Jiang Fan, Zhan Zheng, Yang Yanbo, Liu Guangjie, Liu Song, Gu Jingyu, Chen Zhouqing, Wang Zhong, Chen Gang
Department of Neurosurgery & Brain and Nerve Research Laboratory, The First Affiliated Hospital of Soochow University, Suzhou 215006, Jiangsu, China.
Department of Neurosurgery, China-Japan Friendship Hospital, Beijing, China.
J Oncol. 2022 Aug 27;2022:5681206. doi: 10.1155/2022/5681206. eCollection 2022.
Glioma is the most common primary brain tumor, representing approximately 80.8% of malignant tumors. Necroptosis triggers and enhances antitumor immunity and is expected to be a new target for tumor immunotherapy. The effectiveness of necroptosis-related lncRNAs as potential therapeutic targets for glioma has not been elucidated.
We acquired RNA-seq data sets from LGG and GBM samples, and the corresponding clinical characteristic information is from TCGA. Normal brain tissue data is from GTEX. Based on TCGA and GTEx, we used univariate Cox regression to sort out survival-related lncRNAs. Lasso regression models were then built. Then, we performed a separate Kaplan-Meier analysis of the lncRNAs used for modeling. We validated different risk groups via OS, DFS, enrichment analysis, comprehensive immune analysis, and drug sensitivity.
We constructed a 12 prognostic lncRNAs model after bioinformatic analysis. Subsequently, the risk score of every glioma patient was calculated based on correlation coefficients and expression levels, and the patients were split into low- and high-risk groups according to the median value of the risk score. A nomogram was established for every glioma patient to predict prognosis. Besides, we found significant differences in OS, DFS, immune infiltration and checkpoints, and immune therapy between different risk subgroups.
Predictive models of 12 necroptosis-related lncRNAs can facilitate the assessment of the prognosis and molecular characteristics of glioma patients and improve treatment modalities.
胶质瘤是最常见的原发性脑肿瘤,约占恶性肿瘤的80.8%。坏死性凋亡可触发并增强抗肿瘤免疫力,有望成为肿瘤免疫治疗的新靶点。坏死性凋亡相关lncRNAs作为胶质瘤潜在治疗靶点的有效性尚未阐明。
我们获取了来自低级别胶质瘤(LGG)和胶质母细胞瘤(GBM)样本的RNA测序数据集,相应的临床特征信息来自癌症基因组图谱(TCGA)。正常脑组织数据来自基因型组织表达(GTEx)项目。基于TCGA和GTEx,我们使用单变量Cox回归筛选出与生存相关的lncRNAs。然后构建套索回归模型。接着,我们对用于建模的lncRNAs进行了单独的Kaplan-Meier分析。我们通过总生存期(OS)、无病生存期(DFS)、富集分析、综合免疫分析和药物敏感性验证了不同的风险组。
经过生物信息学分析,我们构建了一个包含12个预后lncRNAs的模型。随后,根据相关系数和表达水平计算每个胶质瘤患者的风险评分,并根据风险评分的中位数将患者分为低风险组和高风险组。为每个胶质瘤患者建立了一个列线图来预测预后。此外,我们发现不同风险亚组在OS、DFS、免疫浸润和检查点以及免疫治疗方面存在显著差异。
12个坏死性凋亡相关lncRNAs的预测模型有助于评估胶质瘤患者的预后和分子特征,并改善治疗方式。