes and miRNAs with close interactions contribute the cancers. The proposed computational method can be applied to other studies that are related to different types of networks.Electronic supplementary materialThe online version of this article (doi:10.1186/s12918-016-0357-1) contains supplementary material, which is available to authorized users.

Highlights

  • MicroRNAs are involved in many biological processes by regulating post-transcriptional gene expression

  • By taking the cutoff of the Benjamini p-values as 0.05, 15 modules are enriched by Gene Ontology biological process (GO-BP) terms and 7 modules are enriched by KEGG pathways significantly

  • There are 295 different miRNAs related to cancer, of which 122 are in our identified modules. 57 of the 295 miRNAs are related to ovarian cancer, of which 29 are in our identified modules, which achieves a p-value 0.0386. This suggests that the modules we identified are related to ovarian cancer significantly

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Summary

Introduction

MicroRNAs (miRNAs) are involved in many biological processes by regulating post-transcriptional gene expression. The alterations of the regulatory pathways can cause different diseases including cancer. Many works have been done to study the gene-miRNA regulatory network, the intertwined relationship is far from being fully understood. The objective of this study is to integrate both gene expression data and miRNA data so as to explore the complex relationships among them. MicroRNAs (miRNAs) are small (’22 nucleotides) noncoding RNAs that have emerged as key gene regulators in diverse plant and animal genomes. The alterations in the regulatory pathways can cause different diseases, including cancer, heart disease, cardiovascular disease, and matabolc disorders [8,9,10,11,12,13]. Identification and validation of miRNA targets is essential, which may lead to new therapeutic methods [6, 14,15,16]

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