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[成人脑室胶质瘤患者预后列线图模型的建立与评估]

[Development and Evaluation of Prognostic Nomogram Model for Adult Ventricle Glioma Patients].

作者信息

Zhang Hao-Dong-Fang, Niu Xiao-Dong, Zhou Xing-Wang, Yang Yuan, Li Jiao-Ming, Gan You-Jun, Wang Xiang, Liu Yan-Hui, Mao Qing

机构信息

Department of Neurosurgery, West China Hospital, Sichuan University, Chengdu 610041, China.

Department of Neurosurgery, Sichuan Cancer Hospital, Chengdu 610042, China.

出版信息

Sichuan Da Xue Xue Bao Yi Xue Ban. 2022 Jul;53(4):588-596. doi: 10.12182/20220760203.

Abstract

OBJECTIVE

To explore the prognostic factors of adult ventricle glioma (AVG) and to construct and evaluate a survival-related prognostic nomogram model, which could provide further reference for the clinical management of AVG patients.

METHODS

The patients covered in the study were selected from the Surveillance Epidemiology and End Results (SEER) database (1973-2016). They all had definite histological diagnosis of AVG. They were assigned randomly to the training cohort and the validation cohort by random number table at a 2/1 ratio. Survival analysis was performed by Kaplan-Meier analysis. Cox regression analysis was employed to determine the independent prognostic factors for overall survival (OS) and cancer-specific survival (CSS). Then, integrating the basic characteristics of patients, the survival-related nomogram predictive model for OS and CSS in the training cohort was constructed, respectively. After that, internal cross validation and external validation of the model were carried out with the training cohort and the validation cohort in succession. The authenticity and reliability of the nomogram model were evaluated by calculating the concordance index (C-index). Calibration plots were constructed to assess the agreement between the predicted values and the observed values in the training cohort and the validation cohort.

RESULTS

A total of 369 AVG patients, including 218 males and 151 females, were included. The median age of the patients was 53. According to the WHO classification of gliomas, 66 (17.9%) patients had grade Ⅱ gliomas, 73 (19.8%) had grade Ⅲ gliomas, and 230 (62.3%) had grade Ⅳ gliomas. Regarding the extent of resection (EOR), 59 (16.0%) had gross total resection (GTR) and 145 (39.3%) had subtotal resection (STR) or partial resection (PR). Of all the patients, 167 (45.3%) received postoperative radiotherapy and 143 (38.8%) received postoperative chemotherapy. Patients were randomized into the training cohort ( =246) and the validation cohort ( =123), and there was no significant difference ( >0.05) in the basic clinical characteristics between the training cohort and the validation cohort. In the training cohort, Cox regression analysis revealed that the independent prognostic factors for OS and CSS included age≥65, grades Ⅲ and Ⅳ according to the WHO classification of gliomas, and not receiving radiotherapy. Furthermore, 5 variables, including age, gender, WHO grades, surgery, and radiotherapy, were used to construct the nomogram model for predicting 6-month, 1-year, and 2-year OS and CSS. The results of internal cross validation in the training cohort showed that the C-indexes of OS and CSS were 0.758 and 0.765, respectively. The external validation results of the validation cohort showed that the C-indexes of OS and CSS were 0.733 and 0.719, respectively. Calibration plots for 6-month, 1-year, and 2-year OS in the training cohort showed relatively good agreement, while in the validation cohort the agreement was relatively low. The 6-month, 1-year, and 2-year CSS calibration plots had results similar to the calibration plots of OS.

CONCLUSION

This nomogram predictive model of OS and CSS showed moderately reliable predictive performance, providing helpful reference information for clinicians to make quick and simple assessment of the survival probability of AVG patients.

摘要

目的

探讨成人脑室胶质瘤(AVG)的预后因素,构建并评估与生存相关的预后列线图模型,为AVG患者的临床管理提供进一步参考。

方法

本研究纳入的患者选自监测、流行病学和最终结果(SEER)数据库(1973 - 2016年)。他们均有明确的AVG组织学诊断。通过随机数字表以2/1的比例将他们随机分配到训练队列和验证队列。采用Kaplan-Meier分析进行生存分析。采用Cox回归分析确定总生存(OS)和癌症特异性生存(CSS)的独立预后因素。然后,结合患者的基本特征,分别构建训练队列中OS和CSS的与生存相关的列线图预测模型。之后,依次对训练队列和验证队列进行模型的内部交叉验证和外部验证。通过计算一致性指数(C-index)评估列线图模型的真实性和可靠性。构建校准图以评估训练队列和验证队列中预测值与观察值之间的一致性。

结果

共纳入369例AVG患者,其中男性218例,女性151例。患者的中位年龄为53岁。根据世界卫生组织(WHO)胶质瘤分类,66例(17.9%)患者为Ⅱ级胶质瘤,73例(19.8%)为Ⅲ级胶质瘤,230例(62.3%)为Ⅳ级胶质瘤。关于切除范围(EOR),59例(16.0%)为全切除(GTR),145例(39.3%)为次全切除(STR)或部分切除(PR)。所有患者中,167例(45.3%)接受了术后放疗,143例(38.8%)接受了术后化疗。患者被随机分为训练队列(n = 246)和验证队列(n = 123),训练队列和验证队列的基本临床特征无显著差异(P>0.05)。在训练队列中,Cox回归分析显示,OS和CSS的独立预后因素包括年龄≥65岁、根据WHO胶质瘤分类的Ⅲ级和Ⅳ级以及未接受放疗。此外,使用年龄、性别、WHO分级、手术和放疗这5个变量构建预测6个月、1年和2年OS及CSS的列线图模型。训练队列内部交叉验证结果显示,OS和CSS的C-index分别为0.758和0.765。验证队列的外部验证结果显示,OS和CSS的C-index分别为0.733和0.719。训练队列中6个月、1年和2年OS的校准图显示一致性相对较好,而在验证队列中一致性相对较低。6个月(1年和2年)CSS校准图的结果与OS校准图相似。

结论

该OS和CSS的列线图预测模型显示出中等可靠的预测性能,为临床医生快速、简单地评估AVG患者的生存概率提供了有用的参考信息。

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