Zhang Ying, Zhang Wei, Yuan Qiyou, Hong Wenqing, Yin Ping, Shen Tingting, Fang Lutong, Jiang Junlan, Shi Fangxiao, Chen Weiwei
Department of Pathology, First Affiliated Hospital of Anhui Medical University, Hefei, Anhui, China.
Department of Neurology, First Affiliated Hospital of Anhui Medical University, Hefei, Anhui, China.
Front Oncol. 2023 Mar 31;13:1145676. doi: 10.3389/fonc.2023.1145676. eCollection 2023.
It is well-established that patients with glioma have a poor prognosis. Although the past few decades have witnessed unprecedented medical advances, the 5-year survival remains dismally low.
This study aims to investigate the role of transmembrane protein-related genes in the development and prognosis of glioma and provide new insights into the pathogenesis of the disease.
The datasets of glioma patients, including RNA sequencing data and relative clinical information, were obtained from The Cancer Genome Atlas (TCGA), Chinese Glioma Genome Atlas (CGGA) and Gene Expression Omnibus (GEO) databases. Prognostic transmembrane protein-related genes were identified by univariate Cox analysis. New disease subtypes were recognized based on the consensus clustering method, and their biological uniqueness was verified various algorithms. The prognosis signature was constructed using the LASSO-Cox regression model, and its predictive power was validated in external datasets by receiver operating characteristic (ROC) curve analysis. An independent prognostic analysis was conducted to evaluate whether the signature could be considered a prognostic factor independent of other variables. A nomogram was constructed in conjunction with traditional clinical variables. The concordance index (C-index) and Decision Curve Analysis (DCA) were used to assess the net clinical benefit of the signature over traditional clinical variables. Seven different softwares were used to compare the differences in immune infiltration between the high- and low-risk groups to explore potential mechanisms of glioma development and prognosis. Hub genes were found using the random forest method, and their expression was based on multiple single-cell datasets.
Four molecular subtypes were identified, among which the C1 group had the worst prognosis. Principal Component Analysis (PCA) results and heatmaps indicated that prognosis-related transmembrane protein genes exhibited differential expression in all four groups. Besides, the microenvironment of the four groups exhibited significant heterogeneity. The 6 gene-based signatures could predict the 1-, 2-, and 3-year overall survival (OS) of glioma patients. The signature could be used as an independent prognosis factor of glioma OS and was superior to traditional clinical variables. More immune cells were infiltrated in the high-risk group, suggesting immune escape. According to our signature, many genes were associated with the content of immune cells, which revealed that transmembrane protein-related genes might influence the development and prognosis of glioma by regulating the immune microenvironment. TMEM158 was identified as the most important gene using the random forest method. The single-cell datasets consistently showed that TMEM158 was expressed in multiple malignant cells.
The expression of transmembrane protein-related genes is closely related to the immune status and prognosis of glioma patients by regulating tumor progression in various ways. The interaction between transmembrane protein-related genes and immunity during glioma development lays the groundwork for future studies on the molecular mechanism and targeted therapy of glioma.
胶质瘤患者预后较差已得到充分证实。尽管过去几十年见证了前所未有的医学进步,但5年生存率仍然极低。
本研究旨在探讨跨膜蛋白相关基因在胶质瘤发生发展及预后中的作用,为该疾病的发病机制提供新见解。
从癌症基因组图谱(TCGA)、中国胶质瘤基因组图谱(CGGA)和基因表达综合数据库(GEO)获取胶质瘤患者数据集,包括RNA测序数据和相关临床信息。通过单因素Cox分析确定预后相关的跨膜蛋白基因。基于共识聚类方法识别新的疾病亚型,并通过多种算法验证其生物学独特性。使用LASSO-Cox回归模型构建预后特征,并通过受试者工作特征(ROC)曲线分析在外部数据集中验证其预测能力。进行独立预后分析,以评估该特征是否可被视为独立于其他变量的预后因素。结合传统临床变量构建列线图。使用一致性指数(C指数)和决策曲线分析(DCA)评估该特征相对于传统临床变量的净临床获益。使用七种不同软件比较高风险组和低风险组之间免疫浸润的差异,以探索胶质瘤发生发展和预后的潜在机制。使用随机森林方法找到枢纽基因,并基于多个单细胞数据集分析其表达情况。
识别出四种分子亚型,其中C1组预后最差。主成分分析(PCA)结果和热图表明,预后相关的跨膜蛋白基因在所有四组中均表现出差异表达。此外,四组的微环境表现出显著的异质性。基于6个基因的特征可预测胶质瘤患者1年、2年和3年的总生存期(OS)。该特征可作为胶质瘤OS的独立预后因素,且优于传统临床变量。高风险组中有更多免疫细胞浸润,提示免疫逃逸。根据我们的特征,许多基因与免疫细胞含量相关,这表明跨膜蛋白相关基因可能通过调节免疫微环境影响胶质瘤的发生发展和预后。使用随机森林方法确定TMEM158为最重要的基因。单细胞数据集一致显示TMEM158在多种恶性细胞中表达。
跨膜蛋白相关基因的表达通过多种方式调节肿瘤进展,与胶质瘤患者的免疫状态和预后密切相关。胶质瘤发生过程中跨膜蛋白相关基因与免疫之间的相互作用为未来胶质瘤分子机制和靶向治疗的研究奠定了基础。