Lee Yeon Joo, Cho Kyung-Jae, Kwon Oyeon, Park Hyunho, Lee Yeha, Kwon Joon-Myoung, Park Jinsik, Kim Jung Soo, Lee Man-Jong, Kim Ah Jin, Ko Ryoung-Eun, Jeon Kyeongman, Jo You Hwan
Division of Pulmonary and Critical Care Medicine, Seoul National University Bundang Hospital, Gyeonggi-do, Republic of Korea.
VUNO, Seoul, Republic of Korea.
Resuscitation. 2021 Apr 22;163:78-85. doi: 10.1016/j.resuscitation.2021.04.013.
The recently developed deep learning (DL)-based early warning score (DEWS) has shown potential in predicting deteriorating patients. We aimed to validate DEWS in multiple centres and compare the prediction, alarming and timeliness performance with the modified early warning score (MEWS) to identify patients at risk for in-hospital cardiac arrest (IHCA).
METHOD/RESEARCH DESIGN: This retrospective cohort study included adult patients admitted to the general wards of five hospitals during a 12-month period. The occurrence of IHCA within 24 h of vital sign observation was the outcome of interest. We assessed the discrimination using the area under the receiver operating characteristic curve (AUROC).
The study population consists of 173,368 patients (224 IHCAs). The predictive performance of DEWS was superior to that of MEWS in both the internal (AUROC: 0.860 vs. 0.754, respectively) and external (AUROC: 0.905 vs. 0.785, respectively) validation cohorts. At the same specificity, DEWS had a higher sensitivity than MEWS, and at the same sensitivity, DEWS reduced the mean alarm count by nearly half of MEWS. Additionally, DEWS was able to predict more IHCA patients in the 24-0.5 h before the outcome, and DEWS was reasonably calibrated.
Our study showed that DEWS was superior to MEWS in three key aspects (IHCA predictive, alarming, and timeliness performance). This study demonstrates the potential of DEWS as an effective, efficient screening tool in rapid response systems (RRSs) to identify high-risk patients.
最近开发的基于深度学习(DL)的早期预警评分(DEWS)在预测病情恶化患者方面已显示出潜力。我们旨在在多个中心验证DEWS,并将其预测、报警和及时性性能与改良早期预警评分(MEWS)进行比较,以识别有院内心脏骤停(IHCA)风险的患者。
方法/研究设计:这项回顾性队列研究纳入了在12个月期间入住五家医院普通病房的成年患者。生命体征观察后24小时内发生的IHCA是感兴趣的结局。我们使用受试者操作特征曲线下面积(AUROC)评估辨别力。
研究人群包括173368名患者(224例IHCA)。在内部验证队列(AUROC分别为0.860和0.754)和外部验证队列(AUROC分别为0.905和0.785)中,DEWS的预测性能均优于MEWS。在相同特异性下,DEWS的敏感性高于MEWS,在相同敏感性下,DEWS将平均报警次数减少了近一半的MEWS。此外,DEWS能够在结局前24 - 0.5小时预测更多的IHCA患者,并且DEWS得到了合理校准。
我们的研究表明,DEWS在三个关键方面(IHCA预测、报警和及时性性能)优于MEWS。这项研究证明了DEWS作为快速反应系统(RRS)中识别高危患者的有效、高效筛查工具的潜力。