Identifying an immunogenic cell death-related gene signature contributes to predicting prognosis, immunotherapy efficacy, and tumor microenvironment of lung adenocarcinoma

Xue Li, Dengfeng Zhang, Pengfei Guo, Shaowei Ma, Shao Gao, Shujun Li, Yadong Yuan
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Abstract

Background: Immunogenic cell death (ICD) is a regulated form of cell death that triggers an adaptive immune response. The objective of this study was to investigate the correlation between ICD-related genes (ICDGs) and the prognosis and the immune microenvironment of patients with lung adenocarcinoma (LUAD). Methods: ICD-associated molecular subtypes were identified through consensus clustering. Subsequently, a prognostic risk model comprising 5 ICDGs was constructed using Lasso-Cox regression in the TCGA training cohort and further tested in the GEO cohort. Enriched pathways among the subtypes were analyzed using GO, KEGG, and GSVA. Furthermore, the immune microenvironment was assessed using ESTIMATE, CIBERSORT, and ssGSEA analyses. Results: Consensus clustering divided LUAD patients into three ICDG subtypes with significant differences in prognosis and the immune microenvironment. A prognostic risk model was constructed based on 5 ICDGs and it was used to classify the patients into two risk groups; the high-risk group had poorer prognosis and an immunosuppressive microenvironment characterized by low immune score, low immune status, high abundance of immunosuppressive cells, and high expression of tumor purity. Cox regression, ROC curve analysis, and a nomogram indicated that the risk model was an independent prognostic factor. The five hub genes were verified by TCGA database, cell sublocalization immunofluorescence analysis, IHC images and qRT-PCR, which were consistent with bioinformatics analysis. Conclusions: The molecular subtypes and a risk model based on ICDGs proposed in our study are both promising prognostic classifications in LUAD, which may provide novel insights for developing accurate targeted cancer therapies.
确定免疫原性细胞死亡相关基因特征有助于预测肺腺癌的预后、免疫疗法疗效和肿瘤微环境
背景:免疫原性细胞死亡(ICD)是一种可触发适应性免疫反应的细胞死亡调节形式。本研究旨在探讨 ICD 相关基因(ICDGs)与肺腺癌(LUAD)患者的预后和免疫微环境之间的相关性。研究方法通过共识聚类确定与 ICD 相关的分子亚型。随后,在TCGA训练队列中使用Lasso-Cox回归法构建了一个由5个ICDGs组成的预后风险模型,并在GEO队列中进行了进一步测试。利用GO、KEGG和GSVA分析了亚型之间的丰富通路。此外,还使用ESTIMATE、CIBERSORT和ssGSEA分析评估了免疫微环境。结果共识聚类将 LUAD 患者分为三种 ICDG 亚型,其预后和免疫微环境存在显著差异。根据 5 个 ICDGs 构建了预后风险模型,并将患者分为两个风险组;高风险组预后较差,免疫抑制微环境以低免疫评分、低免疫状态、高免疫抑制细胞丰度和高肿瘤纯度表达为特征。Cox 回归、ROC 曲线分析和提名图显示,风险模型是一个独立的预后因素。五个中心基因通过 TCGA 数据库、细胞亚定位免疫荧光分析、IHC 图像和 qRT-PCR 得到验证,与生物信息学分析结果一致。结论我们研究中提出的分子亚型和基于ICDGs的风险模型都是很有前景的LUAD预后分类方法,可为开发精确的癌症靶向疗法提供新的见解。
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