Wang Yuan, Ye Shengda, Wu Du, Xu Ziyue, Wei Wei, Duan Faliang, Luo Ming
Department of Neurosurgery, Wuhan No. 1 Hospital, Wuhan 430061, China.
Brain Research Center, Zhongnan Hospital of Wuhan University, Wuhan 430061, China.
Cancers (Basel). 2023 Jun 19;15(12):3238. doi: 10.3390/cancers15123238.
Low-grade gliomas (LGGs), which are the second most common intracranial tumor, are diagnosed in seven out of one million people, tending to develop in younger people. Tumor stem cells and immune cells are important in the development of tumorigenesis. However, research on prognostic factors linked to the immune microenvironment and stem cells in LGG patients is limited. We critically need accurate related tools for assessing the risk of LGG patients.
In this study, we aimed to identify immune-related genes (IRGs) in LGG based on the mRNAsi score. We employed differentially expressed gene (DEG) methods and weighted correlation network analysis (WGCNA). The risk signature was then further established using a lasso Cox regression analysis and a multivariate Cox analysis. Next, we used immunohistochemical sections (HPA) and a survival analysis to identify the hub genes. A nomogram was built to assess the prognosis of patients based on their clinical information and risk scores and was validated using a DCA curve, among other methods.
Four hub genes were obtained: C3AR1 (HR = 0.98, < 0.001), MSR1 (HR = 1.02, < 0.001), SLC11A1 (HR = 1.01, < 0.01), and IL-10 (HR = 1.01, < 0.001). For LGG patients, we created an immune-related prognostic signature (IPS) based on mRNAsi for estimating risk scores; different risk groups showed significantly different survival rates ( = 3.3 × 10). Then, via an evaluation of the IRG-related signature, we created a nomogram for predicting LGG survival probability.
The outcome suggests that, when predicting the prognosis of LGG patients, our nomogram was more effective than the IPS. In this study, four immune-related predictive biomarkers for LGG were identified and proven to be IRGs. Therefore, the development of efficient immunotherapy techniques can be facilitated by the creation of the IPS.
低级别胶质瘤(LGGs)是第二常见的颅内肿瘤,每百万人中有7人被诊断出,且倾向于在年轻人中发病。肿瘤干细胞和免疫细胞在肿瘤发生发展中起着重要作用。然而,关于LGG患者中与免疫微环境和干细胞相关的预后因素的研究有限。我们迫切需要准确的相关工具来评估LGG患者的风险。
在本研究中,我们旨在基于mRNAsi评分识别LGG中的免疫相关基因(IRGs)。我们采用差异表达基因(DEG)方法和加权基因共表达网络分析(WGCNA)。然后使用套索Cox回归分析和多变量Cox分析进一步建立风险特征。接下来,我们使用免疫组织化学切片(HPA)和生存分析来识别枢纽基因。构建了一个列线图,根据患者的临床信息和风险评分评估患者的预后,并使用决策曲线分析(DCA)曲线等方法进行验证。
获得了四个枢纽基因:C3AR1(HR = 0.98,P < 0.001)、MSR1(HR = 1.02,P < 0.001)、SLC11A1(HR = 1.01,P < 0.01)和IL - 10(HR = 1.01,P < 0.001)。对于LGG患者,我们基于mRNAsi创建了一个免疫相关预后特征(IPS)来估计风险评分;不同风险组的生存率显示出显著差异(P = 3.3×10)。然后,通过对IRG相关特征的评估,我们创建了一个用于预测LGG生存概率的列线图。
结果表明,在预测LGG患者的预后时,我们的列线图比IPS更有效。在本研究中,鉴定出了四个用于LGG的免疫相关预测生物标志物,并证明它们是IRGs。因此,IPS的创建有助于促进高效免疫治疗技术的发展。