Bose Sanjukta N, Verigan Adam, Hanson Jade, Ahumada Luis M, Ghazarian Sharon R, Goldenberg Neil A, Stock Arabela, Jacobs Jeffrey P
Department of Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD, USA.
Institute for Computational Medicine, Johns Hopkins University, Baltimore, MD, USA.
Cardiol Young. 2019 Nov;29(11):1340-1348. doi: 10.1017/S1047951119002002. Epub 2019 Sep 9.
To develop a physiological data-driven model for early identification of impending cardiac arrest in neonates and infants with cardiac disease hospitalised in the cardiovascular ICU.
We performed a single-institution retrospective cohort study (11 January 2013-16 September 2015) of patients ≤1 year old with cardiac disease who were hospitalised in the cardiovascular ICU at a tertiary care children's hospital. Demographics and diagnostic codes of cardiac arrest were obtained via the electronic health record. Diagnosis of cardiac arrest was validated by expert clinician review. Minute-to-minute physiological monitoring data were recorded via bedside monitors. A generalized linear model was used to compute a minute by minute risk score. Training and test data sets both included data from patients who did and did not develop cardiac arrest. An optimal risk-score threshold was derived based on the model's discriminatory capacity for impending arrest versus non-arrest. Model performance measures included sensitivity, specificity, accuracy, likelihood ratios, and post-test probability of arrest.
The final model consisting of multiple clinical parameters was able to identify impending cardiac arrest at least 2 hours prior to the event with an overall accuracy of 75% (sensitivity = 61%, specificity = 80%) and observed an increase in probability of detection of cardiac arrest from a pre-test probability of 9.6% to a post-test probability of 21.2%.
Our findings demonstrate that a predictive model using physiologic monitoring data in neonates and infants with cardiac disease hospitalised in the paediatric cardiovascular ICU can identify impending cardiac arrest on average 17 hours prior to arrest.
建立一种基于生理数据驱动的模型,用于早期识别入住心血管重症监护病房(ICU)的患有心脏病的新生儿和婴儿即将发生的心脏骤停。
我们在一家三级医疗儿童医院的心血管ICU进行了一项单机构回顾性队列研究(2013年1月11日至2015年9月16日),研究对象为年龄≤1岁的患有心脏病的住院患者。通过电子健康记录获取心脏骤停的人口统计学和诊断代码。心脏骤停的诊断经专家临床医生审核确认。通过床边监测仪记录每分钟的生理监测数据。使用广义线性模型计算每分钟的风险评分。训练数据集和测试数据集均包括发生和未发生心脏骤停患者的数据。基于该模型对即将发生的心脏骤停与未发生心脏骤停的鉴别能力得出最佳风险评分阈值。模型性能指标包括敏感性、特异性、准确性、似然比和心脏骤停的检测后概率。
由多个临床参数组成的最终模型能够在事件发生前至少2小时识别即将发生的心脏骤停,总体准确率为75%(敏感性 = 61%,特异性 = 80%),并观察到心脏骤停检测概率从检测前概率9.6%增加到检测后概率21.2%。
我们的研究结果表明,在儿科心血管ICU住院的患有心脏病的新生儿和婴儿中,使用生理监测数据的预测模型平均可在心脏骤停前17小时识别即将发生的心脏骤停。