Meng Xiangdi, Jiang Yingxiao, Chang Xiaolong, Zhang Yan, Guo Yinghua
Department of Radiation Oncology, Weifang People's Hospital, Weifang, Shandong, China.
School of Clinical Medicine, Weifang Medical University, Weifang, China.
Front Oncol. 2023 Jan 9;12:1049531. doi: 10.3389/fonc.2022.1049531. eCollection 2022.
Survival prediction for cervical cancer is usually based on its stage at diagnosis or a multivariate nomogram. However, few studies cared whether long-term survival improved after they survived for several years. Meanwhile, traditional survival analysis could not calculate this dynamic outcome. We aimed to assess the improvement of survival over time using conditional survival (CS) analysis and developed a novel conditional survival nomogram (CS-nomogram) to provide individualized and real-time prognostic information.
Cervical cancer patients were collected from the Surveillance, Epidemiology, and End Results (SEER) database. The Kaplan-Meier method estimated cancer-specific survival (CSS) and calculated the conditional CSS (C-CSS) at year y+x after giving x years of survival based on the formula C-CSS(y|x) =CSS(y+x)/CSS(x). y indicated the number of years of further survival under the condition that the patient was determined to have survived for x years. The study identified predictors by the least absolute shrinkage and selection operator (LASSO) regression and used multivariate Cox regression to demonstrate these predictors' effect on CSS and to develop a nomogram. Finally, the CSS possibilities predicted by the nomogram were brought into the C-CSS formula to create the CS-nomogram.
A total of 18,511 patients aged <65 years with cervical cancer from 2004 to 2019 were included in this study. CS analysis revealed that the 15-year CSS increased year by year from the initial 72.6% to 77.8%, 84.5%, 88.8%, 91.5%, 93.5%, 94.8%, 95.7%, 96.4%, 97.3%, 98.0%, 98.5%, 99.1%, and 99.4% (after surviving for 1-13 years, respectively), and found that when survival exceeded 5-6 years, the risk of death from cervical cancer would be less than 5% in 10-15 years. The CS-nomogram constructed using tumor size, lymph node status, distant metastasis status, and histological grade showed strong predictive performance with a concordance index (C-index) of 0.805 and a stable area under the curve (AUC) between 0.795 and 0.816 over 15 years.
CS analysis in this study revealed the gradual improvement of CSS over time in long-term survived cervical cancer patients. We applied CS to the nomogram and developed a CS-nomogram successfully predicting individualized and real-time prognosis.
宫颈癌的生存预测通常基于诊断时的分期或多变量列线图。然而,很少有研究关注患者在存活数年之后长期生存率是否有所提高。同时,传统生存分析无法计算这种动态结果。我们旨在使用条件生存(CS)分析评估随时间推移的生存改善情况,并开发一种新型条件生存列线图(CS列线图)以提供个性化的实时预后信息。
从监测、流行病学和最终结果(SEER)数据库收集宫颈癌患者。采用Kaplan-Meier方法估计癌症特异性生存率(CSS),并根据公式C-CSS(y|x) =CSS(y+x)/CSS(x)计算在存活x年后第y+x年的条件CSS(C-CSS)。y表示患者在已确定存活x年的条件下进一步存活的年数。该研究通过最小绝对收缩和选择算子(LASSO)回归确定预测因素,并使用多变量Cox回归来证明这些预测因素对CSS的影响并开发列线图。最后,将列线图预测的CSS可能性代入C-CSS公式以创建CS列线图。
本研究纳入了2004年至2019年期间18511例年龄<65岁的宫颈癌患者。CS分析显示,15年CSS从最初的72.6%逐年增加到77.8%、84.5%、88.8%、91.5%、93.5%、94.8%、95.7%、96.4%、97.3%、98.0%、98.5%、99.1%和99.4%(分别在存活1 - 13年后),并发现当生存超过5 - 6年时,10 - 15年内死于宫颈癌的风险将小于5%。使用肿瘤大小、淋巴结状态(有无转移)、远处转移状态和组织学分级构建的CS列线图显示出强大的预测性能,一致性指数(C指数)为0.805,15年期间曲线下面积(AUC)稳定在0.795至0.816之间。
本研究中的CS分析揭示了长期存活的宫颈癌患者CSS随时间的逐渐改善。我们将CS应用于列线图并成功开发了一种CS列线图,可预测个性化的实时预后。