Department of Psychiatry and Neurosciences, Hiroshima University, 1-2-3 Kasumi, Minami-Ku, Hiroshima, 734-8551, Japan.
Hiroshima Prefectural Mental Health Center, Hiroshima, Japan.
BMC Public Health. 2023 Jan 6;23(1):34. doi: 10.1186/s12889-023-14984-6.
Wearable devices have been widely used in research to understand the relationship between habitual physical activity and mental health in the real world. However, little attention has been paid to the temporal variability in continuous physical activity patterns measured by these devices. Therefore, we analyzed time-series patterns of physical activity intensity measured by a wearable device and investigated the relationship between its model parameters and depression-related behaviors.
Sixty-six individuals used the wearable device for one week and then answered a questionnaire on depression-related behaviors. A seasonal autoregressive integral moving average (SARIMA) model was fitted to the individual-level device data and the best individual model parameters were estimated via a grid search.
Out of 64 hyper-parameter combinations, 21 models were selected as optimal, and the models with a larger number of affiliations were found to have no seasonal autoregressive parameter. Conversely, about half of the optimal models indicated that physical activity on any given day fluctuated due to the previous day's activity. In addition, both irregular rhythms in day-to-day activity and low-level of diurnal variability could lead to avoidant behavior patterns.
Automatic and objective physical activity data from wearable devices showed that diurnal switching of physical activity, as well as day-to-day regularity rhythms, reduced depression-related behaviors. These time-series parameters may be useful for detecting behavioral issues that lie outside individuals' subjective awareness.
可穿戴设备已广泛应用于研究中,以了解现实世界中习惯性体力活动与心理健康之间的关系。然而,这些设备测量的连续体力活动模式的时间可变性却很少受到关注。因此,我们分析了可穿戴设备测量的体力活动强度的时间序列模式,并研究了其模型参数与与抑郁相关行为之间的关系。
66 名个体使用可穿戴设备一周,然后回答与抑郁相关行为的问卷。对个体水平的设备数据拟合季节性自回归积分移动平均(SARIMA)模型,并通过网格搜索来估计最佳个体模型参数。
在 64 种超参数组合中,有 21 个模型被选为最优模型,且具有更多关联的模型没有季节性自回归参数。相反,大约一半的最优模型表明,由于前一天的活动,任何一天的体力活动都在波动。此外,日常活动的不规则节奏和日间变化的低水平都会导致回避行为模式。
可穿戴设备自动和客观的体力活动数据表明,体力活动的昼夜转换以及日常规律的节奏,减少了与抑郁相关的行为。这些时间序列参数可能有助于检测个体主观意识之外的行为问题。