Doherty Aiden, Jackson Dan, Hammerla Nils, Plötz Thomas, Olivier Patrick, Granat Malcolm H, White Tom, van Hees Vincent T, Trenell Michael I, Owen Christoper G, Preece Stephen J, Gillions Rob, Sheard Simon, Peakman Tim, Brage Soren, Wareham Nicholas J
Big Data Institute, Nuffield Department of Population Health, BHF Centre of Research Excellence, University of Oxford, Oxford, United Kingdom.
Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, Oxford, United Kingdom.
PLoS One. 2017 Feb 1;12(2):e0169649. doi: 10.1371/journal.pone.0169649. eCollection 2017.
Physical activity has not been objectively measured in prospective cohorts with sufficiently large numbers to reliably detect associations with multiple health outcomes. Technological advances now make this possible. We describe the methods used to collect and analyse accelerometer measured physical activity in over 100,000 participants of the UK Biobank study, and report variation by age, sex, day, time of day, and season.
Participants were approached by email to wear a wrist-worn accelerometer for seven days that was posted to them. Physical activity information was extracted from 100Hz raw triaxial acceleration data after calibration, removal of gravity and sensor noise, and identification of wear / non-wear episodes. We report age- and sex-specific wear-time compliance and accelerometer measured physical activity, overall and by hour-of-day, week-weekend day and season.
103,712 datasets were received (44.8% response), with a median wear-time of 6.9 days (IQR:6.5-7.0). 96,600 participants (93.3%) provided valid data for physical activity analyses. Vector magnitude, a proxy for overall physical activity, was 7.5% (2.35mg) lower per decade of age (Cohen's d = 0.9). Women had a higher vector magnitude than men, apart from those aged 45-54yrs. There were major differences in vector magnitude by time of day (d = 0.66). Vector magnitude differences between week and weekend days (d = 0.12 for men, d = 0.09 for women) and between seasons (d = 0.27 for men, d = 0.15 for women) were small.
It is feasible to collect and analyse objective physical activity data in large studies. The summary measure of overall physical activity is lower in older participants and age-related differences in activity are most prominent in the afternoon and evening. This work lays the foundation for studies of physical activity and its health consequences. Our summary variables are part of the UK Biobank dataset and can be used by researchers as exposures, confounding factors or outcome variables in future analyses.
在具有足够大样本量的前瞻性队列研究中,尚未对身体活动进行客观测量,以可靠地检测其与多种健康结局的关联。如今,技术进步使这成为可能。我们描述了在英国生物银行研究的超过10万名参与者中收集和分析通过加速度计测量的身体活动的方法,并报告了按年龄、性别、日期、一天中的时间和季节的变化情况。
通过电子邮件邀请参与者佩戴邮寄给他们的腕部加速度计七天。在校准、去除重力和传感器噪声以及识别佩戴/未佩戴时段后,从100Hz的原始三轴加速度数据中提取身体活动信息。我们报告了按年龄和性别划分的佩戴时间依从性以及通过加速度计测量的身体活动情况,总体情况以及按一天中的小时、工作日-周末和季节划分的情况。
共收到103,712个数据集(响应率为44.8%),中位佩戴时间为6.9天(四分位间距:6.5 - 7.0天)。96,600名参与者(93.3%)提供了用于身体活动分析的有效数据。矢量大小作为总体身体活动的一个指标,每增长十岁降低7.5%(2.35mg)(科恩d值 = 0.9)。除了45 - 54岁的人群外,女性的矢量大小高于男性。一天中不同时间的矢量大小存在较大差异(d = 0.66)。工作日和周末之间的矢量大小差异(男性d = 0.12,女性d = 0.09)以及不同季节之间的差异(男性d = 0.27,女性d = 0.15)较小。
在大型研究中收集和分析客观的身体活动数据是可行的。总体身体活动的汇总指标在老年参与者中较低,且与活动相关的年龄差异在下午和晚上最为显著。这项工作为身体活动及其健康后果的研究奠定了基础。我们的汇总变量是英国生物银行数据集的一部分,研究人员可在未来分析中将其用作暴露因素、混杂因素或结局变量。