Xiangya International Medical Center, Department of Geriatrics, Xiangya Hospital, Central South University, Changsha, China.
Department of Urology, RWTH Aachen University, Pauwelsstrasse 30, 52072 Aachen, Germany.
Biomed Res Int. 2020 Jul 31;2020:7147824. doi: 10.1155/2020/7147824. eCollection 2020.
Though there are several prognostic models, there is no protein-related prognostic model. The aim of this study is to identify possible prognostic-related proteins in bladder urothelial carcinoma and to try to predict the prognosis of bladder urothelial carcinoma based on these proteins.
Profile data and corresponding clinical traits were obtained from The Cancer Proteome Atlas (TCPA) and The Cancer Genome Atlas (TCGA) expression. Survival-associated protein in bladder urothelial carcinoma patients were estimated with Kaplan-Meier (KM) test and COX regression analysis. The potential molecular mechanisms and properties of these bladder urothelial carcinoma-specific proteins were also explored with the help of computational skills. The risk score model was validated in different clinical traits. Sankey diagram representation is for protein correlation. A new prognostic-related risk model based on proteins was developed by using multivariable COX analysis. Next, the alteration of the corresponding genes to the 6 prognostic-related proteins was analyzed. Finally, the relation between the corresponding genes and the immune infiltration was analyzed using the TIMER.
Six proteins were identified to be associated with the prognosis of bladder urothelial carcinoma. A prognostic signature based on proteins (BECLIN, EGFR, PKCALPHA, SRC, ANNEXIN1, and AXL) performed moderately in prognostic predictions. The alteration of corresponding genes was in 31(24%) sequenced cases. ANXA1, AXL, and EGFR were positively related to CD8+ T cell.
Our results screened six proteins of clinical significance. The importance of a personalized protein signature model in the recognition, surveillance. The abnormal expression of six prognostic-related proteins may be caused by corresponding gene alteration. Furthermore, these proteins may affect survival via the immune infiltration.
尽管有几种预后模型,但没有与蛋白质相关的预后模型。本研究旨在鉴定膀胱癌中可能与预后相关的蛋白质,并尝试基于这些蛋白质来预测膀胱癌的预后。
从癌症蛋白质组图谱(TCPA)和癌症基因组图谱(TCGA)表达中获取了概况数据和相应的临床特征。使用 Kaplan-Meier(KM)检验和 COX 回归分析估计了膀胱癌患者中与生存相关的蛋白质。借助计算技能还探索了这些膀胱癌特异性蛋白质的潜在分子机制和特性。在不同的临床特征中验证了风险评分模型。Sankey 图表示蛋白质相关性。通过多变量 COX 分析开发了基于蛋白质的新的预后相关风险模型。接下来,分析了与 6 个预后相关蛋白对应的相应基因的改变。最后,使用 TIMER 分析了相应基因与免疫浸润之间的关系。
鉴定出 6 种与膀胱癌预后相关的蛋白质。基于蛋白质的预后特征(BECLIN、EGFR、PKCALPHA、SRC、ANXA1 和 AXL)在预后预测中表现中等。在 31 个(24%)测序病例中存在相应基因的改变。ANXA1、AXL 和 EGFR 与 CD8+T 细胞呈正相关。
我们的研究筛选出了具有临床意义的 6 种蛋白质。个性化蛋白质特征模型在识别、监测中的重要性。六个预后相关蛋白的异常表达可能是由相应基因改变引起的。此外,这些蛋白质可能通过免疫浸润影响生存。