Zhou Shengjun, Wang Haifeng, Huang Yi, Wu Yiwen, Lin Zhiqing
Department of Neurosurgery, Ningbo City First Hospital, Ningbo, China.
Front Oncol. 2022 Aug 9;12:952521. doi: 10.3389/fonc.2022.952521. eCollection 2022.
Glioblastoma (GBM), an aggressive primary tumor, is common in humans, accounting for 12-15% of all intracranial tumors, and has median survival of fewer than 15 months. Since a growing body of evidence suggests that conventional drugs are ineffective against GBM, our goal is to find emerging therapies that play a role in its treatment. This research constructs a risk model to predict the prognosis of GBM patients. A set of genes associated with GBM was taken from a GBM gene data bank, and clinical information on patients with GBM was retrieved from the Cancer Genome Atlas (TCGA) data bank. One-way Cox and Kaplan-Meier analyses were performed to identify genes in relation to prognosis. Groups were classified into high and low expression level of PTEN expression. Prognosis-related genes were further identified, and multi-factor Cox regression analysis was used to build risk score equations for the prognostic model to construct a survival prognostic model. The area under the ROC curve suggested that the pattern had high accuracy. When combined with nomogram analysis, GJB2 was considered an independent predictor of GBM prognosis. This study provides a potential prognostic predictive biological marker for GBM patients and confirms that GJB2 is a key gene for GBM progression.
胶质母细胞瘤(GBM)是一种侵袭性原发性肿瘤,在人类中很常见,占所有颅内肿瘤的12% - 15%,中位生存期不到15个月。由于越来越多的证据表明传统药物对GBM无效,我们的目标是寻找在其治疗中发挥作用的新兴疗法。本研究构建了一个风险模型来预测GBM患者的预后。从GBM基因数据库中获取了一组与GBM相关的基因,并从癌症基因组图谱(TCGA)数据库中检索了GBM患者的临床信息。进行单因素Cox分析和Kaplan - Meier分析以确定与预后相关的基因。根据PTEN表达的高低水平对分组。进一步确定预后相关基因,并使用多因素Cox回归分析为预后模型构建风险评分方程,以构建生存预后模型。ROC曲线下面积表明该模型具有较高的准确性。当与列线图分析相结合时,GJB2被认为是GBM预后的独立预测因子。本研究为GBM患者提供了一种潜在的预后预测生物学标志物,并证实GJB2是GBM进展的关键基因。