Chen Feng, Qian Wen-Bo, Chen Zhen-Hua, Qian Jun, Luo Chun
Department of Neurosurgery, Tongji Hospital, School of Medicine, Tongji University, No. 389, Xinchun Road, Shanghai, 200065, China.
Department of Neurosurgery, Affiliated Hospital 2 of Nantong University, Nantong, China.
Discov Oncol. 2024 Oct 8;15(1):530. doi: 10.1007/s12672-024-01412-3.
Methylation-related signatures play crucial roles in tumorigenesis and progression. However, their roles in the immune response in primary glioblastoma (GBM) remains unclear.
We analyzed the differential expression of specific members of T cell exhaustion-related pathways in GBM from the perspective of T cell exhaustion. We further screened for significantly negatively correlated methylation sites as candidate methylation markers for T cell exhaustion. Using consensus clustering, we divided the samples into two categories with significant differences in overall survival (OS). We then performed univariate and multivariate Cox regression analyses to construct the T Cell Exhaustion Methylation (TEXM) signature. Finally, we confirmed that this signature served as an independent prognostic factor, and further characterized it in terms of drug resistance and immunotherapy.
We identified 95 significantly differentially expressed T cell exhaustion-related genes and 51 methylation markers associated with T cell exhaustion. The cancer samples were classified according to methylation site markers, thus indicating two subtypes with significant differences in OS: subtype A and subtype B. Tumor scores, stromal scores, tumor purity, and ESTIMATE scores all showed significant differences between subtypes (P < 0.05). Univariate Cox regression analysis identified five methylation sites significantly associated with OS, and multivariate Cox regression analysis was used to construct the TEXM signature model by using these five methylation sites. Significant differences in OS were found between the groups with high and low TEXM signature scores, on the basis of calculation of the TEXM signature scores of tumor samples and using the median score to divide them into high and low score groups. Survival analysis revealed that the high score group had poorer OS and DFS than the low score group in the validation set. Notably, we observed a significant difference in drug sensitivity between the high and low TEXM signature score groups, with the high score group showing higher drug resistance and poorer prognosis. The tumor immune state, as predicted with Tracking Tumor Immunophenotype (TIP), revealed significant differences in antitumor immune scores between the high and low TEXM signature score groups. Finally, we identified 43 significantly differentially regulated metabolism-associated biological processes.
The epigenetic methylation-related TEXM signature plays a key role in driving differential immune responses in GBM.
甲基化相关特征在肿瘤发生和进展中起着关键作用。然而,它们在原发性胶质母细胞瘤(GBM)免疫反应中的作用仍不清楚。
我们从T细胞耗竭的角度分析了GBM中T细胞耗竭相关通路特定成员的差异表达。我们进一步筛选出显著负相关的甲基化位点作为T细胞耗竭的候选甲基化标志物。使用一致性聚类,我们将样本分为总生存期(OS)有显著差异的两类。然后我们进行单变量和多变量Cox回归分析以构建T细胞耗竭甲基化(TEXM)特征。最后,我们证实该特征作为一个独立的预后因素,并在耐药性和免疫治疗方面对其进行了进一步表征。
我们鉴定出95个显著差异表达的T细胞耗竭相关基因和51个与T细胞耗竭相关的甲基化标志物。根据甲基化位点标志物对癌症样本进行分类,从而表明存在OS有显著差异的两个亚型:A亚型和B亚型。肿瘤评分、基质评分、肿瘤纯度和ESTIMATE评分在各亚型之间均显示出显著差异(P < 0.05)。单变量Cox回归分析确定了5个与OS显著相关的甲基化位点,并使用这5个甲基化位点通过多变量Cox回归分析构建TEXM特征模型。在计算肿瘤样本的TEXM特征评分并使用中位数评分将它们分为高分和低分两组的基础上,发现TEXM特征评分高和低的组之间OS存在显著差异。生存分析显示,在验证集中,高分组合并无病生存期(DFS)比低分组合并无病生存期差。值得注意的是,我们观察到TEXM特征评分高和低的组之间药物敏感性存在显著差异,高分组显示出更高的耐药性和更差的预后。用追踪肿瘤免疫表型(TIP)预测的肿瘤免疫状态显示,TEXM特征评分高和低的组之间抗肿瘤免疫评分存在显著差异。最后,我们鉴定出43个显著差异调节的代谢相关生物学过程。
表观遗传甲基化相关的TEXM特征在驱动GBM中不同的免疫反应中起关键作用。