使用时间序列模型预测病人监护仪中的阈值警报

Jonas Chromik, Bjarne Pfitzner, Nina Ihde, Marius Michaelis, D. Schmidt, S. Klopfenstein, A. Poncette, F. Balzer, B. Arnrich
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引用次数: 0

摘要

在当今的重症监护医学中,过多的警报是一个持续存在的问题,导致警报脱敏和警报疲劳。这使患者和工作人员处于危险之中。我们提出了一种患者监护仪阈值警报的预测策略,以便用计划任务取代现在可操作的警报,以试图从情况中消除紧迫性。因此,我们采用统计和机器学习模型进行时间序列预测,并将这些模型应用于血压、心率和血氧饱和度等重要参数数据。结果是有希望的,尽管受到使用的时间序列数据的低和非恒定采样频率的影响。GRU模型与中等重采样数据的组合对大多数类型的警报显示出最佳性能。然而,为了有意义地评估我们的方法,需要更高的时间分辨率和恒定的采样频率。
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Forecasting Thresholds Alarms in Medical Patient Monitors using Time Series Models
: Too many alarms are a persistent problem in today’s intensive care medicine leading to alarm desensitisation and alarm fatigue. This puts patients and staff at risk. We propose a forecasting strategy for threshold alarms in patient monitors in order to replace alarms that are actionable right now with scheduled tasks in an attempt to remove the urgency from the situation. Therefore, we employ both statistical and machine learning models for time series forecasting and apply these models to vital parameter data such as blood pressure, heart rate, and oxygen saturation. The results are promising, although impaired by low and non-constant sampling frequencies of the time series data in use. The combination of a GRU model with medium-resampled data shows the best performance for most types of alarms. However, higher time resolution and constant sampling frequencies are needed in order to meaningfully evaluate our approach.
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