Clinical Laboratory, Boai Hospital of Zhongshan Affiliated to Southern Medical University, Zhongshan, China.
West China Hospital, Sichuan University, Chengdu, China.
Front Endocrinol (Lausanne). 2023 Aug 18;14:1222072. doi: 10.3389/fendo.2023.1222072. eCollection 2023.
Accumulative studies have demonstrated the close relationship between tumor immunity and pyroptosis, apoptosis, and necroptosis. However, the role of PANoptosis in gastric cancer (GC) is yet to be fully understood.
This research attempted to identify the expression patterns of PANoptosis regulators and the immune landscape in GC by integrating the GSE54129 and GSE65801 datasets. We analyzed GC specimens and established molecular clusters associated with PANoptosis-related genes (PRGs) and corresponding immune characteristics. The differentially expressed genes were determined with the WGCNA method. Afterward, we employed four machine learning algorithms (Random Forest, Support Vector Machine, Generalized linear Model, and eXtreme Gradient Boosting) to select the optimal model, which was validated using nomogram, calibration curve, decision curve analysis (DCA), and two validation cohorts. Additionally, this study discussed the relationship between infiltrating immune cells and variables in the selected model.
This study identified dysregulated PRGs and differential immune activities between GC and normal samples, and further identified two PANoptosis-related molecular clusters in GC. These clusters demonstrated remarkable immunological heterogeneity, with Cluster1 exhibiting abundant immune infiltration. The Support Vector Machine signature was found to have the best discriminative ability, and a 5-gene-based SVM signature was established. This model showed excellent performance in the external validation cohorts, and the nomogram, calibration curve, and DCA indicated its reliability in predicting GC patterns. Further analysis confirmed that the 5 selected variables were remarkably related to infiltrating immune cells and immune-related pathways.
Taken together, this work demonstrates that the PANoptosis pattern has the potential as a stratification tool for patient risk assessment and a reflection of the immune microenvironment in GC.
累积研究表明肿瘤免疫与细胞焦亡、细胞凋亡和坏死性凋亡密切相关。然而,PANoptosis 在胃癌(GC)中的作用尚未完全阐明。
本研究通过整合 GSE54129 和 GSE65801 数据集,试图确定 PANoptosis 调节剂的表达模式和 GC 的免疫图谱。我们分析了 GC 标本,并建立了与 PANoptosis 相关基因(PRGs)相关的分子簇及其对应的免疫特征。使用 WGCNA 方法确定差异表达基因。然后,我们采用四种机器学习算法(随机森林、支持向量机、广义线性模型和极端梯度提升)来选择最佳模型,并使用列线图、校准曲线、决策曲线分析(DCA)和两个验证队列进行验证。此外,本研究还探讨了浸润免疫细胞与所选模型中变量之间的关系。
本研究鉴定了 GC 中失调的 PRGs 和差异免疫活性,以及 GC 中两个与 PANoptosis 相关的分子簇。这些簇表现出显著的免疫异质性,Cluster1 表现出丰富的免疫浸润。支持向量机特征具有最佳的区分能力,建立了一个基于 5 个基因的 SVM 特征。该模型在外部验证队列中表现出优异的性能,列线图、校准曲线和 DCA 表明其在预测 GC 模式方面具有可靠性。进一步分析证实,5 个选定变量与浸润免疫细胞和免疫相关途径显著相关。
综上所述,这项工作表明 PANoptosis 模式具有作为患者风险评估分层工具的潜力,并反映了 GC 中的免疫微环境。