来自24小时自由生活腰戴加速度计的夜间睡眠相关变量:儿童肥胖、生活方式和环境的国际研究。

International journal of obesity supplements Pub Date : 2015-12-01 Epub Date: 2015-12-08 DOI:10.1038/ijosup.2015.19
C Tudor-Locke, E F Mire, T V Barreira, J M Schuna, J-P Chaput, M Fogelholm, G Hu, A Kurpad, R Kuriyan, E V Lambert, C Maher, J Maia, V Matsudo, T Olds, V Onywera, O L Sarmiento, M Standage, M S Tremblay, P Zhao, T S Church, P T Katzmarzyk
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引用次数: 18

摘要

目的:我们描述了识别和定义夜间睡眠相关变量的过程(例如,睡眠效率的运动/非运动指标,清醒事件,中点等),使用来自国际儿童肥胖,生活方式和环境研究(ISCOLE)的独特的24小时腰挂自由生活加速度计数据。方法:连续7天收集每个地点500多名儿童24小时腰挂加速度计(GT3X+, ActiGraph LLC)数据。具有加速度计专家的研究小组的一个专家小组,一线数据收集人员和数据管理人员多次会面,对夜间加速度计信号数据模式进行分类和操作定义。从美国数据子集中提取的原始数据为迭代过程提供了信息,并最终为每个已确定的夜间睡眠相关变量提供了精细且可复制的描述定义。最终,基于来自所有12个ISCOLE站点的6318名参与者的有效总睡眠时间(TSET),我们报告了夜间睡眠开始、偏移和中点的平均时钟时间,以及睡眠时间、TSET和休息睡眠效率(以及其他衍生变量)。结果:夜间睡眠开始于2218小时,夜间睡眠偏移于0707小时。平均中点为0243小时。529.6分钟(8.8小时)的睡眠时间通常在单次发作中累积,使得平均TSET持续时间非常相似(529.0分钟)。平均休息睡眠效率从86.8%(基于每分钟0次的绝对不运动)到96.0%(基于相对不运动)不等。结论:这些变量扩展了基于场的24小时腰穿加速度计的潜力,以区分和分类夜间睡眠期间运动/非运动信号传递的强度、持续时间、频率和周期性的潜在稳健模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Nocturnal sleep-related variables from 24-h free-living waist-worn accelerometry: International Study of Childhood Obesity, Lifestyle and the Environment.

Objectives: We describe the process of identifying and defining nocturnal sleep-related variables (for example, movement/non-movement indicators of sleep efficiency, waking episodes, midpoint and so on) using the unique 24-h waist-worn free-living accelerometer data collected in the International Study of Childhood Obesity, Lifestyle and the Environment (ISCOLE).

Methods: Seven consecutive days of 24-h waist-worn accelerometer (GT3X+, ActiGraph LLC) data were collected from over 500 children at each site. An expert subgroup of the research team with accelerometry expertize, frontline data collectors and data managers met on several occasions to categorize and operationally define nocturnal accelerometer signal data patterns. The iterative process was informed by the raw data drawn from a sub set of the US data, and culminated in a refined and replicable delineated definition for each identified nocturnal sleep-related variable. Ultimately based on 6318 participants from all 12 ISCOLE sites with valid total sleep episode time (TSET), we report average clock times for nocturnal sleep onset, offset and midpoint in addition to sleep period time, TSET and restful sleep efficiency (among other derived variables).

Results: Nocturnal sleep onset occurred at 2218 hours and nocturnal sleep offset at 0707 hours. The mean midpoint was 0243 hours. The sleep period time of 529.6 min (8.8 h) was typically accumulated in a single episode, making the average TSET very similar in duration (529.0 min). The mean restful sleep efficiency ranged from 86.8% (based on absolute non-movement of 0 counts per minute) to 96.0% (based on relative non-movement of <100 counts per minute).

Conclusions: These variables extend the potential of field-based 24-h waist-worn accelerometry to distinguish and categorize the underlying robust patterns of movement/non-movement signals conveying magnitude, duration, frequency and periodicity during the nocturnal sleep period.

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