Department of Emergency Medicine, National Taiwan University Hospital Hsin-Chu Branch, Hsinchu, Taiwan.
Department of Emergency Medicine, College of Medicine, National Taiwan University, Taipei, Taiwan.
BMJ Health Care Inform. 2024 Apr 22;31(1):e100859. doi: 10.1136/bmjhci-2023-100859.
High-risk emergency department (ED) revisit is considered an important quality indicator that may reflect an increase in complications and medical burden. However, because of its multidimensional and highly complex nature, this factor has not been comprehensively investigated. This study aimed to predict high-risk ED revisit with a machine-learning (ML) approach.
This 3-year retrospective cohort study assessed adult patients between January 2019 and December 2021 from National Taiwan University Hospital Hsin-Chu Branch with high-risk ED revisit, defined as hospital or intensive care unit admission after ED return within 72 hours. A total of 150 features were preliminarily screened, and 79 were used in the prediction model. Deep learning, random forest, extreme gradient boosting (XGBoost) and stacked ensemble algorithm were used. The stacked ensemble model combined multiple ML models and performed model stacking as a meta-level algorithm. Confusion matrix, accuracy, sensitivity, specificity and area under the receiver operating characteristic curve (AUROC) were used to evaluate performance.
Analysis was performed for 6282 eligible adult patients: 5025 (80.0%) in the training set and 1257 (20.0%) in the testing set. High-risk ED revisit occurred for 971 (19.3%) of training set patients vs 252 (20.1%) in the testing set. Leading predictors of high-risk ED revisit were age, systolic blood pressure and heart rate. The stacked ensemble model showed more favourable prediction performance (AUROC 0.82) than the other models: deep learning (0.69), random forest (0.78) and XGBoost (0.79). Also, the stacked ensemble model achieved favourable accuracy and specificity.
The stacked ensemble algorithm exhibited better prediction performance in which the predictions were generated from different ML algorithms to optimally maximise the final set of results. Patients with older age and abnormal systolic blood pressure and heart rate at the index ED visit were vulnerable to high-risk ED revisit. Further studies should be conducted to externally validate the model.
高危急诊科(ED)复诊被认为是一个重要的质量指标,可能反映并发症和医疗负担的增加。然而,由于其多维且高度复杂的性质,该因素尚未得到全面研究。本研究旨在采用机器学习(ML)方法预测高危 ED 复诊。
这项为期 3 年的回顾性队列研究评估了 2019 年 1 月至 2021 年 12 月期间国立台湾大学医院新竹分院的成年患者的高危 ED 复诊情况,高危 ED 复诊定义为 ED 复诊后 72 小时内住院或入住重症监护病房。初步筛选了 150 个特征,其中 79 个用于预测模型。使用了深度学习、随机森林、极端梯度增强(XGBoost)和堆叠集成算法。堆叠集成模型结合了多个 ML 模型,并作为元级算法执行模型堆叠。混淆矩阵、准确性、敏感性、特异性和接收器操作特征曲线下的面积(AUROC)用于评估性能。
对 6282 名合格的成年患者进行了分析:训练集 5025 名(80.0%)和测试集 1257 名(20.0%)。训练集患者中有 971 名(19.3%)发生高危 ED 复诊,测试集患者中有 252 名(20.1%)。高危 ED 复诊的主要预测因素是年龄、收缩压和心率。堆叠集成模型的预测性能优于其他模型(AUROC 0.82):深度学习(0.69)、随机森林(0.78)和 XGBoost(0.79)。此外,堆叠集成模型具有较好的准确性和特异性。
堆叠集成算法在预测性能方面表现更好,预测结果来自不同的 ML 算法,以最佳方式最大化最终结果集。在指数 ED 就诊时年龄较大以及收缩压和心率异常的患者易发生高危 ED 复诊。应进行进一步的研究来验证该模型。