Yale University School of Medicine, New Haven, Connecticut, U.S.A.
Division of Otolaryngology-Head and Neck Surgery, Department of Surgery, Yale University School of Medicine, New Haven, Connecticut, U.S.A.
Laryngoscope. 2023 Jul;133(7):1652-1659. doi: 10.1002/lary.30351. Epub 2022 Aug 20.
OBJECTIVE(S): We aimed to develop a machine learning (ML) model to accurately predict the timing of oral squamous cell carcinoma (OSCC) recurrence across four 1-year intervals.
Patients with surgically treated OSCC between 2012-2018 were retrospectively identified from the Yale-New Haven Health system tumor registry. Patients with known recurrence or minimum follow-up of 24 months from surgery were included. Patients were classified into one of five levels: four 1-year intervals and one level for no recurrence (within 4 years of surgery). Three sets of data inputs (comprehensive, feature selection, nomogram) were combined with 4 ML architectures (logistic regression, decision tree (DT), support vector machine (SVM), artificial neural network classifiers) yielding 12 models in total. Models were primarily evaluated using mean absolute error (MAE), lower values indicating better prediction of 1-year interval recurrence. Secondary outcomes included accuracy, weighted precision, and weighted recall.
389 patients met inclusion criteria: 102 (26.2%) recurred within 48 months of surgery. Median follow-up time was 25 months (IQR: 15-37.5) for patients with recurrence and 44 months (IQR: 32-57) for patients without recurrence. MAE of 0.654% and 80.8% accuracy were achieved on a 15-variable feature selection input by 2 ML models: DT and SVM classifiers.
To our knowledge, this is the first study to leverage multiclass ML models to predict time to OSCC recurrence. We developed a model using feature selection data input that reliably predicted recurrence within 1-year intervals. Precise modeling of recurrence timing has the potential to personalize surveillance protocols in the future to enhance early detection and reduce extraneous healthcare costs.
3 Laryngoscope, 133:1652-1659, 2023.
我们旨在开发一种机器学习(ML)模型,以准确预测口腔鳞状细胞癌(OSCC)在四个 1 年间隔内复发的时间。
从耶鲁-纽黑文健康系统肿瘤登记处回顾性确定了 2012-2018 年间接受手术治疗的 OSCC 患者。包括已知复发或手术后至少随访 24 个月的患者。患者分为五个级别之一:四个 1 年间隔和一个无复发级别(手术后 4 年内)。将三组数据输入(综合、特征选择、列线图)与 4 种 ML 架构(逻辑回归、决策树(DT)、支持向量机(SVM)、人工神经网络分类器)相结合,总共得到 12 个模型。主要通过平均绝对误差(MAE)评估模型,较低的值表示对 1 年间隔复发的预测更好。次要结果包括准确性、加权精度和加权召回率。
389 名患者符合纳入标准:102 名(26.2%)在手术后 48 个月内复发。复发患者的中位随访时间为 25 个月(IQR:15-37.5),无复发患者为 44 个月(IQR:32-57)。基于 15 个变量特征选择输入,2 个 ML 模型(DT 和 SVM 分类器)的 MAE 为 0.654%,准确率为 80.8%。
据我们所知,这是第一项利用多类 ML 模型预测 OSCC 复发时间的研究。我们使用特征选择数据输入开发了一种模型,该模型能够可靠地预测 1 年内的复发情况。精确建模复发时间有可能在未来实现个性化监测方案,从而提高早期检测率并降低不必要的医疗保健成本。
3 Laryngoscope,133:1652-1659,2023。