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Evaluation and Classification of Physical and Psychological Stress in Firefighters using Heart Rate Variability

机译:使用心率变异性评估消防人员的身体和心理压力

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Stress detection has a huge potential for disease prevention and management, and to improve the quality of life of people. Also, work safety can be improved if stress is timely and reliably detected. The availability of low-cost consumer wearable devices that monitor vital-signs, gives access to stress detection schemes. Heart rate variability (HRV), a stress-related vital-sign, was derived from wearable device data to reliably determine stress-levels. In order to build and train a deployable stress-detector, we collected labeled HRV data in controlled environments, where subjects were exposed to physical, psychological and combined stress. We then applied machine learning to separate and identify the different stress types and understand the relationship with HRV data. The resulting C5 decision tree model is capable of identifying the stress type with 88% accuracy, in a 1-minute time window. For the first time physical and psychological stress can be distinguished with a 1-minute time resolution from smoke-divers, firefighters, who enter high-risk environments to rescue people, and experience intense physical and psychological stress. To improve our model, we created an integrated system to acquire expert labels in real-time from firefighters during their training in a Rescue Maze. A next goal is to transfer the algorithms into generic systems for monitoring and coaching high-risk professionals to improve their stress resilience during training and reduce their risk in the field.
机译:压力检测在疾病的预防和管理以及改善人们的生活质量方面具有巨大的潜力。此外,如果及时可靠地检测到压力,可以提高工作安全性。监视生命体征的低成本消费者可穿戴设备的可用性使人们可以使用压力检测方案。心率变异性(HRV)是与压力有关的生命体征,它是从可穿戴设备数据中得出的,可以可靠地确定压力水平。为了构建和训练可部署的压力检测器,我们在受控的环境中收集了标记的HRV数据,在这些环境中受试者会遭受身体,心理和综合压力。然后,我们应用机器学习来分离和识别不同的压力类型,并了解与HRV数据的关系。生成的C5决策树模型能够在1分钟的时间窗口内以88%的精度识别应力类型。烟雾潜水员,消防员进入高风险环境营救人员并经历强烈的生理和心理压力,这是他们第一次采用1分钟的时间分辨能力来区分身体和心理压力。为了改进我们的模型,我们创建了一个集成系统,可以在消防员在救援迷宫中进行培训时实时从消防员那里实时获取专家标签。下一个目标是将算法转移到通用系统中,以监视和指导高风险专业人员,以提高他们在培训过程中的压力弹性并降低他们在现场的风险。

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