Qin Guowen, Pang Gang, Wu Shuaishuai, Bi Shuiqing, Lan Shengyong, Tang Xiuwen, Hu Beiquan, Zhou Junlin, Shi Fengning, Qin Chengjian
Department of Neurosurgery, The First Affiliated Hospital of Jinan University, Guangzhou, China.
Department of Cerebrovascular Disease and Spine Neurosurgery, The People's Hospital of Guangxi Zhuang Autonomous Region, Guangxi Academy of Medical Sciences, Nanning, China.
Transl Cancer Res. 2024 Nov 30;13(11):6117-6135. doi: 10.21037/tcr-24-787. Epub 2024 Nov 27.
Glioblastoma multiforme (GBM), the most prevalent and aggressive primary brain tumor, poses substantial challenges in both treatment and prognosis. Post-translational modifications, like palmitoylation, are known to have critical roles in the development and progression of glioma. Yet, the molecular mechanisms involved in palmitoylation and its prognostic significance in GBM are still not fully understood. This study aimed to explore prognostic biomarkers for GBM based on palmitoylation-related genes and to construct a prognostic risk model.
The messenger ribonucleic acid (mRNA) expressions data and the clinical information were downloaded from The Cancer Genome Atlas (TCGA) and Gene Expression Omnibus (GEO) to explore palmitoylation-related mechanisms in GBM. The Cox regression analysis was performed to identify prognostic palmitoylation-related genes and the consensus clustering was used for molecular classification. The package "limma" was used for differential gene expression analysis and the least absolute shrinkage and selection operator (LASSO) regression was applied to construct a risk signature. A nomogram model was established using the risk score and clinical variables. Receiver operating characteristic (ROC), calibration curve, and decision curve analysis (DCA) were used to assess the predicted accuracy and clinical benefit of the model. The difference in immune cell infiltration was compared between different risk groups. The drug susceptibility analysis and immunotherapy response prediction were conducted to access the ability of the risk signature in predicting the therapeutic effect.
Based on datasets from TCGA, five palmitoylation-related genes were identified as prognostic markers, allowing for the categorization of GBM patients into two subtypes with differing survival rates. Through differential expression analysis, 570 specific genes linked to GBM advancement were uncovered. A total of seven signature genes (, , , , , and ) were applied to establish a prognostic risk model, which was demonstrated to be an independent prognostic indicator for patients with GBM. Kaplan-Meier analysis indicted that the GBM patients in low-risk group exhibited a better survival outcome compared the patients in high-risk group. The ROC curve analyses demonstrated that the risk score model was reliable. The nomograms showed excellent predictive ability. Two external cohort of patients from the GSE74187 and GSE83300 in the GEO database confirmed the model's strong predictive performance. The immune infiltration, drug sensitivity and immunotherapy responses were significantly different between the low- and high-risk groups.
Our study offers insights into the molecular classification and prognostic assessment of GBM, focusing on palmitoylation-related mechanisms. The prognostic model we constructed provides valuable guidance for tailoring personalized treatment strategies for GBM patients.
多形性胶质母细胞瘤(GBM)是最常见且侵袭性最强的原发性脑肿瘤,在治疗和预后方面都面临巨大挑战。已知翻译后修饰,如棕榈酰化,在胶质瘤的发生和发展中起关键作用。然而,棕榈酰化所涉及的分子机制及其在GBM中的预后意义仍未完全明确。本研究旨在基于棕榈酰化相关基因探索GBM的预后生物标志物,并构建预后风险模型。
从癌症基因组图谱(TCGA)和基因表达综合数据库(GEO)下载信使核糖核酸(mRNA)表达数据和临床信息,以探索GBM中与棕榈酰化相关的机制。进行Cox回归分析以鉴定预后性棕榈酰化相关基因,并使用一致性聚类进行分子分类。使用“limma”软件包进行差异基因表达分析,并应用最小绝对收缩和选择算子(LASSO)回归构建风险特征。使用风险评分和临床变量建立列线图模型。采用受试者工作特征(ROC)曲线、校准曲线和决策曲线分析(DCA)评估模型的预测准确性和临床获益。比较不同风险组之间免疫细胞浸润的差异。进行药物敏感性分析和免疫治疗反应预测,以评估风险特征预测治疗效果的能力。
基于TCGA数据集,鉴定出5个与棕榈酰化相关的基因作为预后标志物,可将GBM患者分为两个生存率不同的亚型。通过差异表达分析,发现了570个与GBM进展相关的特异性基因。共应用7个特征基因(、、、、、和)建立预后风险模型,该模型被证明是GBM患者的独立预后指标。Kaplan-Meier分析表明,低风险组的GBM患者比高风险组患者表现出更好的生存结果。ROC曲线分析表明风险评分模型可靠。列线图显示出优异的预测能力。来自GEO数据库中GSE74187和GSE83300的两个外部患者队列证实了该模型强大的预测性能。低风险组和高风险组之间的免疫浸润、药物敏感性和免疫治疗反应存在显著差异。
我们的研究深入探讨了GBM的分子分类和预后评估,重点关注与棕榈酰化相关的机制。我们构建的预后模型为为GBM患者制定个性化治疗策略提供了有价值的指导。