Liu Yang, Sun Shiran, Zhang Ye, Huang Xiaodong, Wang Kai, Qu Yuan, Chen Xuesong, Wu Runye, Zhang Jianghu, Luo Jingwei, Li Yexiong, Wang Jingbo, Yi Junlin
Department of Radiation Oncology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100021, China.
Department of Radiation Oncology, National Cancer Center/National Clinical Research Center for Cancer/Hebei Cancer Hospital, Chinese Academy of Medical Sciences (CAMS), Langfang 065001, China.
J Natl Cancer Cent. 2023 Oct 12;3(4):295-305. doi: 10.1016/j.jncc.2023.10.002. eCollection 2023 Dec.
Accurate prognostic predictions and personalized decision-making on induction chemotherapy (IC) for individuals with locally advanced nasopharyngeal carcinoma (LA-NPC) remain challenging. This research examined the predictive function of tumor burden-incorporated machine-learning algorithms for overall survival (OS) and their value in guiding treatment in patients with LA-NPC.
Individuals with LA-NPC were reviewed retrospectively. Tumor burden signature-based OS prediction models were established using a nomogram and two machine-learning methods, the interpretable eXtreme Gradient Boosting (XGBoost) risk prediction model, and DeepHit time-to-event neural network. The models' prediction performances were compared using the concordance index (C-index) and the area under the curve (AUC). The patients were divided into two cohorts based on the risk predictions of the most successful model. The efficacy of IC combined with concurrent chemoradiotherapy was compared to that of chemoradiotherapy alone.
The 1 221 eligible individuals, assigned to the training ( = 813) or validation ( = 408) set, showed significant respective differences in the C-indices of the XGBoost, DeepHit, and nomogram models (0.849 and 0.768, 0.811 and 0.767, 0.730 and 0.705). The training and validation sets had larger AUCs in the XGBoost and DeepHit models than the nomogram model in predicting OS (0.881 and 0.760, 0.845 and 0.776, and 0.764 and 0.729, < 0.001). IC presented survival benefits in the XGBoost-derived high-risk but not low-risk group.
This research used machine-learning algorithms to create and verify a comprehensive model integrating tumor burden with clinical variables to predict OS and determine which patients will most likely gain from IC. This model could be valuable for delivering patient counseling and conducting clinical evaluations.
对于局部晚期鼻咽癌(LA-NPC)患者,准确的预后预测以及针对诱导化疗(IC)的个性化决策仍然具有挑战性。本研究探讨了纳入肿瘤负荷的机器学习算法对总生存期(OS)的预测功能及其在指导LA-NPC患者治疗中的价值。
对LA-NPC患者进行回顾性分析。使用列线图以及两种机器学习方法,即可解释的极端梯度提升(XGBoost)风险预测模型和深度命中事件时间神经网络,建立基于肿瘤负荷特征的OS预测模型。使用一致性指数(C指数)和曲线下面积(AUC)比较模型的预测性能。根据最成功模型的风险预测将患者分为两个队列。比较IC联合同步放化疗与单纯放化疗的疗效。
1221名符合条件的个体被分配到训练集(n = 813)或验证集(n = 408),XGBoost、深度命中模型和列线图模型的C指数在训练集和验证集中分别显示出显著差异(0.849和0.768、0.811和0.767、0.730和0.705)。在预测OS方面,XGBoost和深度命中模型的训练集和验证集的AUC大于列线图模型(0.881和0.760、0.845和0.776以及0.764和0.729,P < 0.001)。IC在XGBoost衍生的高风险组而非低风险组中显示出生存获益。
本研究使用机器学习算法创建并验证了一个综合模型,该模型将肿瘤负荷与临床变量相结合,以预测OS并确定哪些患者最有可能从IC中获益。该模型对于为患者提供咨询和进行临床评估可能具有重要价值。