Wang Jing, Zhang Chan, Xiang Yaoxian, Han Baojuan, Cheng Yurong, Tong Yingying, Yan Dong
Department of Oncology, Beijing Luhe Hospital Affiliated to Capital Medical University, Beijing, 101149, China.
J Cancer Res Clin Oncol. 2023 Nov;149(14):12703-12711. doi: 10.1007/s00432-023-05046-w. Epub 2023 Jul 15.
The association between post-resection radiotherapy for primary gynecological malignant neoplasms (GMNs) and the development of secondary primary malignancies (SPMs) remains a subject of debate. This study represents the first population-based analysis employing a multivariate competitive risk model to assess risk factors for this relationship and to develop a comprehensive competing-risk nomogram for quantitatively predicting SPM probabilities.
In our study, data on patients with primary GMNs were retrospectively collected from the Epidemiology, Surveillance and End Results (SEER) database from 1973 to 2015. The incidence of secondary malignant tumors diagnosed at least six months after GMN diagnosis was compared to determine potential risk factors for SPMs in GMN patients using the Fine and Gray proportional sub-distribution hazard model. A competing-risk nomogram was constructed to quantify SPM probabilities.
A total of 109,537 patients with GMNs were included in the study, with 76,675 and 32,862 GMN patients in the training and verification sets, respectively. The competing-risk model analysis identified age, primary tumor location, tumor grade, disease stage, chemotherapy, and radiation as risk factors for SPMs in GMN patients. Calibration curves and ROC curves in both training and verification cohorts demonstrated the predictive accuracy of the established nomogram, which exhibited a good ability to predict SPM occurrence.
This study presents the nomogram developed for quantitatively predicting SPM probabilities in GMN patients for the first time. The constructed nomogram can assist clinicians in designing personalized treatment strategies and facilitate clinical decision-making processes.
原发性妇科恶性肿瘤(GMN)切除术后放疗与继发原发性恶性肿瘤(SPM)发生之间的关联仍是一个有争议的话题。本研究是第一项基于人群的分析,采用多变量竞争风险模型评估这种关系的风险因素,并开发一个全面的竞争风险列线图以定量预测SPM的概率。
在我们的研究中,从1973年至2015年的流行病学、监测与最终结果(SEER)数据库中回顾性收集原发性GMN患者的数据。比较GMN诊断至少六个月后诊断出的继发性恶性肿瘤的发病率,使用Fine和Gray比例子分布风险模型确定GMN患者发生SPM的潜在风险因素。构建竞争风险列线图以量化SPM的概率。
本研究共纳入109537例GMN患者,训练集和验证集分别有76675例和32862例GMN患者。竞争风险模型分析确定年龄、原发肿瘤部位、肿瘤分级、疾病分期、化疗和放疗是GMN患者发生SPM的风险因素。训练队列和验证队列中的校准曲线和ROC曲线均显示了所建立列线图的预测准确性,其具有良好的预测SPM发生的能力。
本研究首次提出了用于定量预测GMN患者SPM概率的列线图。构建的列线图可协助临床医生设计个性化治疗策略,并促进临床决策过程。