Wu Yiwen, Huang Yi, Zhou Chenhui, Wang Haifeng, Wang Zhepei, Wu Jiawei, Nie Sheng, Deng Xinpeng, Sun Jie, Gao Xiang
Department of Neurosurgery, Ningbo First Hospital, Zhejiang University School of Medicine, Ningbo 315010, China.
Key Laboratory of Precision Medicine for Atherosclerotic Diseases of Zhejiang Province, Ningbo 315010, China.
Brain Sci. 2022 Jul 26;12(8):988. doi: 10.3390/brainsci12080988.
Background: Glioblastoma (GBM) is the most common and deadly brain tumor. The clinical significance of necroptosis (NCPS) genes in GBM is unclear. The goal of this study is to reveal the potential prognostic NCPS genes associated with GBM, elucidate their functions, and establish an effective prognostic model for GBM patients. Methods: Firstly, the NCPS genes in GBM were identified by single-cell analysis of the GSE182109 dataset in the GEO database and weighted co-expression network analysis (WGCNA) of The Cancer Genome Atlas (TCGA) data. Three machine learning algorithms (Lasso, SVM-RFE, Boruta) combined with COX regression were used to build prognostic models. The subsequent analysis included survival, immune microenvironments, and mutations. Finally, the clinical significance of NCPS in GBM was explored by constructing nomograms. Results: We constructed a GBM prognostic model composed of NCPS-related genes, including CTSD, AP1S1, YWHAG, and IER3, which were validated to have good performance. According to the above prognostic model, GBM patients in the TCGA and CGGA groups could be divided into two groups according to NCPS, with significant differences in survival analysis between the two groups and a markedly worse prognostic status in the high NCPS group (p < 0.001). In addition, the high NCPS group had higher levels of immune checkpoint-related gene expression, suggesting that they may be more likely to benefit from immunotherapy. Conclusions: Four genes (CTSD, AP1S1, YWHAG, and IER3) were screened through three machine learning algorithms to construct a prognostic model for GBM. These key and novel diagnostic markers may become new targets for diagnosing and treating patients with GBM.
胶质母细胞瘤(GBM)是最常见且致命的脑肿瘤。坏死性凋亡(NCPS)基因在GBM中的临床意义尚不清楚。本研究的目的是揭示与GBM相关的潜在预后NCPS基因,阐明其功能,并为GBM患者建立有效的预后模型。方法:首先,通过对GEO数据库中GSE182109数据集的单细胞分析以及癌症基因组图谱(TCGA)数据的加权共表达网络分析(WGCNA)来鉴定GBM中的NCPS基因。使用三种机器学习算法(套索、支持向量机递归特征消除、博鲁塔)结合COX回归构建预后模型。后续分析包括生存、免疫微环境和突变。最后,通过构建列线图探讨NCPS在GBM中的临床意义。结果:我们构建了一个由NCPS相关基因组成的GBM预后模型,包括组织蛋白酶D(CTSD)、衔接蛋白1亚基σ1(AP1S1)、14-3-3蛋白ζ/δ(YWHAG)和即刻早期反应基因3(IER3),经验证其具有良好的性能。根据上述预后模型,TCGA和CGGA组中的GBM患者可根据NCPS分为两组,两组生存分析存在显著差异,高NCPS组的预后状况明显更差(p < 0.001)。此外,高NCPS组免疫检查点相关基因表达水平更高,表明他们可能更有可能从免疫治疗中获益。结论:通过三种机器学习算法筛选出四个基因(CTSD、AP1S1、YWHAG和IER3)构建GBM预后模型。这些关键且新颖的诊断标志物可能成为GBM患者诊断和治疗的新靶点。