Abstract

Breast cancer is one of the most common malignant tumors in women, which seriously endangers women’s health. Great advances have been made over the last decades, however, most studies predict driver genes of breast cancer using biological experiments and/or computational methods, regardless of stage information. In this study, we propose a computational framework to predict the disease genes of breast cancer based on stage-specific gene regulatory networks. Firstly, we screen out differentially expressed genes and hypomethylated/hypermethylated genes by comparing tumor samples with corresponding normal samples. Secondly, we construct three stage-specific gene regulatory networks by integrating RNA-seq profiles and TF-target pairs, and apply WGCNA to detect modules from these networks. Subsequently, we perform network topological analysis and gene set enrichment analysis. Finally, the key genes of specific modules for each stage are screened as candidate disease genes. We obtain seven stage-specific modules, and identify 20, 12, and 22 key genes for three stages, respectively. Furthermore, 55%, 83%, and 64% of the genes are associated with breast cancer, for example E2F2, E2F8, TPX2, BUB1, and CKAP2L. So it may be of great importance for further verification by cancer experts.

Highlights

  • Breast cancer is one of the most common malignant tumors in women, and it is the main disease factor that causes cancer deaths in women worldwide

  • We propose a computational framework to predict candidate stage-specific disease genes of breast cancer based on the stage-specific gene regulatory networks

  • We filter out the transcription factors (TFs)-target gene pairs whose target genes are not differentially expressed genes and hypermethylated/hypomethylated genes, and use the Pearson Correlation Coefficient (PCC) cut-off 0.5 to construct stage-specific gene regulatory networks

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Summary

Introduction

Breast cancer is one of the most common malignant tumors in women, and it is the main disease factor that causes cancer deaths in women worldwide. According to statistics (Siegel et al, 2021), breast cancer accounts for 30% of female cancers. In China, breast cancer incidence has two peaks: one is 45–55 years old, and the other is 70–74 years old. From the perspective of age distribution, the incidence of breast cancer gradually increases from the age of 30, and reaches a peak at the age of 55. Cancer cells would metastasize far away, which causes multiple organ diseases, which seriously threatens the lives of patients. The current disease genes for breast cancer diagnosis and treatment are far from enough, and it is important to find new candidate disease genes

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