Department of Urology, Beijing Chaoyang Hospital, Capital Medical University, 8 Gong Ti Nan Road, Chaoyang District, Beijing, 100020, China.
Sci Rep. 2024 Jun 23;14(1):14431. doi: 10.1038/s41598-024-65198-8.
Immunotherapy based on immune checkpoint genes (ICGs) has recently made significant progress in the treatment of bladder cancer patients, but many patients still cannot benefit from it. In the present study, we aimed to perform a comprehensive analysis of ICGs in bladder cancer tissues with the aim of evaluating patient responsiveness to immunotherapy and prognosis. We scored ICGs in each BLCA patient from TCGA and GEO databases by using ssGSEA and selected genes that were significantly associated with ICGs scores by using the WCGNA algorithm. NMF clustering analysis was performed to identify different bladder cancer molecular subtypes based on the expression of ICGs-related genes. Based on the immune related genes differentially expressed among subgroups, we further constructed a novel stratified model containing nine genes by uni-COX regression, LASSO regression, SVM algorithm and multi-COX regression. The model and the nomogram constructed based on the model can accurately predict the prognosis of bladder cancer patients. Besides, the patients classified based on this model have large differences in sensitivity to immunotherapy and chemotherapy, which can provide a reference for individualized treatment of bladder cancer.
免疫检查点基因(ICGs)为基础的免疫疗法最近在膀胱癌患者的治疗中取得了重大进展,但仍有许多患者无法从中获益。在本研究中,我们旨在对膀胱癌组织中的 ICGs 进行全面分析,目的是评估患者对免疫治疗的反应和预后。我们通过 ssGSEA 在 TCGA 和 GEO 数据库中的每个 BLCA 患者中对 ICGs 进行评分,并使用 WCGNA 算法选择与 ICGs 评分显著相关的基因。基于与 ICGs 相关基因的表达,进行 NMF 聚类分析以识别不同的膀胱癌分子亚型。基于亚组间差异表达的免疫相关基因,我们进一步通过单因素 COX 回归、LASSO 回归、SVM 算法和多因素 COX 回归构建了一个包含 9 个基因的新型分层模型。基于该模型构建的模型和列线图可以准确预测膀胱癌患者的预后。此外,基于该模型进行分类的患者对免疫治疗和化疗的敏感性存在较大差异,这可为膀胱癌的个体化治疗提供参考。