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

机译:心率变异性消防员身体和心理压力的评估与分类

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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:压力检测具有巨大的疾病预防和管理潜力,并提高人们的生活质量。此外,如果应力是及时可靠地检测的应力,可以改善工作安全性。监控重要迹象的低成本消费者可穿戴设备的可用性,可访问应力检测方案。心率变异性(HRV),一种与压力相关的生命符号,来自可穿戴设备数据以可靠地确定压力水平。为了建立和培训可部署的应力检测器,我们在受控环境中收集标记的HRV数据,受试者接触到物理,心理和组合压力。然后,我们应用机器学习分离并识别不同的压力类型并理解与HRV数据的关系。由此产生的C5决策树模型能够在1分钟的时间窗口中识别具有88%的准确度的应力型。由于第一次,物理和心理压力可以通过来自烟雾潜水员,消防员的1分钟时间分辨率来区分,他进入高风险环境来拯救人们,体验强烈的身体和心理压力。为了改善我们的模型,我们创建了一个集成系统,以在救援迷宫中的培训期间实时从消防员获取专家标签。下一个目标是将算法转移到通用系统中,以监测和指导高风险专业人员,以改善培训期间的压力恢复力,降低现场的风险。

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