Li Qiaqia, Deng Yinghong, Wei Wei, Yang Fan, Lin An, Yao Desheng, Zhu Xiaofeng, Li Jundong
Department of Gynecologic Oncology, Sun Yat-sen University Cancer Center, Guangzhou, China.
State Key Laboratory of Oncology in South China, Collaborative Innovation Centre for Cancer Medicine, Guangzhou, China.
Front Oncol. 2022 Mar 23;12:859409. doi: 10.3389/fonc.2022.859409. eCollection 2022.
Treatment of epithelial ovarian cancer is evolving towards personalization and precision, which require patient-specific estimates of overall survival (OS) and progression-free survival (PFS).
Medical records of 1173 patients who underwent debulking surgery in our center were comprehensively reviewed and randomly allocated into a derivation cohort of 879 patients and an internal validation cohort of 294 patients. Five hundred and seventy-seven patients from the other three cancer centers served as the external validation cohort. A novel nomogram model for PFS and OS was constructed based on independent predictors identified by multivariable Cox regression analysis. The predictive accuracy and discriminative ability of the model were measured using Harrell's concordance index (C-index) and calibration curve.
The C-index values were 0.82 (95% CI: 0.76-0.88) and 0.84 (95% CI: 0.78-0.90) for the PFS and OS models, respectively, substantially higher than those obtained with the FIGO staging system and most nomograms reported for use in epithelial ovarian cancer. The nomogram score could clearly classify the patients into subgroups with different risks of recurrence or postoperative mortality. The online versions of our nomograms are available at https://eocnomogram.shinyapps.io/eocpfs/ and https://eocnomogram.shinyapps.io/eocos/.
A externally validated nomogram predicting OS and PFS in patients after R0 reduction surgery was established using a propensity score matching model. This nomogram may be useful in estimating individual recurrence risk and guiding personalized surveillance programs for patients after surgery, and it could potentially aid clinical decision-making or stratification for clinical trials.
上皮性卵巢癌的治疗正朝着个性化和精准化发展,这需要针对患者的总生存期(OS)和无进展生存期(PFS)进行评估。
对在本中心接受减瘤手术的1173例患者的病历进行全面回顾,并随机分为一个由879例患者组成的推导队列和一个由294例患者组成的内部验证队列。来自其他三个癌症中心的577例患者作为外部验证队列。基于多变量Cox回归分析确定的独立预测因素构建了一个用于PFS和OS的新型列线图模型。使用Harrell一致性指数(C指数)和校准曲线来衡量该模型的预测准确性和判别能力。
PFS和OS模型的C指数值分别为0.82(95%CI:0.76 - 0.88)和0.84(95%CI:0.78 - 0.90),显著高于国际妇产科联盟(FIGO)分期系统以及大多数报道用于上皮性卵巢癌的列线图所获得的值。列线图评分能够清晰地将患者分为具有不同复发风险或术后死亡率的亚组。我们的列线图在线版本可在https://eocnomogram.shinyapps.io/eocpfs/和https://eocnomogram.shinyapps.io/eocos/获取。
使用倾向评分匹配模型建立了一个经过外部验证的列线图,用于预测R0切除术后患者的OS和PFS。该列线图可能有助于估计个体复发风险,并指导术后患者的个性化监测方案,还可能有助于临床试验的临床决策或分层。