Department of Otolaryngology-Head and Neck Surgery, University of Kansas Medical Center, Kansas City, Kansas, USA.
Department of Radiation Oncology, University of Kansas Medical Center, Kansas City, Kansas, USA.
Head Neck. 2020 Sep;42(9):2330-2339. doi: 10.1002/hed.26246. Epub 2020 May 8.
Machine learning (ML) algorithms may predict patients who will require salvage total laryngectomy (STL) after primary radiotherapy with or without chemotherapy for laryngeal squamous cell carcinoma (SCC).
Patients treated for T1-T3a laryngeal SCC were identified from the National Cancer Database. Multiple ML algorithms were trained to predict which patients would go on to require STL after primary nonsurgical treatment.
A total of 16 440 cases were included. The best classification performance was achieved with a gradient boosting algorithm, which achieved accuracy of 76.0% (95% CI 74.5-77.5) and area under the curve = 0.762. The most important variables used to construct the model were distance from residence to treating facility and days from diagnosis to start of treatment.
We can identify patients likely to fail primary radiotherapy with or without chemotherapy and who will go on to require STL by applying ML techniques and argue for high-quality, multidisciplinary regionalized care.
机器学习(ML)算法可以预测接受原发性放化疗或单纯放疗的喉鳞状细胞癌(SCC)患者是否需要挽救性全喉切除术(STL)。
从国家癌症数据库中确定了 T1-T3a 喉 SCC 患者。使用多种 ML 算法对原发性非手术治疗后需要 STL 的患者进行预测。
共纳入 16440 例患者。梯度提升算法的分类性能最佳,准确率为 76.0%(95%CI 74.5-77.5),曲线下面积=0.762。用于构建模型的最重要变量是距治疗机构的距离和从诊断到开始治疗的天数。
我们可以通过应用 ML 技术来识别那些可能在原发性放化疗或单纯放疗后失败并需要进行 STL 的患者,并提倡高质量、多学科的区域化治疗。