Analysis of Competitive Endogenous RNA Regulatory Network of Exosomal Breast Cancer Based on exoRBase.

Evolutionary Bioinformatics Online Pub Date : 2022-07-20 eCollection Date: 2022-01-01 DOI:10.1177/11769343221113286
Kangle Zhu, Qingqing Wang, Lian Wang
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Abstract

Objective: To construct a competitive endogenous RNA (ceRNA) regulatory network derived from exosomes of human breast cancer (BC) by using the exoRbase database, to explore the possible pathogenesis of BC, and to develop new targets for future diagnosis and treatment.

Methods: The exosomal gene sequencing data of BC patients and normal controls were downloaded from the exoRbase database, and the expression profiles of exosomal mRNA, long non-coding RNA (lncRNA), and circular RNA (circRNA) were analyzed by using R language. Use Targetscan and miRanda database to jointly predict and differentially express miRNA (microRNA), miRNA combined with mRNA. The miRcode database was used to predict the miRNA combined with differentially expressed lncRNA, and the starBase database was used to predict the miRNA combined with circRNA in the difference table. The related mRNA, circRNA, lncRNA, and their corresponding miRNA prediction data were imported into Cytoscape software to visualize the ceRNA network. Enrichment analysis and visualization of KEGG were carried out using KOBAS. Hub gene was determined by Cytohubba plug-in.

Results: Forty-two differentially expressed mRNA, 43 differentially expressed circRNA, and 26 differentially expressed lncRNA were screened out. The ceRNA network was constructed by using Cytoscape software, including 19 mRNA nodes, 2 lncRNA nodes, 8 circRNA nodes, and 41 miRNA nodes. KEGG enrichment analysis showed that differentially expressed mRNA in the regulatory network mainly enriched the p53 signaling pathway. Find the key Hub gene PTEN.

Conclusion: The ceRNA regulatory network in blood exosomes of BC patients has been successfully constructed in this study, which provides an exact target for the diagnosis and treatment of BC.

Abstract Image

Abstract Image

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基于exoRBase的外泌体乳腺癌竞争性内源性RNA调控网络分析。
目的:利用exoRbase数据库构建来自人乳腺癌(BC)外泌体的竞争性内源性RNA (ceRNA)调控网络,探讨BC可能的发病机制,为今后的诊断和治疗寻找新的靶点。方法:从exoRbase数据库下载BC患者和正常人的外泌体基因测序数据,采用R语言分析外泌体mRNA、长链非编码RNA (lncRNA)和环状RNA (circRNA)的表达谱。使用Targetscan和miRanda数据库联合预测和差异表达miRNA (microRNA), miRNA与mRNA联合表达。使用miRcode数据库预测与差异表达lncRNA结合的miRNA,使用starBase数据库预测差异表中与circRNA结合的miRNA。将相关的mRNA、circRNA、lncRNA及其相应的miRNA预测数据导入Cytoscape软件,可视化ceRNA网络。利用KOBAS对KEGG进行富集分析和可视化。Hub基因由Cytohubba插件测定。结果:共筛选出42个差异mRNA, 43个差异circRNA, 26个差异lncRNA。利用Cytoscape软件构建ceRNA网络,包括19个mRNA节点、2个lncRNA节点、8个circRNA节点和41个miRNA节点。KEGG富集分析显示,调控网络中差异表达的mRNA主要富集p53信号通路。找到关键枢纽基因PTEN。结论:本研究成功构建了BC患者血液外泌体ceRNA调控网络,为BC的诊断和治疗提供了准确的靶点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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