ISGlobal, Barcelona Institute for Global Health, Barcelona, Spain.
Center for Wireless & Population Health Systems, The Qualcomm Institute and the Department of Family Medicine and Public Health, University of California, San Diego, San Diego, CA, United States of America.
PLoS One. 2021 May 14;16(5):e0251659. doi: 10.1371/journal.pone.0251659. eCollection 2021.
Despite the positive health effect of physical activity, one third of the world's population is estimated to be insufficiently active. Prior research has mainly investigated physical activity on an aggregate level over short periods of time, e.g., during 3 to 7 days at baseline and a few months later, post-intervention. To develop effective interventions, we need a better understanding of the temporal dynamics of physical activity. We proposed here an approach to studying walking behavior at "high-resolution" and by capturing the idiographic and day-to-day changes in walking behavior. We analyzed daily step count among 151 young adults with overweight or obesity who had worn an accelerometer for an average of 226 days (~25,000 observations). We then used a recursive partitioning algorithm to characterize patterns of change, here sudden behavioral gains and losses, over the course of the study. These behavioral gains or losses were defined as a 30% increase or reduction in steps relative to each participants' median level of steps lasting at least 7 days. After the identification of gains and losses, fluctuation intensity in steps from each participant's individual time series was computed with a dynamic complexity algorithm to identify potential early warning signals of sudden gains or losses. Results revealed that walking behavior change exhibits discontinuous changes that can be described as sudden gains and losses. On average, participants experienced six sudden gains or losses over the study. We also observed a significant and positive association between critical fluctuations in walking behavior, a form of early warning signals, and the subsequent occurrence of sudden behavioral losses in the next days. Altogether, this study suggests that walking behavior could be well understood under a dynamic paradigm. Results also provide support for the development of "just-in-time adaptive" behavioral interventions based on the detection of early warning signals for sudden behavioral losses.
尽管身体活动对健康有积极影响,但据估计,全球有三分之一的人口活动量不足。先前的研究主要集中在短时间内(例如,在基线时的 3 到 7 天和干预后几个月)对身体活动进行综合研究。为了制定有效的干预措施,我们需要更好地了解身体活动的时间动态。我们在这里提出了一种研究“高分辨率”行走行为的方法,并捕捉行走行为的个体和日常变化。我们分析了 151 名超重或肥胖的年轻人在佩戴加速度计平均 226 天(约 25,000 次观察)期间的日常步数。然后,我们使用递归分区算法来描述研究过程中行为变化的模式,这里是突然的行为增益和损失。这些行为增益或损失定义为相对于每个参与者的中位数步数增加或减少 30%,持续至少 7 天。在确定增益和损失之后,我们使用动态复杂性算法计算每个参与者的个体时间序列中的步数波动强度,以识别突然增益或损失的潜在预警信号。结果表明,行走行为的变化表现出不连续的变化,可以描述为突然的增益和损失。平均而言,参与者在研究期间经历了六次突然的增益或损失。我们还观察到,行走行为变化的关键波动(一种预警信号形式)与随后几天中突然行为损失的发生之间存在显著正相关。总的来说,这项研究表明,行走行为可以在动态范式下得到很好的理解。结果还为基于对突然行为损失的预警信号的检测,开发“适时自适应”行为干预措施提供了支持。