Guo Chenyan, Wang Jue, Wang Yongming, Qu Xinyu, Shi Zhiwen, Meng Yan, Qiu Junjun, Hua Keqin
Department of Gynecology, Obstetrics and Gynecology Hospital, Fudan University, 419 Fangxie Road, Shanghai 200011, China; Shanghai Key Laboratory of Female Reproductive Endocrine-Related Diseases, 413 Zhaozhou Road, Shanghai 200011, China.
Shanghai Changjiang Science and Technology Development Co. LTD, China.
Transl Oncol. 2021 May;14(5):101032. doi: 10.1016/j.tranon.2021.101032. Epub 2021 Feb 20.
Machine learning (ML) has been gradually integrated into oncologic research but seldom applied to predict cervical cancer (CC), and no model has been reported to predict survival and site-specific recurrence simultaneously. Thus, we aimed to develop ML models to predict survival and site-specific recurrence in CC and to guide individual surveillance.
We retrospectively collected data on CC patients from 2006 to 2017 in four hospitals. The survival or recurrence predictive value of the variables was analyzed using multivariate Cox, principal component, and K-means clustering analyses. The predictive performances of eight ML models were compared with logistic or Cox models. A novel web-based predictive calculator was developed based on the ML algorithms.
This study included 5112 women for analysis (268 deaths, 343 recurrences): (1) For site-specific recurrence, larger tumor size was associated with local recurrence, while positive lymph nodes were associated with distant recurrence. (2) The ML models exhibited better prognostic predictive performance than traditional models. (3) The ML models were superior to traditional models when multiple variables were used. (4) A novel predictive web-based calculator was developed and externally validated to predict survival and site-specific recurrence.
ML models might be a better analytic approach in CC prognostic prediction than traditional models as they can predict survival and site-specific recurrence simultaneously, especially when using multiple variables. Moreover, our novel web-based calculator may provide clinicians with useful information and help them make individual postoperative follow-up plans and further treatment strategies.
机器学习(ML)已逐渐融入肿瘤学研究,但很少应用于预测宫颈癌(CC),且尚无模型被报道可同时预测生存率和特定部位复发。因此,我们旨在开发ML模型以预测CC的生存率和特定部位复发,并指导个体化监测。
我们回顾性收集了2006年至2017年四家医院CC患者的数据。使用多变量Cox分析、主成分分析和K均值聚类分析来分析变量的生存或复发预测价值。将八个ML模型的预测性能与逻辑回归或Cox模型进行比较。基于ML算法开发了一种新型的基于网络的预测计算器。
本研究纳入5112名女性进行分析(268例死亡,343例复发):(1)对于特定部位复发,肿瘤体积较大与局部复发相关,而淋巴结阳性与远处复发相关。(2)ML模型显示出比传统模型更好的预后预测性能。(3)当使用多个变量时,ML模型优于传统模型。(4)开发了一种新型的基于网络的预测计算器,并进行了外部验证,以预测生存率和特定部位复发。
ML模型在CC预后预测中可能是比传统模型更好的分析方法,因为它们可以同时预测生存率和特定部位复发,特别是在使用多个变量时。此外,我们新型的基于网络的计算器可为临床医生提供有用信息,并帮助他们制定个体化的术后随访计划和进一步的治疗策略。