Chiu Catherine, Braehler Matthias R, Donovan Anne L, Butte Atul J, Pirracchio Romain, Bishara Andrew M
Department of Anesthesia and Perioperative Care, University of California, San Francisco, USA.
Bakar Computational Health Sciences Institute, University of California San Francisco, 550 16th St. Office 5212, San Francisco, CA, 94158, USA.
BMC Anesthesiol. 2025 Jul 17;25(1):351. doi: 10.1186/s12871-025-03195-8.
Unplanned postoperative intensive care unit admissions (UIAs) are rare events that cause significant challenges to perioperative workflow. We describe the development of a machine-learning derived model to predict UIAs using only widely used preoperative variables.
This was a 3-year retrospective review of all adult surgeries under the General, Vascular, and Thoracic surgical services with anticipated length of greater than 180 minutes at a single institution. A UIA was defined as any post-operative patient recovering in the post-anesthesia care unit (PACU) requiring direct transfer to the intensive care unit (ICU) for higher level of care. We developed our prediction model with a gradient-boosting decision tree algorithm (XGBoost). The model incorporated sixteen generalizable predictor variables that were derived from the demographics and surgical booking details. Validation and evaluation were performed with 10-fold cross validation, and model performance was evaluated using the area under the receiver operating characteristic (ROC) curve, sensitivity, specificity, and likelihood ratio.
A total of 4658 patients were included for analysis. The incidence of UIAs was 2.3%. With 10-fold cross validation, the area under the ROC curve was 0.80 (95% CI 0.74-0.86). Two decision thresholds were used, which achieved the best specificity of 94% (95% CI 92-96%), best positive likelihood ratio of 4.22 (95% CI 0.99-8.79), and best sensitivity of 82% (95% CI 58-100%).
Our machine learning-derived model is a reliable tool for the perioperative clinician to predict a rare outcome in high-risk patients using only preoperative variables. Future studies will include prospective validation of this model at other institutions and real-time incorporation for improvement in perioperative workflow.
术后非计划入住重症监护病房(UIA)是罕见事件,给围手术期工作流程带来重大挑战。我们描述了一种仅使用广泛应用的术前变量通过机器学习得出的预测UIA的模型的开发过程。
这是一项对单一机构中普通外科、血管外科和胸外科服务下预计手术时长超过180分钟的所有成人手术进行的为期3年的回顾性研究。UIA被定义为任何在麻醉后护理单元(PACU)恢复的术后患者,因需要更高水平的护理而直接转至重症监护病房(ICU)。我们使用梯度提升决策树算法(XGBoost)开发了预测模型。该模型纳入了从人口统计学和手术预约细节中得出的16个可推广的预测变量。采用10折交叉验证进行验证和评估,并使用受试者操作特征(ROC)曲线下面积、敏感性、特异性和似然比来评估模型性能。
总共纳入4658例患者进行分析。UIA的发生率为2.3%。通过10折交叉验证,ROC曲线下面积为0.80(95%置信区间0.74 - 0.86)。使用了两个决策阈值,其达到了94%(95%置信区间92 - 96%)的最佳特异性、4.22(95%置信区间0.99 - 8.79)的最佳阳性似然比以及82%(95%置信区间58 - 100%)的最佳敏感性。
我们通过机器学习得出的模型是围手术期临床医生仅使用术前变量预测高危患者罕见结局的可靠工具。未来的研究将包括在其他机构对该模型进行前瞻性验证以及实时纳入以改善围手术期工作流程。