Deng Yuyou, Hong Xin, Yu Chengfan, Li Hui, Wang Qiang, Zhang Yi, Wang Tian, Wang Xiaofeng
Department of Urology, Peking University International Hospital, Beijing 102206, P.R. China.
Oncol Lett. 2021 May;21(5):344. doi: 10.3892/ol.2021.12605. Epub 2021 Mar 3.
Bladder cancer (BLCA) is a common malignancy of human urinary tract, whose prognosis is influenced by complex gene interactions. Immune response activity can act as a potential prognostic factor in BLCA. The present study established a prognostic model, based on the identification of tumor transcription factors (TFs) and immune-related genes (IRGs), and further explored their therapeutic potential in BLCA. The enrichment scores of 29 IRG sets, identified in The Cancer Genome Atlas BLCA tumor samples, were quantified by single-sample Gene Set Enrichment Analysis. The abundance of infiltrated immune cells in tumor tissues was determined using the Estimating Relative algorithm. Tumor-related TFs and IRGs signatures were retrieved using Least Absolute Shrinkage and Selection Operator Cox regression analysis. A prognostic gene network was built using Pearson's correlation analysis as a means of predicting the regulatory relationship between prognostic TFs and IRGs. A nomogram was devised to also predict the overall survival (OS) rate of patients with BLCA. Based on the Genomics of Drug Sensitivity in Cancer data, potential therapeutic drugs were identified upon analyzing the relationship between the expression level of prognostic genes and respective IC values. experiments were implemented for further validation. Respective TF binding profiles were acquired from the JASPAR 2020 database. The elevated infiltration of CD8 T Cells was correlated with an improved OS of patients with BLCA. An innovative prognostic model for BLCA was then constructed that composed of nine putative gene markers: , prepronociceptin, microtubule-associated protein tau, major histocompatibility class I polypeptide-related sequence B, prostaglandin E2 receptor EP3 subtype, , proepiregulin, early growth response protein 1 and FOS-related antigen 1 (). Furthermore, a theoretical basis for the correlation between the prognostic TFs and IRGs was reported. For this, 10 potentially effective drugs targeting the TFs in the present model for patients with BLCA were identified. It was then verified that downregulation of can lead to an enhanced sensitivity of the TW37 in T24 bladder cancer cells. Overall, the present prognostic model demonstrated a robust capability of predicting OS of patients with BLCA. Hence, the gene markers identified could be applied for targeted therapies against BLCA.
膀胱癌(BLCA)是人类泌尿系统常见的恶性肿瘤,其预后受复杂的基因相互作用影响。免疫反应活性可作为BLCA潜在的预后因素。本研究基于肿瘤转录因子(TFs)和免疫相关基因(IRGs)的鉴定建立了一个预后模型,并进一步探索了它们在BLCA中的治疗潜力。通过单样本基因集富集分析对在癌症基因组图谱BLCA肿瘤样本中鉴定出的29个IRG集的富集分数进行量化。使用估计相对算法确定肿瘤组织中浸润免疫细胞的丰度。使用最小绝对收缩和选择算子Cox回归分析检索肿瘤相关TFs和IRGs特征。使用Pearson相关分析构建预后基因网络,作为预测预后TFs和IRGs之间调控关系的一种手段。设计了一个列线图来预测BLCA患者的总生存率(OS)。基于癌症药物敏感性基因组学数据,通过分析预后基因的表达水平与各自IC值之间的关系,确定了潜在的治疗药物,并进行了实验以进一步验证。从JASPAR 2020数据库获取各自的TF结合图谱。CD8 T细胞浸润增加与BLCA患者OS改善相关。然后构建了一种创新的BLCA预后模型,该模型由九个推定的基因标记组成:前痛敏肽原、微管相关蛋白tau、主要组织相容性复合体I类多肽相关序列B、前列腺素E2受体EP3亚型、前上皮调节素、早期生长反应蛋白1和FOS相关抗原1(FRA1)。此外,还报道了预后TFs和IRGs之间相关性的理论基础。为此,确定了10种针对本模型中BLCA患者TFs的潜在有效药物。然后证实下调FRA1可导致T24膀胱癌细胞对TW37的敏感性增强。总体而言,本预后模型显示出强大的预测BLCA患者OS的能力。因此,鉴定出的基因标记可用于针对BLCA的靶向治疗。