Liao Fang, Wang Wei, Wang Jinyu
Sichuan Provincial Center for Mental Health, Sichuan Academy of Medical Sciences and Sichuan Provincial People's Hospital, Chengdu, 610072, China.
Key Laboratory of Psychosomatic Medicine, Chinese Academy of Medical Sciences, Chengdu, 610072, China.
Eur Arch Otorhinolaryngol. 2023 Feb;280(2):789-795. doi: 10.1007/s00405-022-07627-w. Epub 2022 Aug 28.
To assess the performance of DeepSurv, a deep learning-based model in the survival prediction of laryngeal squamous cell carcinoma (LSCC) using the Surveillance, Epidemiology, and End Results (SEER) database.
In this large population-based study, we developed and validated a deep learning survival neural network using pathologically diagnosed patients with LSCC from the SEER database between January 2010 and December 2018. Totally 13 variables were included in this network, including patients baseline characteristics, stage, grade, site, tumor extension and treatment details. Based on the total risk score derived from this algorithm, a three-knot restricted cubic spline was plotted to exhibit the difference of survival benefits from two treatment modalities.
Totally 6316 patients with LSCC were included in the study, of which 4237 cases diagnosed between 2010 and 2015 were selected as the development cohort, and the rest (2079 cases diagnosed from 2016 to 2018) were the validation cohort. A state-of-the-art deep learning-based model based on 23 features (i.e., 13 variables) was generated, which showed more superior performance in the prediction of overall survival (OS) than the tumor, node, and metastasis (TNM) staging system (C-index for DeepSurv vs TNM staging = 0.71; 95% CI 0.69-0.74 vs 0.61; 95% CI 0.60-0.63). Interestingly, a significantly nonlinear association between total risk score and treatment effectiveness was observed. When the total risk score ranges 0.1-1.5, surgical treatment brought more survival benefits than nonsurgical one for LSCC patients, especially in 70.5% of patients staged III-IV.
The deep learning-based model shows more potential benefits in survival estimation for patients with LSCC, which may potentially serve as an auxiliary approach to provide reliable treatment recommendations.
使用监测、流行病学和最终结果(SEER)数据库,评估基于深度学习的模型DeepSurv在喉鳞状细胞癌(LSCC)生存预测中的性能。
在这项基于大人群的研究中,我们使用2010年1月至2018年12月期间SEER数据库中经病理诊断的LSCC患者,开发并验证了一个深度学习生存神经网络。该网络共纳入13个变量,包括患者的基线特征、分期、分级、部位、肿瘤扩展情况及治疗细节。基于该算法得出的总风险评分,绘制了一个三节点受限立方样条图,以展示两种治疗方式在生存获益方面的差异。
该研究共纳入6316例LSCC患者,其中2010年至2015年诊断的4237例患者被选为开发队列,其余(2016年至2018年诊断的2079例)为验证队列。生成了一个基于23个特征(即13个变量)的先进深度学习模型,该模型在总生存(OS)预测方面比肿瘤、淋巴结和转移(TNM)分期系统表现更优(DeepSurv与TNM分期的C指数分别为0.71;95%CI 0.69 - 0.74和0.61;95%CI 0.60 - 0.63)。有趣的是,观察到总风险评分与治疗效果之间存在显著的非线性关联。当总风险评分在0.1 - 1.5范围内时,手术治疗为LSCC患者带来的生存获益比非手术治疗更多,尤其是在70.5%的III-IV期患者中。
基于深度学习的模型在LSCC患者生存估计方面显示出更多潜在益处,可能作为一种辅助方法来提供可靠的治疗建议。