From the Department of Emergency Medicine.
Division of Cardiology, Cardiovascular Center, Mediplex Sejong Hospital, Incheon.
Pediatr Emerg Care. 2021 Dec 1;37(12):e988-e994. doi: 10.1097/PEC.0000000000001858.
Emergency department (ED) overcrowding is a national crisis in which pediatric patients are often prioritized at lower levels. Because the prediction of prognosis for pediatric patients is important but difficult, we developed and validated a deep learning algorithm to predict the need for critical care in pediatric EDs.
We conducted a retrospective observation cohort study using data from the Korean National Emergency Department Information System, which collected data in real time from 151 EDs. The study subjects were pediatric patients who visited EDs from 2014 to 2016. The data were divided by date into derivation and test data. The primary end point was critical care, and the secondary endpoint was hospitalization. We used age, sex, chief complaint, symptom onset to arrival time, arrival mode, trauma, and vital signs as predicted variables.
The study subjects consisted of 2,937,078 pediatric patients of which 18,253 were critical care and 375,078 were hospitalizations. For critical care, the area under the receiver operating characteristics curve of the deep learning algorithm was 0.908 (95% confidence interval, 0.903-0.910). This result significantly outperformed that of the pediatric early warning score (0.812 [0.803-0.819]), conventional triage and acuity system (0.782 [0.773-0.790]), random forest (0.881 [0.874-0.890]), and logistic regression (0.851 [0.844-0.858]). For hospitalization, the deep-learning algorithm (0.782 [0.780-0.783]) significantly outperformed the other methods.
The deep learning algorithm predicted the critical care and hospitalization of pediatric ED patients more accurately than the conventional early warning score, triage tool, and machine learning methods.
急诊部门(ED)过度拥挤是一个全国性的危机,在此类情况下,儿科患者的优先级通常较低。由于预测儿科患者的预后很重要但却很难,因此我们开发并验证了一种深度学习算法,以预测儿科 ED 患者需要重症监护的情况。
我们使用来自韩国国家急诊部信息系统的数据进行了回顾性观察队列研究,该系统实时从 151 个急诊部收集数据。研究对象为 2014 年至 2016 年期间到急诊部就诊的儿科患者。数据按日期分为推导数据和测试数据。主要终点为重症监护,次要终点为住院治疗。我们将年龄、性别、主要诉求、症状发作至到达时间、到达方式、创伤和生命体征作为预测变量。
研究对象包括 2937078 名儿科患者,其中 18253 名患者需要重症监护,375078 名患者需要住院治疗。对于重症监护,深度学习算法的接受者操作特征曲线下面积为 0.908(95%置信区间,0.903-0.910)。这一结果明显优于儿科早期预警评分(0.812[0.803-0.819])、常规分诊和严重程度系统(0.782[0.773-0.790])、随机森林(0.881[0.874-0.890])和逻辑回归(0.851[0.844-0.858])。对于住院治疗,深度学习算法(0.782[0.780-0.783])明显优于其他方法。
深度学习算法比传统的早期预警评分、分诊工具和机器学习方法更准确地预测儿科 ED 患者的重症监护和住院治疗情况。