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首页> 外文期刊>BMC Cancer >Identification of a tumor microenvironment-related seven-gene signature for predicting prognosis in bladder cancer
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Identification of a tumor microenvironment-related seven-gene signature for predicting prognosis in bladder cancer

机译:鉴定肿瘤微环境相关的七基因签名,以预测膀胱癌预后

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摘要

Accumulating evidences demonstrated tumor microenvironment (TME) of bladder cancer (BLCA) may play a pivotal role in modulating tumorigenesis, progression, and alteration of biological features. Currently we aimed to establish a prognostic model based on TME-related gene expression for guiding clinical management of BLCA. We employed ESTIMATE algorithm to evaluate TME cell infiltration in BLCA. The RNA-Seq data from The Cancer Genome Atlas (TCGA) database was used to screen out differentially expressed genes (DEGs). Underlying relationship between co-expression modules and TME was investigated via Weighted gene co-expression network analysis (WGCNA). COX regression and the least absolute shrinkage and selection operator (LASSO) analysis were applied for screening prognostic hub gene and establishing a risk predictive model. BLCA specimens and adjacent tissues from patients were obtained from patients. Bladder cancer (T24, EJ-m3) and bladder uroepithelial cell line (SVHUC1) were used for genes validation. qRT-PCR was employed to validate genes mRNA level in tissues and cell lines. 365 BLCA samples and 19 adjacent normal samples were selected for identifying DEGs. 2141 DEGs were identified and used to construct co-expression network. Four modules (magenta, brown, yellow, purple) were regarded as TME regulatory modules through WGCNA and GO analysis. Furthermore, seven hub genes (ACAP1, ADAMTS9, TAP1, IFIT3, FBN1, FSTL1, COL6A2) were screened out to establish a risk predictive model via COX and LASSO regression. Survival analysis and ROC curve analysis indicated our predictive model had good performance on evaluating patients prognosis in different subgroup of BLCA. qRT-PCR result showed upregulation of ACAP1, IFIT3, TAP1 and downregulation of ADAMTS9, COL6A2, FSTL1,FBN1 in BLCA specimens and cell lines. Our study firstly integrated multiple TME-related genes to set up a risk predictive model. This model could accurately predict BLCA progression and prognosis, which offers clinical implication for risk stratification, immunotherapy drug screen and therapeutic decision.
机译:积累证据显示膀胱癌(BLCA)的肿瘤微环境(TME)可能在调节肿瘤发生,进展和改变生物学特征时发挥枢转作用。目前,我们旨在建立基于TME相关基因表达的预后模型,用于指导BLCA的临床管理。我们使用估计算法评估BLCA中的TME细胞浸润。来自癌症基因组Atlas(TCGA)数据库的RNA-SEQ数据用于筛分差异表达的基因(DEGS)。通过加权基因共表达网络分析(WGCNA)研究了共表达模块和TME之间的基础关系。 Cox回归和最低绝对收缩和选择操作员(套索)分析用于筛查预后枢纽基因并建立风险预测模型。来自患者的BLCA样本和邻近的组织是从患者获得的。膀胱癌(T24,EJ-M3)和膀胱癌细胞系(SVHUC1)用于基因验证。 QRT-PCR用于验证组织和细胞系中的基因mRNA水平。选择365个BLCA样品和19个相邻的正常样品用于识别次数。识别并用于构建共表达网络2141°。通过WGCNA被视为TME调节模块的四个模块(洋红色,棕色,黄色,紫色)并进行分析。此外,筛选出七个集线基因(ACAP1,ADAMTS9,TAP1,IFIT3,FBN1,FSTL1,COL6A2),以通过COX和套索回归建立风险预测模型。生存分析和ROC曲线分析表明,我们的预测模型对评估BLCA不同亚组的患者预后的性能良好。 QRT-PCR结果显示ACAP1,IFIT3,TAP1和ADAMTS9,COL6A2,FSTL1,FBN1的下调的UPAP1,IFIT3,TAP1和下调。我们的研究首先综合了多种TME相关基因来建立风险预测模型。该模型可以准确地预测BLCA进展和预后,为风险分层,免疫疗法药物筛选和治疗决策提供临床意义。

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