Department of Physical Therapy & Rehabilitation Science, University of Iowa, Iowa City, IA, United States of America.
Physiol Meas. 2020 Jun 30;41(6):065006. doi: 10.1088/1361-6579/ab94d4.
Objective measurement of physical activity (PA) using accelerometers has become increasingly popular across recreational and clinical applications. However, the effects of multiple processing algorithms, filters, and corrections on PA measurement variability may be underappreciated.
To examine how lifestyle PA estimates are impacted by multiple available scoring methods.
Wrist-worn accelerometers (ActiGraph GT3X+) were worn by 132 adults (87 F) having various activity levels for one week. Lifestyle PA was assessed across four PA domains: daily energy expenditure (EE); active EE; moderate-to-vigorous PA (MVPA); and steps using 1-5 algorithms per domain, with/without wrist correction and low-frequency-extension (LFE). Estimates were compared to self-report (International Physical Activity Questionnaire).
PA estimates differed between algorithms with variable but frequently large effect sizes (d = 0.08-1.88). The wrist correction reduced PA estimates across all domains (p < 0.05, d = 0.26-3.04) except step counts and one daily EE algorithm (d = 0.0). Conversely, the LFE increased step counts (d = 1.44, p < 0.05) but minimally affected all other outcomes (d = 0.08-0.20, p < 0.05). Correlations between objective and self-reported PA were small to moderate (ρ = 0.22-0.45) and decreased with the wrist correction.
Measurement of PA using accelerometry is highly dependent on algorithm and filter selection; previously validated methods are therefore not interchangeable. Users should take caution when interpreting absolute PA estimates, and reporting standards should require detailed methodology disclosure to optimize comparisons across studies.
使用加速度计对身体活动(PA)进行客观测量在娱乐和临床应用中变得越来越流行。然而,多种处理算法、滤波器和校正对 PA 测量变异性的影响可能被低估了。
研究多种可用评分方法如何影响日常活动的估计。
132 名成年人(87 名女性)佩戴腕戴式加速度计(ActiGraph GT3X+)一周,活动水平各异。生活方式 PA 评估涵盖四个 PA 领域:日常能量消耗(EE);活跃 EE;中等到剧烈 PA(MVPA);以及每个领域的 1-5 种算法的步数,有/无手腕校正和低频扩展(LFE)。估计值与自我报告(国际体力活动问卷)进行比较。
算法之间的 PA 估计值存在差异,其差异具有可变但通常较大的效应大小(d = 0.08-1.88)。手腕校正降低了所有领域的 PA 估计值(p < 0.05,d = 0.26-3.04),除了步数和一种日常 EE 算法(d = 0.0)。相反,LFE 增加了步数(d = 1.44,p < 0.05),但对其他所有结果的影响最小(d = 0.08-0.20,p < 0.05)。客观和自我报告的 PA 之间的相关性较小到中等(ρ = 0.22-0.45),并且随着手腕校正而降低。
使用加速度计测量 PA 高度依赖于算法和滤波器的选择;因此,以前验证的方法不可互换。在解释绝对 PA 估计值时,用户应谨慎,并要求报告标准详细披露方法学,以优化研究之间的比较。