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使用活动记录仪描绘老年人的行为活动节律。

Characterizing Behavioral Activity Rhythms in Older Adults Using Actigraphy.

机构信息

Department of Psychiatry and Human Behavior, University of California, Irvine, CA 92697, USA.

Department of Psychology, Macquarie University, Sydney, NSW 2113, Australia.

出版信息

Sensors (Basel). 2020 Jan 19;20(2):549. doi: 10.3390/s20020549.

Abstract

Wrist actigraphy has been used to assess sleep in older adult populations for nearly half a century. Over the years, the continuous raw activity data derived from actigraphy has been used for the characterization of factors beyond sleep/wake such as physical activity patterns and circadian rhythms. Behavioral activity rhythms (BAR) are useful to describe individual daily behavioral patterns beyond sleep and wake, which represent important and meaningful clinical outcomes. This paper reviews common rhythmometric approaches and summarizes the available data from the use of these different approaches in older adult populations. We further consider a new approach developed in our laboratory designed to provide graphical characterization of BAR for the observed behavioral phenomenon of activity patterns across time. We illustrate the application of this new approach using actigraphy data collected from a well-characterized sample of older adults (age 60+) with osteoarthritis (OA) pain and insomnia. Generalized additive models (GAM) were implemented to fit smoothed nonlinear curves to log-transformed aggregated actigraphy-derived activity measurements. This approach demonstrated an overall strong model fit (R = 0.82, SD = 0.09) and was able to provide meaningful outcome measures allowing for graphical and parameterized characterization of the observed activity patterns within this sample.

摘要

腕部动作描记法已被用于评估老年人近半个世纪的睡眠。多年来,从动作描记法中得出的连续原始活动数据已被用于描述睡眠/觉醒以外的因素,如身体活动模式和昼夜节律。行为活动节律(BAR)有助于描述睡眠和觉醒以外的个体日常行为模式,这代表了重要和有意义的临床结果。本文综述了常见的节律测量方法,并总结了这些不同方法在老年人群中的可用数据。我们进一步考虑了我们实验室开发的一种新方法,旨在为观察到的行为现象提供 BAR 的图形特征描述,该现象是跨越时间的活动模式。我们使用从患有骨关节炎(OA)疼痛和失眠的特征明确的老年(年龄≥60 岁)人群中收集的动作描记法数据说明了这种新方法的应用。广义加性模型(GAM)被用来拟合对数转换的聚合动作描记法衍生活动测量的平滑非线性曲线。该方法显示了整体较强的模型拟合度(R=0.82,SD=0.09),并能够提供有意义的结果测量值,从而能够对该样本中的观察到的活动模式进行图形和参数化描述。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f8d7/7014517/e70288bc5c05/sensors-20-00549-g001.jpg

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