Magal Noa, Rab Sharona L, Goldstein Pavel, Simon Lisa, Jiryis Talita, Admon Roee
School of Psychological Sciences, University of Haifa, Haifa, Israel.
School of Public Health, University of Haifa, Haifa, Israel.
Chronic Stress (Thousand Oaks). 2022 Jul 25;6:24705470221100987. doi: 10.1177/24705470221100987. eCollection 2022 Jan-Dec.
Chronic stress is a highly prevalent condition that may stem from different sources and can substantially impact physiology and behavior, potentially leading to impaired mental and physical health. Multiple physiological and behavioral lifestyle features can now be recorded unobtrusively in daily-life using wearable sensors. The aim of the current study was to identify a distinct set of physiological and behavioral lifestyle features that are associated with elevated levels of chronic stress across different stress sources.
For that, 140 healthy female participants completed the Trier inventory for chronic stress (TICS) before wearing the Fitbit Charge3 sensor for seven consecutive days while maintaining their daily routine. Physiological and lifestyle features that were extracted from sensor data, alongside demographic features, were used to predict high versus low chronic stress with support vector machine classifiers, applying out-of-sample model testing.
The model achieved 79% classification accuracy for chronic stress from a social tension source. A mixture of physiological (resting heart-rate, heart-rate circadian characteristics), lifestyle (steps count, sleep onset and sleep regularity) and non-sensor demographic features (smoking status) contributed to this classification.
As wearable technologies continue to rapidly evolve, integration of daily-life indicators could improve our understanding of chronic stress and its impact of physiology and behavior.
慢性应激是一种非常普遍的状况,可能源于不同的来源,并会对生理和行为产生重大影响,有可能导致身心健康受损。现在可以使用可穿戴传感器在日常生活中不引人注意地记录多种生理和行为生活方式特征。本研究的目的是确定一组独特的生理和行为生活方式特征,这些特征与不同应激源导致的慢性应激水平升高有关。
为此,140名健康女性参与者在连续七天佩戴Fitbit Charge3传感器并保持日常作息之前,完成了慢性应激的特里尔问卷(TICS)。从传感器数据中提取的生理和生活方式特征,以及人口统计学特征,被用于通过支持向量机分类器预测慢性应激水平的高低,并进行样本外模型测试。
该模型对社会紧张源导致的慢性应激的分类准确率达到了79%。生理特征(静息心率、心率昼夜特征)、生活方式特征(步数、入睡时间和睡眠规律性)和非传感器人口统计学特征(吸烟状况)的综合作用促成了这一分类。
随着可穿戴技术的不断快速发展,整合日常生活指标可以增进我们对慢性应激及其对生理和行为影响的理解。