Pan Xinyu, Chen Huili, Zhang Linxiang, Xie Yiluo, Zhang Kai, Lian Chaoqun, Wang Xiaojing
Anhui Province Key Laboratory of Clinical and Preclinical Research in Respiratory Disease, The Department of Pulmonary Critical Care Medicine, First Affiliated Hospital of Bengbu Medical University, Bengbu, 233030, China.
Department of Medical Imaging, Bengbu Medical University, Bengbu 233030, China.
J Cancer. 2024 Aug 13;15(16):5165-5182. doi: 10.7150/jca.98659. eCollection 2024.
Studies on immunogenic death (ICD) in lung adenocarcinoma are limited, and this study aimed to determine the function of ICD in LUAD and to construct a novel ICD-based prognostic model to improve immune efficacy in lung adenocarcinoma patients. The data for lung adenocarcinoma were obtained from the Cancer Genome Atlas (TCGA) database and the National Center for Biotechnology Information (GEO). The single-cell data were obtained from Bischoff P et al. To identify subpopulations, we performed descending clustering using TSNE. We collected sets of genes related to immunogenic death from the literature and identified ICD-related genes through gene set analysis of variance (GSVA) and weighted gene correlation network analysis (WGCNA). Lung adenocarcinoma patients were classified into two types using consistency clustering. The difference between the two types was analyzed to obtain differential genes. An immunogenic death model (ICDRS) was established using LASSO-Cox analysis and compared with lung adenocarcinoma models of other individuals. External validation was performed in the GSE31210 and GSE50081 cohorts. The efficacy of immunotherapy was assessed using the TIDE algorithm and the IMvigor210, GSE78220, and TCIA cohorts. Furthermore, differences in mutational profiles and immune microenvironment between different risk groups were investigated. Subsequently, ROC diagnostic curves and KM survival curves were used to screen ICDRS key regulatory genes. Finally, RT-qPCR was used to verify the differential expression of these genes. Eight ICD genes were found to be highly predictive of LUAD prognosis and significantly correlated with it. Multivariate analysis showed that patients in the low-risk group had a higher overall survival rate than those in the high-risk group, indicating that the model was an independent predictor of LUAD. Additionally, ICDRS demonstrated better predictive ability compared to 11 previously published models. Furthermore, significant differences in biological function and immune cell infiltration were observed in the tumor microenvironment between the high-risk and low-risk groups. It is noteworthy that immunotherapy was also significant in both groups. These findings suggest that the model has good predictive efficacy. The ICD model demonstrated good predictive performance, revealing the tumor microenvironment and providing a new method for evaluating the efficacy of pre-immunization. This offers a new strategy for future treatment of lung adenocarcinoma.
关于肺腺癌免疫原性细胞死亡(ICD)的研究有限,本研究旨在确定ICD在肺腺癌中的作用,并构建一种基于ICD的新型预后模型,以提高肺腺癌患者的免疫疗效。肺腺癌数据来自癌症基因组图谱(TCGA)数据库和美国国立生物技术信息中心(GEO)。单细胞数据来自Bischoff P等人。为了识别亚群,我们使用TSNE进行降维聚类。我们从文献中收集与免疫原性细胞死亡相关的基因集,并通过基因集方差分析(GSVA)和加权基因共表达网络分析(WGCNA)鉴定ICD相关基因。使用一致性聚类将肺腺癌患者分为两种类型。分析两种类型之间的差异以获得差异基因。使用LASSO-Cox分析建立免疫原性细胞死亡模型(ICDRS),并与其他个体的肺腺癌模型进行比较。在GSE31210和GSE50081队列中进行外部验证。使用TIDE算法以及IMvigor210、GSE78220和TCIA队列评估免疫治疗的疗效。此外,研究了不同风险组之间突变谱和免疫微环境的差异。随后,使用ROC诊断曲线和KM生存曲线筛选ICDRS关键调控基因。最后,使用RT-qPCR验证这些基因的差异表达。发现八个ICD基因对肺腺癌预后具有高度预测性且与之显著相关。多变量分析表明,低风险组患者的总生存率高于高风险组患者,表明该模型是肺腺癌的独立预测指标。此外,与之前发表的11种模型相比,ICDRS表现出更好的预测能力。此外,在高风险组和低风险组的肿瘤微环境中观察到生物学功能和免疫细胞浸润存在显著差异。值得注意的是,免疫治疗在两组中也具有显著性。这些发现表明该模型具有良好的预测疗效。ICD模型表现出良好的预测性能,揭示了肿瘤微环境,并为评估免疫治疗前的疗效提供了一种新方法。这为未来肺腺癌的治疗提供了一种新策略。