一种基于机器学习的重症监护病房谵妄预测算法(PRIDE):回顾性研究
A Machine Learning-Based Algorithm for the Prediction of Intensive Care Unit Delirium (PRIDE): Retrospective Study.
作者信息
Hur Sujeong, Ko Ryoung-Eun, Yoo Junsang, Ha Juhyung, Cha Won Chul, Chung Chi Ryang
机构信息
Department of Patient Experience Management Part, Samsung Medical Center, Seoul, Republic of Korea.
Department of Digital Health, SAIHST, Sungkyunkwan University, Seoul, Republic of Korea.
出版信息
JMIR Med Inform. 2021 Jul 26;9(7):e23401. doi: 10.2196/23401.
BACKGROUND
Delirium frequently occurs among patients admitted to the intensive care unit (ICU). There is limited evidence to support interventions to treat or resolve delirium in patients who have already developed delirium. Therefore, the early recognition and prevention of delirium are important in the management of critically ill patients.
OBJECTIVE
This study aims to develop and validate a delirium prediction model within 24 hours of admission to the ICU using electronic health record data. The algorithm was named the Prediction of ICU Delirium (PRIDE).
METHODS
This is a retrospective cohort study performed at a tertiary referral hospital with 120 ICU beds. We only included patients who were 18 years or older at the time of admission and who stayed in the medical or surgical ICU. Patients were excluded if they lacked a Confusion Assessment Method for the ICU record from the day of ICU admission or if they had a positive Confusion Assessment Method for the ICU record at the time of ICU admission. The algorithm to predict delirium was developed using patient data from the first 2 years of the study period and validated using patient data from the last 6 months. Random forest (RF), Extreme Gradient Boosting (XGBoost), deep neural network (DNN), and logistic regression (LR) were used. The algorithms were externally validated using MIMIC-III data, and the algorithm with the largest area under the receiver operating characteristics (AUROC) curve in the external data set was named the PRIDE algorithm.
RESULTS
A total of 37,543 cases were collected. After patient exclusion, 12,409 remained as our study population, of which 3816 (30.8%) patients experienced delirium incidents during the study period. Based on the exclusion criteria, out of the 96,016 ICU admission cases in the MIMIC-III data set, 2061 cases were included, and 272 (13.2%) delirium incidents occurred. The average AUROCs and 95% CIs for internal validation were 0.916 (95% CI 0.916-0.916) for RF, 0.919 (95% CI 0.919-0.919) for XGBoost, 0.881 (95% CI 0.878-0.884) for DNN, and 0.875 (95% CI 0.875-0.875) for LR. Regarding the external validation, the best AUROC were 0.721 (95% CI 0.72-0.721) for RF, 0.697 (95% CI 0.695-0.699) for XGBoost, 0.655 (95% CI 0.654-0.657) for DNN, and 0.631 (95% CI 0.631-0.631) for LR. The Brier score of the RF model is 0.168, indicating that it is well-calibrated.
CONCLUSIONS
A machine learning approach based on electronic health record data can be used to predict delirium within 24 hours of ICU admission. RF, XGBoost, DNN, and LR models were used, and they effectively predicted delirium. However, with the potential to advise ICU physicians and prevent ICU delirium, prospective studies are required to verify the algorithm's performance.
背景
谵妄在重症监护病房(ICU)患者中经常发生。对于已发生谵妄的患者,支持治疗或解决谵妄的干预措施的证据有限。因此,早期识别和预防谵妄在危重症患者的管理中很重要。
目的
本研究旨在利用电子健康记录数据开发并验证一种在入住ICU后24小时内预测谵妄的模型。该算法被命名为ICU谵妄预测(PRIDE)。
方法
这是一项在一家拥有120张ICU床位的三级转诊医院进行的回顾性队列研究。我们仅纳入入住时年龄在18岁及以上且入住内科或外科ICU的患者。如果患者在ICU入院当天缺乏ICU记录的意识模糊评估方法,或者在ICU入院时ICU记录的意识模糊评估方法呈阳性,则将其排除。使用研究期间前两年的患者数据开发预测谵妄的算法,并使用最后6个月的患者数据进行验证。使用了随机森林(RF)、极端梯度提升(XGBoost)、深度神经网络(DNN)和逻辑回归(LR)。这些算法使用MIMIC-III数据进行外部验证,在外部数据集中受试者工作特征曲线下面积(AUROC)最大的算法被命名为PRIDE算法。
结果
共收集37543例病例。排除患者后,12409例作为我们的研究人群,其中3816例(30.8%)患者在研究期间发生谵妄事件。根据排除标准,在MIMIC-III数据集中的96016例ICU入院病例中,纳入2061例,发生272例(13.2%)谵妄事件。内部验证的平均AUROC及95%可信区间为:RF为0.916(95%CI 0.916 - 0.916),XGBoost为0.919(95%CI 0.919 - 0.919),DNN为0.881(95%CI 0.878 - 0.884),LR为0.875(95%CI 0.875 - 0.875)。关于外部验证,RF的最佳AUROC为0.721(95%CI 0.72 - 0.721),XGBoost为0.697(95%CI 0.695 - 0.699),DNN为0.655(95%CI 0.654 - 0.657),LR为0.631(95%CI 0.631 - 0.631)。RF模型的Brier评分为0.168,表明其校准良好。
结论
基于电子健康记录数据的机器学习方法可用于在ICU入院后24小时内预测谵妄。使用了RF、XGBoost、DNN和LR模型,它们有效地预测了谵妄。然而,为了有潜力为ICU医生提供建议并预防ICU谵妄,需要进行前瞻性研究来验证该算法的性能。
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