Department of Emergency Medicine, Brigham and Women's Hospital, Boston, MA; Harvard Medical School, Boston, MA.
Department of Emergency Medicine, Brigham and Women's Hospital, Boston, MA; Department of Emergency Medicine, Massachusetts General Hospital, Boston, MA.
Ann Emerg Med. 2023 Jun;81(6):738-748. doi: 10.1016/j.annemergmed.2022.11.012. Epub 2023 Jan 20.
Early notification of admissions from the emergency department (ED) may allow hospitals to plan for inpatient bed demand. This study aimed to assess Epic's ED Likelihood to Occupy an Inpatient Bed predictive model and its application in improving hospital bed planning workflows.
All ED adult (18 years and older) visits from September 2021 to August 2022 at a large regional health care system were included. The primary outcome was inpatient admission. The predictive model is a random forest algorithm that uses demographic and clinical features. The model was implemented prospectively, with scores generated every 15 minutes. The area under the receiver operator curves (AUROC) and precision-recall curves (AUPRC) were calculated using the maximum score prior to the outcome and for each prediction independently. Test characteristics and lead time were calculated over a range of model score thresholds.
Over 11 months, 329,194 encounters were evaluated, with an incidence of inpatient admission of 25.4%. The encounter-level AUROC was 0.849 (95% confidence interval [CI], 0.848 to 0.851), and the AUPRC was 0.643 (95% CI, 0.640 to 0.647). With a prediction horizon of 6 hours, the AUROC was 0.758 (95% CI, 0.758 to 0.759,) and the AUPRC was 0.470 (95% CI, 0.469 to 0.471). At a predictive model threshold of 40, the sensitivity was 0.49, the positive predictive value was 0.65, and the median lead-time warning was 127 minutes before the inpatient bed request.
The Epic ED Likelihood to Occupy an Inpatient Bed model may improve hospital bed planning workflows. Further study is needed to determine its operational effect.
急诊科(ED)入院的早期通知可能使医院能够规划住院床位需求。本研究旨在评估 Epic 的 ED 占用住院床位可能性预测模型及其在改善医院床位规划工作流程中的应用。
纳入了 2021 年 9 月至 2022 年 8 月期间某大型区域医疗系统的所有成年 ED 就诊(18 岁及以上)。主要结局是住院收治。预测模型是一种随机森林算法,使用人口统计学和临床特征。该模型前瞻性实施,每 15 分钟生成一次分数。使用结局前的最大分数和每个预测的独立分数计算接受者操作特征曲线(AUROC)和精度-召回曲线(AUPRC)。在一系列模型评分阈值上计算测试特征和前置时间。
在 11 个月期间,评估了 329194 次就诊,住院收治率为 25.4%。就诊水平的 AUROC 为 0.849(95%置信区间[CI],0.848 至 0.851),AUPRC 为 0.643(95%CI,0.640 至 0.647)。预测时间为 6 小时时,AUROC 为 0.758(95%CI,0.758 至 0.759),AUPRC 为 0.470(95%CI,0.469 至 0.471)。在预测模型阈值为 40 时,敏感性为 0.49,阳性预测值为 0.65,住院床位请求前的中位前置时间警告为 127 分钟。
Epic 的 ED 占用住院床位可能性模型可能改善医院床位规划工作流程。需要进一步研究以确定其运营效果。