Mao Yichen, Ding Mingjun, Zong Dan, Mu Zhongde, He Xia
The Affiliated Cancer Hospital of Nanjing Medical University & Jiangsu Cancer Hospital & Jiangsu Institute of Cancer Research, Nanjing, China.
Department of Environmental Genomics, Jiangsu Key Laboratory of Cancer Biomarkers, Prevention and Treatment, Collaborative Innovation Center for Cancer Personalized Medicine, Nanjing Medical University, Nanjing, China.
Clin Transl Radiat Oncol. 2025 Mar 13;52:100946. doi: 10.1016/j.ctro.2025.100946. eCollection 2025 May.
Radiation-induced hypothyroidism (RIHT) is a common complication in nasopharyngeal carcinoma patients. Predicting its onset is crucial for effective management and early intervention. This study aims to develop a model based on deep learning survival analysis to predict RIHT in nasopharyngeal carcinoma patients.
This retrospective study included 535 nasopharyngeal carcinoma patients between January 2015 and October 2020. Cox regression, LASSO-Cox analyses and Spearman correlation test were employed to identify significant predictors. Two deep learning and two machine learning algorithms were trained, tuned, and compared against traditional Cox and NTCP models by C-index, Brier score, and decision curve analysis.
The study observed a 41.7 % incidence of RIHT, with a median time to onset of 15 months. AJCC N stage, thyroid volume and specific dose-volume parameters were identified as potential predictors. DeepSurv model outperformed traditional ones (C-index: DeepSurv 0.75, traditional models ≤ 0.63). While other models were competitive at early post-treatment intervals, deep learning models demonstrated superior performance over time. Calibration and decision curve analysis corroborated the enhanced predictive capability of DeepSurv. Feature importance analysis highlighted thyroid V30 and V50 as the most significant predictors.
DeepSurv demonstrated superior predictive performance for RIHT in nasopharyngeal carcinoma patients compared to traditional models. Deep learning-based predictions offer high accuracy, which may enable personalized patient management and have great potentials in mitigating the risk of RIHT. These findings suggested that incorporating such model into clinical practice could be beneficial for the management of RITH.
放射性甲状腺功能减退(RIHT)是鼻咽癌患者常见的并发症。预测其发病对于有效管理和早期干预至关重要。本研究旨在开发一种基于深度学习生存分析的模型,以预测鼻咽癌患者的RIHT。
这项回顾性研究纳入了2015年1月至2020年10月期间的535例鼻咽癌患者。采用Cox回归、LASSO-Cox分析和Spearman相关性检验来识别显著预测因素。对两种深度学习算法和两种机器学习算法进行训练、调整,并通过C指数、Brier评分和决策曲线分析与传统Cox模型和NTCP模型进行比较。
该研究观察到RIHT的发病率为41.7%,发病中位时间为15个月。AJCC N分期、甲状腺体积和特定剂量体积参数被确定为潜在预测因素。DeepSurv模型优于传统模型(C指数:DeepSurv为0.75,传统模型≤0.63)。虽然其他模型在治疗后早期具有竞争力,但随着时间的推移,深度学习模型表现出更好的性能。校准和决策曲线分析证实了DeepSurv增强的预测能力。特征重要性分析突出显示甲状腺V30和V50是最显著的预测因素。
与传统模型相比,DeepSurv在预测鼻咽癌患者的RIHT方面表现出卓越的预测性能。基于深度学习的预测具有很高的准确性,这可能使患者管理更加个性化,并在降低RIHT风险方面具有巨大潜力。这些发现表明,将这种模型纳入临床实践可能有利于RIHT的管理。