Lu Chien-Hung, Wang Weu, Li Yu-Chuan Jack, Chang I-Wei, Chen Chi-Long, Su Chien-Wei, Chang Chun-Chao, Kao Wei-Yu
Division of Gastroenterology and Hepatology, Department of Internal Medicine, Taipei Medical University Hospital, Taipei, Taiwan.
Division of Digestive Surgery, Department of Surgery, Taipei Medical University Hospital, Taipei, Taiwan.
Obes Surg. 2024 Dec;34(12):4393-4404. doi: 10.1007/s11695-024-07548-z. Epub 2024 Oct 25.
Although noninvasive tests can be used to predict liver fibrosis, their accuracy is limited for patients with severe obesity and nonalcoholic fatty liver disease (NAFLD). We developed machine learning (ML) models to predict significant liver fibrosis in patients with severe obesity through noninvasive tests.
This prospective study included 194 patients with severe obesity who underwent wedge liver biopsy and metabolic bariatric surgery at Taipei Medical University Hospital between September 2016 and December 2020. Significant liver fibrosis was defined as a fibrosis score ≥ 2. Patients were randomly divided into a training group (70%) and a validation group (30%). ML models, including support vector machine, random forest, k-nearest neighbor, XGBoost, and logistic regression, were trained to predict significant liver fibrosis, using DM status, AST, ALT, ultrasonographic fibrosis scores, and liver stiffness measurements (LSM). An ensemble model including these ML models was also used for prediction.
Among the ML models, the XGBoost model exhibited the highest AUROC of 0.77, with a sensitivity, specificity, and accuracy of 61.5%, 75.8%, and 69.5%, in validation set, while LSM, AST, ALT showed strongest effects on the model. The ensemble model outperformed all ML models in terms of sensitivity, specificity, and accuracy of 73.1%, 90.9%, and 83.1%.
For patients with severe obesity and NAFLD, the XGBoost model and the ensemble model exhibit high predictive performance for significant liver fibrosis. These models may be used to screen for significant liver fibrosis in this patient group and monitor treatment response after metabolic bariatric surgery.
尽管非侵入性检测可用于预测肝纤维化,但对于严重肥胖和非酒精性脂肪性肝病(NAFLD)患者,其准确性有限。我们开发了机器学习(ML)模型,通过非侵入性检测预测严重肥胖患者的显著肝纤维化。
这项前瞻性研究纳入了194例严重肥胖患者,他们于2016年9月至2020年12月在台北医学大学医院接受了楔形肝活检和代谢性减重手术。显著肝纤维化定义为纤维化评分≥2。患者被随机分为训练组(70%)和验证组(30%)。使用糖尿病状态、AST、ALT、超声纤维化评分和肝脏硬度测量(LSM),对包括支持向量机、随机森林、k近邻、XGBoost和逻辑回归在内的ML模型进行训练,以预测显著肝纤维化。还使用了包括这些ML模型的集成模型进行预测。
在ML模型中,XGBoost模型在验证集中表现出最高的曲线下面积(AUROC)为0.77,敏感性、特异性和准确性分别为61.5%、75.8%和69.5%,而LSM、AST、ALT对模型的影响最强。集成模型在敏感性、特异性和准确性方面分别为73.1%、90.9%和83.1%,优于所有ML模型。
对于严重肥胖和NAFLD患者,XGBoost模型和集成模型对显著肝纤维化具有较高的预测性能。这些模型可用于筛查该患者群体中的显著肝纤维化,并监测代谢性减重手术后的治疗反应。