Department of Radiation Oncology, The First Hospital of China Medical University, Shenyang 110001, China.
Key Laboratory of Networked Control Systems, Chinese Academy of Sciences, Shenyang 110016, China.
Medicina (Kaunas). 2022 Sep 22;58(10):1327. doi: 10.3390/medicina58101327.
Response to radiotherapy (RT) in gliomas varies widely between patients. It is necessary to identify glioma-associated radiosensitivity gene signatures for clinically stratifying patients who will benefit from adjuvant radiotherapy after glioma surgery. Chinese Glioma Genome Atlas (CGGA) and the Cancer Genome Atlas (TCGA) glioma patient datasets were used to validate the predictive potential of two published biomarkers, the radiosensitivity index (RSI) and 31-gene signature (31-GS). To adjust these markers for the characteristics of glioma, we integrated four new glioma-associated radiosensitivity predictive indexes based on RSI and 31-GS by the Cox analysis and Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis. A receiver operating characteristic (ROC) curve, integrated discrimination improvement (IDI), and net reclassification improvement (NRI) were used to compare the radiosensitivity predictive ability of these six gene signatures. Subgroup analysis was used to evaluate the discriminative capacity of those gene signatures in identifying radiosensitive patients, and a nomogram was built to improve the histological grading system. Gene Ontology (GO) analysis and Gene Set Enrichment Analysis (GSEA) were used to explore related biological processes. We validated and compared the predictive potential of two published predictive indexes. The AUC area of 31-GS was higher than that of RSI. Based on the RSI and 31-GS, we integrated four new glioma-associated radiosensitivity predictive indexes-PI10, PI12, PI31 and PI41. Among them, a 12-gene radiosensitivity predictive index (PI12) showed the most promising predictive performance and discriminative capacity. Examination of a nomogram created from clinical features and PI12 revealed that its predictive capacity was superior to the traditional WHO classification system. (C-index: 0.842 vs. 0.787, ≤ 2.2 × 10) The GO analysis and GSEA showed that tumors with a high PI12 score correlated with various aspects of the malignancy of glioma. The glioma-associated radiosensitivity gene signature PI12 is a promising radiosensitivity predictive biomarker for guiding effective personalized radiotherapy for gliomas.
胶质瘤患者对放疗(RT)的反应差异很大。有必要确定与胶质瘤相关的放射敏感性基因特征,以便对胶质瘤手术后接受辅助放疗的患者进行临床分层。本研究使用中国脑胶质瘤基因组图谱(CGGA)和癌症基因组图谱(TCGA)的胶质瘤患者数据集来验证两个已发表的生物标志物的预测潜力,即放射敏感性指数(RSI)和 31 基因特征(31-GS)。为了调整这些标志物以适应胶质瘤的特征,我们通过 Cox 分析和最小绝对收缩和选择算子(LASSO)回归分析,整合了基于 RSI 和 31-GS 的四个新的与胶质瘤相关的放射敏感性预测指标。采用受试者工作特征(ROC)曲线、综合判别改善(IDI)和净重新分类改善(NRI)比较了这六个基因特征的放射敏感性预测能力。采用亚组分析评估了这些基因特征识别放射敏感患者的区分能力,并构建了列线图以改善组织学分级系统。进行基因本体论(GO)分析和基因集富集分析(GSEA)以探索相关的生物学过程。我们验证和比较了两个已发表的预测指标的预测潜力。31-GS 的 AUC 面积高于 RSI。基于 RSI 和 31-GS,我们整合了四个新的与胶质瘤相关的放射敏感性预测指标-PI10、PI12、PI31 和 PI41。其中,12 基因放射敏感性预测指标(PI12)显示出最有前途的预测性能和区分能力。从临床特征和 PI12 构建的列线图的检查结果表明,其预测能力优于传统的 WHO 分级系统。(C 指数:0.842 与 0.787,≤2.2×10)GO 分析和 GSEA 表明,PI12 评分较高的肿瘤与胶质瘤恶性程度的各个方面相关。与胶质瘤相关的放射敏感性基因特征 PI12 是一种很有前途的放射敏感性预测生物标志物,可指导胶质瘤的有效个体化放疗。