Department of General, Visceral, Tumour, and Transplantation Surgery, University Hospital of Cologne, Cologne, Germany.
Centre for Molecular Medicine Cologne (CMMC), Faculty of Medicine and University Hospital of Cologne, Cologne, Germany.
Br J Surg. 2023 Sep 6;110(10):1361-1366. doi: 10.1093/bjs/znad181.
Oesophagectomy is an operation with a high risk of postoperative complications. The aim of this single-centre retrospective study was to apply machine-learning methods to predict complications (Clavien-Dindo grade IIIa or higher) and specific adverse events.
Patients with resectable adenocarcinoma or squamous cell carcinoma of the oesophagus and gastro-oesophageal junction who underwent Ivor Lewis oesophagectomy between 2016 and 2021 were included. The tested algorithms were logistic regression after recursive feature elimination, random forest, k-nearest neighbour, support vector machine, and neural network. The algorithms were also compared with a current risk score (the Cologne risk score).
457 patients had Clavien-Dindo grade IIIa or higher complications (52.9 per cent) versus 407 patients with Clavien-Dindo grade 0, I, or II complications (47.1 per cent). After 3-fold imputation and 3-fold cross-validation, the overall accuracies were: logistic regression after recursive feature elimination, 0.528; random forest, 0.535; k-nearest neighbour, 0.491; support vector machine, 0.511; neural network, 0.688; and Cologne risk score, 0.510. For medical complications, the results were: logistic regression after recursive feature elimination, 0.688; random forest, 0.664; k-nearest neighbour, 0.673; support vector machine, 0.681; neural network, 0.692; and Cologne risk score, 0.650. For surgical complications, the results were: logistic regression after recursive feature elimination, 0.621; random forest, 0.617; k-nearest neighbour, 0.620; support vector machine, 0.634; neural network, 0.667; and Cologne risk score, 0.624. The calculated area under the curve of the neural network was 0.672 for Clavien-Dindo grade IIIa or higher, 0.695 for medical complications, and 0.653 for surgical complications.
The neural network scored the highest accuracies compared with all of the other models for the prediction of postoperative complications after oesophagectomy.
食管切除术是一种术后并发症风险较高的手术。本单中心回顾性研究旨在应用机器学习方法预测并发症(Clavien-Dindo 分级 IIIa 或更高)和特定不良事件。
纳入 2016 年至 2021 年间接受 Ivor Lewis 食管切除术的可切除食管腺癌或食管胃交界部鳞状细胞癌患者。测试算法包括递归特征消除后的逻辑回归、随机森林、k-最近邻、支持向量机和神经网络。还将这些算法与当前风险评分(科隆风险评分)进行了比较。
457 例患者发生 Clavien-Dindo 分级 IIIa 或更高并发症(52.9%),407 例患者发生 Clavien-Dindo 分级 0、I 或 II 并发症(47.1%)。经过 3 倍插补和 3 倍交叉验证,总体准确率为:递归特征消除后的逻辑回归,0.528;随机森林,0.535;k-最近邻,0.491;支持向量机,0.511;神经网络,0.688;科隆风险评分,0.510。对于医疗并发症,结果如下:递归特征消除后的逻辑回归,0.688;随机森林,0.664;k-最近邻,0.673;支持向量机,0.681;神经网络,0.692;科隆风险评分,0.650。对于手术并发症,结果如下:递归特征消除后的逻辑回归,0.621;随机森林,0.617;k-最近邻,0.620;支持向量机,0.634;神经网络,0.667;科隆风险评分,0.624。神经网络计算的术后并发症 Clavien-Dindo 分级 IIIa 或更高的曲线下面积为 0.672,医疗并发症为 0.695,手术并发症为 0.653。
与其他所有模型相比,神经网络在预测食管切除术后并发症方面的准确率最高。