消除应激生理测量中主体依赖性和活动依赖性的变化

Folami T. Alamudun, Jongyoon Choi, R. Gutierrez-Osuna, H. Khan, B. Ahmed
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引用次数: 23

摘要

监测日常生活压力水平的能力可以为患者及其护理人员提供有价值的信息,帮助识别潜在的压力源,确定适当的干预措施,并监测其有效性。可穿戴传感器技术使得现在可以无创地测量许多与压力相关的生理因素,从皮肤电导到心率变异性。然而,这些测量显示出很大的个体差异,也与受试者的身体活动有关。在本文中,我们提出了两种多元信号处理技术来减少这两种形式的干扰的影响。第一种方法是一种无监督技术,它消除了与因变量正交的任何系统变异,在这种情况下是生理应激。相比之下,第二种方法是一种监督技术,它首先将数据投影到强调这些系统变化的子空间中,然后从数据中删除它们。这两种方法在包含多个受试者进行身体和/或心理活动的生理记录的实验数据集上进行了验证。与z-score归一化(用于消除个体差异的标准方法)相比,我们的方法可以将应力预测误差减少多达50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Removal of subject-dependent and activity-dependent variation in physiological measures of stress
The ability to monitor stress levels in daily life can provide valuable information to patients and their caretakers, help identify potential stressors, determine appropriate interventions, and monitor their effectiveness. Wearable sensor technology makes it now possible to measure non-invasively a number of physiological correlates of stress, from skin conductance to heart rate variability. These measures, however, show large individual differences and are also correlated with the physical activity of the subject. In this paper, we propose two multivariate signal processing techniques to reduce the effect of both forms of interference. The first method is an unsupervised technique that removes any systematic variation that is orthogonal to the dependent variable, in this case physiological stress. In contrast, the second method is a supervised technique that first projects the data into a subspace that emphasizes these systematic variations, and then removes them from the data. The two methods were validated on an experimental dataset containing physiological recordings from multiple subjects performing physical and/or mental activities. When compared to z-score normalization, the standard method for removing individual differences, our methods can reduce stress prediction errors by as much as 50%.
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