Department of Urology, The First Hospital of China Medical University, Shenyang, 110001, Liaoning Province, China.
Department of Laboratory Animal Science, China Medical University, Shenyang, 110122, China.
J Transl Med. 2021 May 13;19(1):205. doi: 10.1186/s12967-021-02865-8.
Currently, no molecular classification is established for bladder cancer based on metabolic characteristics. Therefore, we conducted a comprehensive analysis of bladder cancer metabolism-related genes using multiple publicly available datasets and aimed to identify subtypes according to distinctive metabolic characteristics.
RNA-sequencing data of The Cancer Genome Atlas were subjected to non-negative matrix fractionation to classify bladder cancer according to metabolism-related gene expression; Gene Expression Omnibus and ArrayExpress datasets were used as validation cohorts. The sensitivity of metabolic types to predicted immunotherapy and chemotherapy was assessed. Kaplan-Meier curves were plotted to assess patient survival. Differentially expressed genes between subtypes were identified using edgeR. The differences among identified subtypes were compared using the Kruskal-Wallis non-parametric test. To better clarify the subtypes of bladder cancer, their relationship with clinical characteristics was examined using the Fisher's test. We also constructed a risk prediction model using the random survival forest method to analyze right-censored survival data based on key metabolic genes. To identify genes of prognostic significance, univariate Cox regression, lasso analysis, and multivariate regression were performed sequentially.
Three bladder cancer subtypes were identified according to the expression of metabolism-related genes. The M1 subtype was characterized by high metabolic activity, low immunogenicity, and better prognosis. M2 exhibited moderate metabolic activity, high immunogenicity, and the worst prognosis. M3 was associated with low metabolic activity, low immunogenicity, and poor prognosis. M1 showed the best predicted response to immunotherapy, whereas patients with M1 were predicted to be the least sensitive to cisplatin. By contrast, M2 showed the worst predicted response to immunotherapy but was predicted to be more sensitive to cisplatin, doxorubicin, and other first-line anticancer drugs. M3 was the most sensitive to gemcitabine. The risk model based on metabolic genes effectively predicted the prognosis of bladder cancer patients.
Metabolic classification of bladder cancer has potential clinical value and therapeutic feasibility by inhibiting the associated pathways. This classification can provide valuable insights for developing precise bladder cancer treatment.
目前,尚无基于代谢特征的膀胱癌分子分类。因此,我们使用多个公开可用的数据集对膀胱癌代谢相关基因进行了全面分析,并旨在根据独特的代谢特征对其进行亚组分类。
使用非负矩阵分解对 TCGA 的 RNA 测序数据进行分类,根据代谢相关基因表达对膀胱癌进行分类;使用 GEO 和 ArrayExpress 数据集作为验证队列。评估代谢类型对预测免疫治疗和化疗的敏感性。绘制 Kaplan-Meier 曲线评估患者生存情况。使用 edgeR 鉴定不同亚型间的差异表达基因。使用 Kruskal-Wallis 非参数检验比较鉴定出的亚型之间的差异。使用 Fisher 检验研究亚型与临床特征的关系,以更好地阐明膀胱癌的亚型。还使用随机生存森林方法构建风险预测模型,根据关键代谢基因分析右删失生存数据。使用单因素 Cox 回归、lasso 分析和多因素回归依次进行基因预后分析。
根据代谢相关基因的表达,鉴定出三种膀胱癌亚型。M1 亚型的代谢活性高、免疫原性低、预后较好。M2 代谢活性中等、免疫原性高、预后最差。M3 与代谢活性低、免疫原性低、预后差有关。M1 对免疫治疗的预测反应最佳,而 M1 患者对顺铂的预测敏感性最低。相反,M2 对免疫治疗的预测反应最差,但预测对顺铂、阿霉素和其他一线抗癌药物更敏感。M3 对吉西他滨最敏感。基于代谢基因的风险模型可有效预测膀胱癌患者的预后。
通过抑制相关通路,膀胱癌的代谢分类具有潜在的临床价值和治疗可行性。这种分类可以为开发精确的膀胱癌治疗方法提供有价值的见解。