Department of Geoinformatics, University of Salzburg, 5020 Salzburg, Austria.
Center for Geographic Analysis, Harvard University, Cambridge, MA 02138, USA.
Sensors (Basel). 2019 Sep 3;19(17):3805. doi: 10.3390/s19173805.
There is a rich repertoire of methods for stress detection using various physiological signals and algorithms. However, there is still a gap in research efforts moving from laboratory studies to real-world settings. A small number of research has verified when a physiological response is a reaction to an extrinsic stimulus of the participant's environment in real-world settings. Typically, physiological signals are correlated with the spatial characteristics of the physical environment, supported by video records or interviews. The present research aims to bridge the gap between laboratory settings and real-world field studies by introducing a new algorithm that leverages the capabilities of wearable physiological sensors to detect moments of stress (MOS). We propose a rule-based algorithm based on galvanic skin response and skin temperature, combing empirical findings with expert knowledge to ensure transferability between laboratory settings and real-world field studies. To verify our algorithm, we carried out a laboratory experiment to create a "gold standard" of physiological responses to stressors. We validated the algorithm in real-world field studies using a mixed-method approach by spatially correlating the participant's perceived stress, geo-located questionnaires, and the corresponding real-world situation from the video. Results show that the algorithm detects MOS with 84% accuracy, showing high correlations between measured (by wearable sensors), reported (by questionnaires and eDiary entries), and recorded (by video) stress events. The urban stressors that were identified in the real-world studies originate from traffic congestion, dangerous driving situations, and crowded areas such as tourist attractions. The presented research can enhance stress detection in real life and may thus foster a better understanding of circumstances that bring about physiological stress in humans.
有丰富的方法可以利用各种生理信号和算法来检测压力。然而,从实验室研究到真实环境的研究工作仍存在差距。只有少数研究验证了生理反应何时是参与者环境中的外在刺激的反应。通常,生理信号与物理环境的空间特征相关联,这得到了视频记录或访谈的支持。本研究旨在通过引入一种新的算法来弥合实验室环境和真实野外研究之间的差距,该算法利用可穿戴生理传感器的功能来检测压力时刻 (MOS)。我们提出了一种基于皮肤电反应和皮肤温度的基于规则的算法,将经验发现与专家知识相结合,以确保实验室环境和真实野外研究之间的可转移性。为了验证我们的算法,我们进行了一项实验室实验,以创建应激生理反应的“金标准”。我们通过空间关联参与者感知的压力、地理位置问卷以及视频中的相应真实情况,使用混合方法在真实野外研究中验证了该算法。结果表明,该算法以 84%的准确率检测 MOS,显示出可穿戴传感器测量的、问卷和电子日记条目报告的以及视频记录的压力事件之间的高度相关性。在真实世界研究中确定的城市压力源源于交通拥堵、危险驾驶情况以及拥挤的区域,如旅游景点。本研究可以增强现实生活中的压力检测,从而更好地理解导致人类生理压力的情况。