Yu Priscilla, Skinner Michael, Esangbedo Ivie, Lasa Javier J, Li Xilong, Natarajan Sriraam, Raman Lakshmi
Division of Critical Care, Department of Pediatrics, University of Texas Southwestern Medical Center, Dallas, TX 75235, USA.
Department of Computer Science, University of Texas at Dallas, Richardson, TX 75080, USA.
J Clin Med. 2023 Apr 6;12(7):2728. doi: 10.3390/jcm12072728.
Children with congenital and acquired heart disease are at a higher risk of cardiac arrest compared to those without heart disease. Although the monitoring of cardiopulmonary resuscitation quality and extracorporeal resuscitation technologies have advanced, survival after cardiac arrest in this population has not improved. Cardiac arrest prevention, using predictive algorithms with machine learning, has the potential to reduce cardiac arrest rates. However, few studies have evaluated the use of these algorithms in predicting cardiac arrest in children with heart disease.
We collected demographic, laboratory, and vital sign information from the electronic health records (EHR) of all the patients that were admitted to a single-center pediatric cardiac intensive care unit (CICU), between 2010 and 2019, who had a cardiac arrest during their CICU admission, as well as a comparator group of randomly selected non-cardiac-arrest controls. We compared traditional logistic regression modeling against a novel adaptation of a machine learning algorithm (functional gradient boosting), using time series data to predict the risk of cardiac arrest.
A total of 160 unique cardiac arrest events were matched to non-cardiac-arrest time periods. Using 11 different variables (vital signs and laboratory values) from the EHR, our algorithm's peak performance for the prediction of cardiac arrest was at one hour prior to the cardiac arrest (AUROC of 0.85 [0.79,0.90]), a performance that was similar to our previously published multivariable logistic regression model.
Our novel machine learning predictive algorithm, which was developed using retrospective data that were collected from the EHR and predicted cardiac arrest in the children that were admitted to a single-center pediatric cardiac intensive care unit, demonstrated a performance that was similar to that of a traditional logistic regression model. While these results are encouraging, future research, including prospective validations with multicenter data, is warranted prior to the implementation of this algorithm as a real-time clinical decision support tool.
与无心脏病的儿童相比,患有先天性和后天性心脏病的儿童心脏骤停风险更高。尽管心肺复苏质量监测和体外复苏技术有所进步,但该人群心脏骤停后的生存率并未提高。使用机器学习预测算法预防心脏骤停有可能降低心脏骤停发生率。然而,很少有研究评估这些算法在预测患有心脏病儿童心脏骤停方面的应用。
我们从2010年至2019年期间入住单中心儿科心脏重症监护病房(CICU)且在CICU住院期间发生心脏骤停的所有患者的电子健康记录(EHR)中收集了人口统计学、实验室和生命体征信息,以及一组随机选择的非心脏骤停对照的比较组。我们将传统逻辑回归模型与一种机器学习算法(功能梯度提升)的新改编进行比较,使用时间序列数据预测心脏骤停风险。
共将160次独特的心脏骤停事件与非心脏骤停时间段进行了匹配。使用EHR中的11个不同变量(生命体征和实验室值),我们的算法预测心脏骤停的最佳性能出现在心脏骤停前一小时(曲线下面积为0.85 [0.79, 0.90]),该性能与我们之前发表的多变量逻辑回归模型相似。
我们的新型机器学习预测算法是使用从EHR收集的回顾性数据开发的,用于预测入住单中心儿科心脏重症监护病房儿童的心脏骤停,其表现与传统逻辑回归模型相似。虽然这些结果令人鼓舞,但在将该算法作为实时临床决策支持工具实施之前,还需要进行未来研究,包括多中心数据的前瞻性验证。