Zhang Jun, Yang Jin, Wang Hai-Qiang, Pan Zhenyu, Yan Xiaoni, Hu Chuanyu, Li Yuanjie, Lyu Jun
Clinical Research Center, The First Affiliated Hospital of Xi'an Jiaotong University.
School of Public Health, Xi'an Jiaotong University Health Science Center, Xi'an.
Medicine (Baltimore). 2019 Jun;98(23):e15988. doi: 10.1097/MD.0000000000015988.
This study aimed to establish a comprehensive prognostic system for osteosarcoma based on a large population database with high quality.The Surveillance, Epidemiology, and End Results (SEER) Program database was used to identify patients with osteosarcoma from 1973 to 2015. Multivariate analysis was performed to screen statistically significant variables. A nomogram was constructed by R software to predict the 3-, 5- and 10-year survival rates. Predictive abilities were compared by C-indexes, calibration plots, integrated discrimination improvement (IDI), net reclassification improvement (NRI), as well as decision curve analysis (DCA).In total, 4505 osteosarcoma patients were identified. They were divided into training (70%, n = 3153) and validating (30%, n = 1352) groups. Multivariate analyses identified independent predictors. Subsequently, the nomogram system of a new model was established, which comprised 7 variables as age, sex, site, decade of diagnosis (DOD), extent of disease (EOD), tumor size and patients undergoing tri-modality therapy (surgery, radiotherapy and chemotherapy). It provided better C-indexes than the model without therapies (0.727, 0.712 vs 0.705, 0.668) in the 2 cohort, respectively. As well, the new model had good performances in the calibration plots. Moreover, both IDI and NRI improved for 3-, 5- and 10-year follow-up of C-indexes. Finally, DCA demonstrated that the nomogram of new model was clinically meaningful.We developed a reliable nomogram for prognostic determinants and treatment outcome analysis of osteosarcoma, thus helping better choose medical examinations and optimize therapeutic regimen under the cooperation among oncologists and surgeons.
本研究旨在基于高质量的大样本人群数据库建立一个全面的骨肉瘤预后系统。利用监测、流行病学和最终结果(SEER)计划数据库识别1973年至2015年的骨肉瘤患者。进行多变量分析以筛选具有统计学意义的变量。用R软件构建列线图以预测3年、5年和10年生存率。通过C指数、校准图、综合判别改善(IDI)、净重新分类改善(NRI)以及决策曲线分析(DCA)比较预测能力。
总共识别出4505例骨肉瘤患者。他们被分为训练组(70%,n = 3153)和验证组(30%,n = 1352)。多变量分析确定了独立预测因素。随后,建立了一个新模型的列线图系统,该系统包含7个变量,即年龄、性别、部位、诊断年代(DOD)、疾病范围(EOD)、肿瘤大小以及接受三联疗法(手术、放疗和化疗)的患者。在两个队列中,该模型的C指数分别比未纳入治疗因素的模型更好(0.727、0.712对0.705、0.668)。同样,新模型在校准图中表现良好。此外,对于C指数的第3年、第5年和第10年随访,IDI和NRI均有所改善。最后,DCA表明新模型的列线图具有临床意义。
我们开发了一个用于骨肉瘤预后决定因素和治疗结果分析的可靠列线图,从而有助于在肿瘤学家和外科医生的协作下更好地选择医学检查并优化治疗方案。