University of Louisiana at Lafayette, Lafayette, LA, USA.
Opelousas General Health System, Opelousas, LA, USA.
Sci Data. 2022 Jun 1;9(1):255. doi: 10.1038/s41597-022-01361-y.
Advances in wearable technologies provide the opportunity to monitor many physiological variables continuously. Stress detection has gained increased attention in recent years, mainly because early stress detection can help individuals better manage health to minimize the negative impacts of long-term stress exposure. This paper provides a unique stress detection dataset created in a natural working environment in a hospital. This dataset is a collection of biometric data of nurses during the COVID-19 outbreak. Studying stress in a work environment is complex due to many social, cultural, and psychological factors in dealing with stressful conditions. Therefore, we captured both the physiological data and associated context pertaining to the stress events. We monitored specific physiological variables such as electrodermal activity, Heart Rate, and skin temperature of the nurse subjects. A periodic smartphone-administered survey also captured the contributing factors for the detected stress events. A database containing the signals, stress events, and survey responses is publicly available on Dryad.
可穿戴技术的进步为连续监测许多生理变量提供了机会。近年来,压力检测受到了越来越多的关注,主要是因为早期的压力检测可以帮助个人更好地管理健康,将长期压力暴露的负面影响降到最低。本文提供了一个在医院自然工作环境中创建的独特压力检测数据集。该数据集是 COVID-19 爆发期间护士生物特征数据的集合。由于在处理压力条件时涉及许多社会、文化和心理因素,因此在工作环境中研究压力是复杂的。因此,我们同时记录了与压力事件相关的生理数据和相关背景。我们监测了护士受试者的特定生理变量,如皮肤电活动、心率和皮肤温度。定期通过智能手机进行的调查还记录了检测到的压力事件的促成因素。包含信号、压力事件和调查回复的数据库可在 Dryad 上公开获取。