Department of Research and Development, VUNO, Seoul, Republic of Korea.
Department of Anesthesiology and Pain Medicine, Yonsei University College of Medicine, Seoul, Republic of Korea.
Crit Care Med. 2024 Mar 1;52(3):e110-e120. doi: 10.1097/CCM.0000000000006137. Epub 2023 Dec 20.
The limitations of current early warning scores have prompted the development of deep learning-based systems, such as deep learning-based cardiac arrest risk management systems (DeepCARS). Unfortunately, in South Korea, only two institutions operate 24-hour Rapid Response System (RRS), whereas most hospitals have part-time or no RRS coverage at all. This study validated the predictive performance of DeepCARS during RRS operation and nonoperation periods and explored its potential beyond RRS operating hours.
Retrospective cohort study.
In this 1-year retrospective study conducted at Yonsei University Health System Severance Hospital in South Korea, DeepCARS was compared with conventional early warning systems for predicting in-hospital cardiac arrest (IHCA). The study focused on adult patients admitted to the general ward, with the primary outcome being IHCA-prediction performance within 24 hours of the alarm.
We analyzed the data records of adult patients admitted to a general ward from September 1, 2019, to August 31, 2020.
None.
Performance evaluation was conducted separately for the operational and nonoperational periods of the RRS, using the area under the receiver operating characteristic curve (AUROC) as the metric. DeepCARS demonstrated a superior AUROC as compared with the Modified Early Warning Score (MEWS) and the National Early Warning Score (NEWS), both during RRS operating and nonoperating hours. Although the MEWS and NEWS exhibited varying performance across the two periods, DeepCARS showed consistent performance.
The accuracy and efficiency for predicting IHCA of DeepCARS were superior to that of conventional methods, regardless of whether the RRS was in operation. These findings emphasize that DeepCARS is an effective screening tool suitable for hospitals with full-time RRS, part-time RRS, and even those without any RRS.
当前的早期预警评分存在局限性,这促使开发了基于深度学习的系统,例如基于深度学习的心脏骤停风险管理系统(DeepCARS)。不幸的是,在韩国,只有两家机构运营 24 小时快速反应系统(RRS),而大多数医院根本没有或只有兼职的 RRS 覆盖。本研究验证了 DeepCARS 在 RRS 运行和非运行期间的预测性能,并探讨了其在 RRS 运行时间之外的潜在应用。
回顾性队列研究。
在这项为期 1 年的回顾性研究中,研究对象为韩国延世大学健康系统塞弗伦斯医院的成年普通病房住院患者,将 DeepCARS 与传统的早期预警系统进行比较,以预测住院期间心脏骤停(IHCA)。研究重点是普通病房入院的成年患者,主要结局是在报警后 24 小时内预测 IHCA 的性能。
我们分析了 2019 年 9 月 1 日至 2020 年 8 月 31 日期间入住普通病房的成年患者的数据记录。
无。
使用接受者操作特征曲线下面积(AUROC)作为指标,分别在 RRS 运行和非运行期间对 DeepCARS 的性能进行评估。与改良早期预警评分(MEWS)和国家早期预警评分(NEWS)相比,DeepCARS 在 RRS 运行和非运行期间均具有更高的 AUROC。尽管 MEWS 和 NEWS 在这两个时期的性能有所不同,但 DeepCARS 的性能保持一致。
无论 RRS 是否运行,DeepCARS 预测 IHCA 的准确性和效率均优于传统方法。这些发现强调,DeepCARS 是一种有效的筛选工具,适用于全职 RRS、兼职 RRS 甚至没有任何 RRS 的医院。