Arden University, Coventry, UK.
Birmingham Womens and Childrens Hospital, Birmingham, UK.
J Clin Monit Comput. 2019 Aug;33(4):713-724. doi: 10.1007/s10877-018-0198-0. Epub 2018 Sep 27.
A cardiac arrest is a life-threatening event, often fatal. Whilst clinicians classify some of the cardiac arrests as potentially predictable, the majority are difficult to identify even in a post-incident analysis. Changes in some patients' physiology when analysed in detail can however be predictive of acute deterioration leading to cardiac or respiratory arrests. This paper seeks to exploit the causally-related changing patterns in signals such as heart rate, respiration rate, systolic blood pressure and peripheral cutaneous oxygen saturation to evaluate the predictability of cardiac arrests in critically ill paediatric patients in intensive care. In this paper we report the results of a framework constituting feature space embedding and time series forecasting methods to build an automated prediction system. The results were compared with clinical assessment of predictability. A sensitivity of 71% and specificity of 69% was obtained when the maximum value of Anomaly Index (12) in the 50 min (starting one hour and ending 10 min) before the arrest was considered for the case patients and a random 50 min of data was considered for the control set patients. A positive predictive value of 11% and negative predictive value of 98% was obtained with a prevalence of 5% by our method of prediction. While clinicians predicted 4 out of the 69 cardiac arrests (6%), the prediction system predicted 63 (91%) cardiac arrests. Prospective validation of the automated system remains.
心脏骤停是一种危及生命的事件,通常是致命的。虽然临床医生将一些心脏骤停归类为潜在可预测的,但即使在事后分析中,大多数也难以识别。然而,当详细分析某些患者的生理变化时,可以预测导致心脏或呼吸骤停的急性恶化。本文旨在利用心率、呼吸率、收缩压和外周皮肤血氧饱和度等信号中因果相关的变化模式,评估重症监护中危重病儿心脏骤停的可预测性。在本文中,我们报告了一个构成特征空间嵌入和时间序列预测方法的框架的结果,以构建一个自动化预测系统。将预测的病例患者在心脏骤停前 50 分钟(从 1 小时开始到 10 分钟结束)内的异常指数(12)的最大值,以及对照组患者的随机 50 分钟数据,作为预测的结果,并将其与临床预测的可预测性进行了比较。我们的预测方法得到了 11%的阳性预测值和 98%的阴性预测值,且预测率为 5%。临床医生预测了 69 例心脏骤停中的 4 例(6%),而预测系统预测了 63 例(91%)心脏骤停。仍需对自动化系统进行前瞻性验证。