The Max Harry Weil Institute of Critical Care Research & Innovation, University of Michigan, Ann Arbor, MI.
Department of Emergency Medicine, University of Michigan Medical School, Ann Arbor, MI.
Crit Care Med. 2023 Jun 1;51(6):775-786. doi: 10.1097/CCM.0000000000005837. Epub 2023 Mar 16.
Implementing a predictive analytic model in a new clinical environment is fraught with challenges. Dataset shifts such as differences in clinical practice, new data acquisition devices, or changes in the electronic health record (EHR) implementation mean that the input data seen by a model can differ significantly from the data it was trained on. Validating models at multiple institutions is therefore critical. Here, using retrospective data, we demonstrate how Predicting Intensive Care Transfers and other UnfoReseen Events (PICTURE), a deterioration index developed at a single academic medical center, generalizes to a second institution with significantly different patient population.
PICTURE is a deterioration index designed for the general ward, which uses structured EHR data such as laboratory values and vital signs.
The general wards of two large hospitals, one an academic medical center and the other a community hospital.
The model has previously been trained and validated on a cohort of 165,018 general ward encounters from a large academic medical center. Here, we apply this model to 11,083 encounters from a separate community hospital.
None.
The hospitals were found to have significant differences in missingness rates (> 5% difference in 9/52 features), deterioration rate (4.5% vs 2.5%), and racial makeup (20% non-White vs 49% non-White). Despite these differences, PICTURE's performance was consistent (area under the receiver operating characteristic curve [AUROC], 0.870; 95% CI, 0.861-0.878), area under the precision-recall curve (AUPRC, 0.298; 95% CI, 0.275-0.320) at the first hospital; AUROC 0.875 (0.851-0.902), AUPRC 0.339 (0.281-0.398) at the second. AUPRC was standardized to a 2.5% event rate. PICTURE also outperformed both the Epic Deterioration Index and the National Early Warning Score at both institutions.
Important differences were observed between the two institutions, including data availability and demographic makeup. PICTURE was able to identify general ward patients at risk of deterioration at both hospitals with consistent performance (AUROC and AUPRC) and compared favorably to existing metrics.
在新的临床环境中实施预测分析模型充满了挑战。数据集中的变化,如临床实践、新的数据采集设备或电子健康记录 (EHR) 实施方面的变化,意味着模型所看到的输入数据与训练数据可能有很大的不同。因此,在多个机构验证模型是至关重要的。在这里,我们使用回顾性数据演示了如何将在单个学术医疗中心开发的恶化指数——预测重症监护转科和其他不可预见事件(Predicting Intensive Care Transfers and other UnfoReseen Events,PICTURE)推广到具有显著不同患者群体的第二家机构。
PICTURE 是一种专为普通病房设计的恶化指数,它使用结构化的 EHR 数据,如实验室值和生命体征。
两家大型医院的普通病房,一家是学术医疗中心,另一家是社区医院。
该模型之前已在一家大型学术医疗中心的 165018 例普通病房就诊中进行了培训和验证。在这里,我们将该模型应用于来自另一家社区医院的 11083 例就诊。
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研究发现,这两家医院在缺失率(>5%差异的特征数为 9/52)、恶化率(4.5%比 2.5%)和种族构成(20%非白人比 49%非白人)方面存在显著差异。尽管存在这些差异,但 PICTURE 的性能是一致的(接收者操作特征曲线下的面积 [AUROC],0.870;95%CI,0.861-0.878;精确-召回曲线下的面积 [AUPRC],0.298;95%CI,0.275-0.320)在第一家医院;AUROC 为 0.875(0.851-0.902),AUPRC 为 0.339(0.281-0.398)在第二家医院。AUPRC 被标准化为 2.5%的事件率。PICTURE 在这两个机构的 Epic 恶化指数和国家早期预警评分方面也表现出色。
两个机构之间观察到了重要的差异,包括数据的可用性和人口统计学构成。PICTURE 能够识别两个医院的普通病房患者的恶化风险,具有一致的性能(AUROC 和 AUPRC),并与现有指标相比表现良好。