General Surgery Department, Mansoura University Hospitals, Mansoura University, Mansoura, Egypt.
Gastrointestinal Surgery Unit, Department of Surgery, Faculty of Medicine, Suez Canal University Hospital, Ismailia, Egypt.
Obes Surg. 2022 Aug;32(8):2537-2547. doi: 10.1007/s11695-022-06112-x. Epub 2022 May 21.
Prediction of the onset of de novo gastroesophageal reflux disease (GERD) after sleeve gastrectomy (SG) would be helpful in decision-making and selection of the optimal bariatric procedure for every patient. The present study aimed to develop an artificial intelligence (AI)-based model to predict the onset of GERD after SG to help clinicians and surgeons in decision-making.
A prospectively maintained database of patients with severe obesity who underwent SG was used for the development of the AI model using all the available data points. The dataset was arbitrarily split into two parts: 70% for training and 30% for testing. Then ranking of the variables was performed in two steps. Different learning algorithms were used, and the best model that showed maximum performance was selected for the further steps of machine learning. A multitask AI platform was used to determine the cutoff points for the top numerical predictors of GERD.
In total, 441 patients (76.2% female) of a mean age of 43.7 ± 10 years were included. The ensemble model outperformed the other models. The model achieved an AUC of 0.93 (95%CI 0.88-0.99), sensitivity of 79.2% (95% CI 57.9-92.9%), and specificity of 86.1% (95%CI 70.5-95.3%). The top five ranked predictors were age, weight, preoperative GERD, size of orogastric tube, and distance of first stapler firing from the pylorus.
An AI-based model for the prediction of GERD after SG was developed. The model had excellent accuracy, yet a moderate sensitivity and specificity. Further prospective multicenter trials are needed to externally validate the model developed.
预测袖状胃切除术(SG)后新发胃食管反流病(GERD)的发生有助于决策制定和为每位患者选择最佳的减重手术。本研究旨在开发一种基于人工智能(AI)的模型来预测 SG 后 GERD 的发生,以帮助临床医生和外科医生做出决策。
使用前瞻性维护的严重肥胖症患者数据库,使用所有可用的数据点来开发 AI 模型。数据集被任意分为两部分:70%用于训练,30%用于测试。然后对变量进行排名。使用不同的学习算法,并选择表现最佳的最佳模型用于机器学习的进一步步骤。使用多任务 AI 平台来确定 GERD 最高数值预测因子的截止值。
共有 441 名(76.2%为女性)平均年龄为 43.7±10 岁的患者被纳入研究。集成模型优于其他模型。该模型的 AUC 为 0.93(95%CI 0.88-0.99),敏感性为 79.2%(95%CI 57.9-92.9%),特异性为 86.1%(95%CI 70.5-95.3%)。排名前五的预测因子为年龄、体重、术前 GERD、胃管大小和第一吻合器离幽门的距离。
开发了一种用于预测 SG 后 GERD 的 AI 模型。该模型具有出色的准确性,但敏感性和特异性适中。需要进一步的前瞻性多中心试验来验证所开发模型的外部有效性。