Luo Jin, Diao Biyu, Wang Jinqiu, Yin Ke, Guo Shenchao, Hong Chenyan, Guo Yu
Department of Breast and Thyroid Surgery, Ningbo First Hospital, No 59 Liuting Road, Ningbo, 315010, China.
J Cancer Res Clin Oncol. 2023 Sep;149(12):10423-10433. doi: 10.1007/s00432-023-04955-0. Epub 2023 Jun 5.
The objective of this study is to construct a novel clinical risk stratification for overall survival (OS) prediction in adolescent and young adult (AYA) women with breast cancer.
From the Surveillance, Epidemiology, and End Results (SEER) database, AYA women with primary breast cancer diagnosed from 2010 to 2018 were included in our study. A deep learning algorithm, referred to as DeepSurv, was used to construct a prognostic predictive model based on 19 variables, including demographic and clinical information. Harrell's C-index, the receiver operating characteristic (ROC) curve, and calibration plots were adopted to comprehensively assess the predictive performance of the prognostic predictive model. Then, a novel clinical risk stratification was constructed based on the total risk score derived from the prognostic predictive model. The Kaplan-Meier method was used to plot survival curves for patients with different death risks, using the log-rank test to compared the survival disparities. Decision curve analyses (DCAs) were adopted to evaluate the clinical utility of the prognostic predictive model.
Among 14,243 AYA women with breast cancer finally included in this study, 10,213 (71.7%) were White and the median (interquartile range, IQR) age was 36 (32-38) years. The prognostic predictive model based on DeepSurv presented high C-indices in both the training cohort [0.831 (95% CI 0.819-0.843)] and the test cohort [0.791 (95% CI 0.764-0.818)]. Similar results were observed in ROC curves. The excellent agreement between the predicted and actual OS at 3 and 5 years were both achieved in the calibration plots. The obvious survival disparities were observed according to the clinical risk stratification based on the total risk score derived from the prognostic predictive model. DCAs also showed that the risk stratification possessed a significant positive net benefit in the practical ranges of threshold probabilities. Lastly, a user-friendly Web-based calculator was generated to visualize the prognostic predictive model.
A prognostic predictive model with sufficient prediction accuracy was construct for predicting OS of AYA women with breast cancer. Given its public accessibility and easy-to-use operation, the clinical risk stratification based on the total risk score derived from the prognostic predictive model may help clinicians to make better-individualized management.
本研究旨在构建一种用于预测青少年及年轻成年(AYA)乳腺癌女性总生存期(OS)的新型临床风险分层模型。
从监测、流行病学和最终结果(SEER)数据库中纳入2010年至2018年诊断为原发性乳腺癌的AYA女性。使用一种名为DeepSurv的深度学习算法,基于包括人口统计学和临床信息在内的19个变量构建预后预测模型。采用Harrell's C指数、受试者工作特征(ROC)曲线和校准图全面评估预后预测模型的预测性能。然后,根据预后预测模型得出的总风险评分构建一种新型临床风险分层。采用Kaplan-Meier法绘制不同死亡风险患者的生存曲线,使用对数秩检验比较生存差异。采用决策曲线分析(DCA)评估预后预测模型的临床实用性。
本研究最终纳入的14243例AYA乳腺癌女性中,10213例(71.7%)为白人,中位(四分位间距,IQR)年龄为36(32-38)岁。基于DeepSurv的预后预测模型在训练队列[0.831(95%CI 0.819-0.843)]和测试队列[0.791(95%CI 0.764-0.818)]中均呈现出较高的C指数。ROC曲线也观察到类似结果。在校准图中,3年和5年预测OS与实际OS之间均达成了良好的一致性。根据基于预后预测模型得出的总风险评分的临床风险分层,观察到明显的生存差异。DCA还显示,在阈值概率的实际范围内,风险分层具有显著的正净效益。最后,生成了一个用户友好的基于网络的计算器,以可视化预后预测模型。
构建了一个具有足够预测准确性的预后预测模型,用于预测AYA乳腺癌女性的OS。鉴于其公开可及性和易于操作,基于预后预测模型得出的总风险评分的临床风险分层可能有助于临床医生进行更好的个体化管理。