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重症监护下新生儿关键心肺警报的预测性监测

Predictive Monitoring of Critical Cardiorespiratory Alarms in Neonates Under Intensive Care.

作者信息

Joshi Rohan, Peng Zheng, Long Xi, Feijs Loe, Andriessen Peter, Van Pul Carola

机构信息

2Department of Family Care SolutionsPhilips Research5656AZEindhovenThe Netherlands.

3Department of Industrial DesignEindhoven University of Technology5612AZEindhovenThe Netherlands.

出版信息

IEEE J Transl Eng Health Med. 2019 Nov 22;7:2700310. doi: 10.1109/JTEHM.2019.2953520. eCollection 2019.

Abstract

We aimed at reducing alarm fatigue in neonatal intensive care units by developing a model using machine learning for the early prediction of critical cardiorespiratory alarms. During this study in over 34,000 patient monitoring hours in 55 infants 278,000 advisory (yellow) and 70,000 critical (red) alarms occurred. Vital signs including the heart rate, breathing rate, and oxygen saturation were obtained at a sampling frequency of 1 Hz while heart rate variability was calculated by processing the ECG - both were used for feature development and for predicting alarms. Yellow alarms that were followed by at least one red alarm within a short post-alarm window constituted the case-cohort while the remaining yellow alarms constituted the control cohort. For analysis, the case and control cohorts, stratified by proportion, were split into training (80%) and test sets (20%). Classifiers based on decision trees were used to predict, at the moment the yellow alarm occurred, whether a red alarm(s) would shortly follow. The best performing classifier used data from the 2-min window before the occurrence of the yellow alarm and could predict 26% of the red alarms in advance (18.4s, median), at the expense of 7% additional red alarms. These results indicate that based on predictive monitoring of critical alarms, nurses can be provided a longer window of opportunity for preemptive clinical action. Further, such as algorithm can be safely implemented as alarms that are not algorithmically predicted can still be generated upon the usual breach of the threshold, as in current clinical practice.

摘要

我们旨在通过开发一种使用机器学习的模型来早期预测新生儿重症监护病房中的关键心肺警报,从而减少警报疲劳。在这项针对55名婴儿超过34000小时的患者监测研究中,共发生了278000次提示性(黄色)警报和70000次关键(红色)警报。以1赫兹的采样频率获取包括心率、呼吸频率和血氧饱和度在内的生命体征,同时通过处理心电图来计算心率变异性——两者都用于特征开发和警报预测。在警报后短时间内至少跟随一个红色警报的黄色警报构成病例队列,其余黄色警报构成对照队列。为了进行分析,按比例分层的病例和对照队列被分为训练集(80%)和测试集(20%)。基于决策树的分类器用于在黄色警报发生时预测是否很快会跟随红色警报。表现最佳的分类器使用黄色警报发生前2分钟窗口的数据,能够提前预测26%的红色警报(中位数为18.4秒),代价是额外产生7%的红色警报。这些结果表明,基于对关键警报的预测性监测,可以为护士提供更长的先发制人临床行动机会窗口。此外,这样的算法可以安全实施,因为在当前临床实践中,即使是未通过算法预测的警报,在通常突破阈值时仍会产生。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/38df/6906083/d2e5dabba41c/joshi1-2953520.jpg

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