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Comprehensive analysis of ceRNA network related to lincRNA in glioblastoma and prediction of clinical prognosis

机译:与胶质母细胞瘤的临床网络相关的Cerna网络综合分析及临床预后预测

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Abstract Background Long intergenic non-coding RNAs (lincRNAs) are capable of regulating several tumours, while competitive endogenous RNA (ceRNA) networks are of great significance in revealing the biological mechanism of tumours. Here, we aimed to study the ceRNA network of lincRNA in glioblastoma (GBM). Methods We obtained GBM and normal brain tissue samples from TCGA, GTEx, and GEO databases, and performed weighted gene co-expression network analysis and differential expression analysis on all lincRNA and mRNA data. Subsequently, we predicted the interaction between lincRNAs, miRNAs, and target mRNAs. Univariate and multivariate Cox regression analyses were performed on the mRNAs using CGGA data, and a Cox proportional hazards regression model was constructed. The ceRNA network was further screened by the DEmiRNA and mRNA of Cox model. Results A prognostic prediction model was constructed for patients with GBM. We assembled a ceRNA network consisting of 18 lincRNAs, 6 miRNAs, and 8 mRNAs. Gene Set Enrichment Analysis was carried out on four lincRNAs with obvious differential expressions and relatively few studies in GBM. Conclusion We identified four lincRNAs that have research value for GBM and obtained the ceRNA network. Our research is expected to facilitate in-depth understanding and study of the molecular mechanism of GBM, and provide new insights into targeted therapy and prognosis of the tumour.
机译:摘要背景长的血管基因非编码RNA(Lincrna)能够调节几种肿瘤,而竞争内源性RNA(Cerna)网络在揭示肿瘤的生物学机制方面具有重要意义。在这里,我们旨在研究胶质母细胞瘤(GBM)中的Cerna网络。方法我们从TCGA,GTEX和Geo数据库获得GBM和正常脑组织样本,对所有LinCrNA和mRNA数据进行加权基因共表达网络分析和差异表达分析。随后,我们预测了Lincrnas,MiRNA和靶MRNA之间的相互作用。使用CGGA数据对MRNA进行单变量和多变量COX回归分析,构建了COX比例危险回归模型。 COX模型的DEMIRNA和MRNA进一步筛选了CERNA网络。结果为GBM患者构建了预后预测模型。我们组装了由18个Lincrnas,6 MiRNA和8 MRNA组成的Cerna网络。基因设定浓缩分析在四个Lincrnas进行了明显的差异表达,并且在GBM中的研究相对较少。结论我们确定了四种Lincrnas,具有GBM的研究价值并获得了Cerna网络。我们的研究预计将促进对GBM的分子机制的深入理解和研究,并为肿瘤的靶向治疗和预后提供新的见解。

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