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ActiGraph 垂直活动计数中“高原现象”的生物力学检测。

Biomechanical examination of the 'plateau phenomenon' in ActiGraph vertical activity counts.

机构信息

Department of Kinesiology, University of Massachusetts, Amherst, MA 01003, USA.

出版信息

Physiol Meas. 2012 Feb;33(2):219-30. doi: 10.1088/0967-3334/33/2/219. Epub 2012 Jan 20.

DOI:10.1088/0967-3334/33/2/219
PMID:22260902
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3392095/
Abstract

This paper determines if the leveling off ('plateau/inverted-U' phenomenon) of vertical ActiGraph activity counts during running at higher speeds is attributable to the monitor's signal filtering and acceleration detection characteristics. Ten endurance-trained male participants (mean (SD) age = 28.2 (4.7) years) walked at 3, 5 and 7 km h(-1), and ran at 8, 10, 12, 14, 16, 18 and 20 km h(-1) on a force treadmill while wearing an ActiGraph GT3X monitor at the waist. Triaxial accelerations of the body's center of mass (CoM) and frequency content of these accelerations were computed from the force treadmill data. GT3X vertical activity counts demonstrated the expected 'plateau/inverted-U' phenomenon. In contrast, vertical CoM accelerations increased with increasing speed (1.32 ± 0.26 g at 10 km h(-1) and 1.68 ± 0.24 g at 20 km h(-1)). The dominant frequency in the CoM acceleration signals increased with running speed (14.8 ± 3.2 Hz at 10 km h(-1) and 24.8 ± 3.2 Hz at 20 km h(-1)) and lay beyond the ActiGraph band-pass filter (0.25 to 2.5 Hz) limits. In conclusion, CoM acceleration magnitudes during walking and running lie within the ActiGraph monitor's dynamic acceleration detecting capability. Acceleration signals of higher frequencies that are eliminated by the ActiGraph band-pass filter may be necessary to distinguish among exercise intensity at higher running speeds.

摘要

本文旨在确定在较高速度下跑步时,ActiGraph 活动计数的平稳(“高原/倒 U 型”现象)是否归因于监测器的信号滤波和加速度检测特性。10 名耐力训练的男性参与者(平均(SD)年龄= 28.2(4.7)岁)在力量跑步机上以 3、5 和 7km/h 的速度行走,以及以 8、10、12、14、16、18 和 20km/h 的速度跑步,同时在腰部佩戴 ActiGraph GT3X 监测器。从力量跑步机数据中计算了身体质心(CoM)的三轴加速度及其加速度的频率内容。GT3X 垂直活动计数表现出预期的“高原/倒 U 型”现象。相比之下,垂直 CoM 加速度随速度增加而增加(10km/h 时为 1.32±0.26g,20km/h 时为 1.68±0.24g)。CoM 加速度信号的主频随跑步速度增加(10km/h 时为 14.8±3.2Hz,20km/h 时为 24.8±3.2Hz),并超出 ActiGraph 带通滤波器(0.25 至 2.5Hz)的限制。总之,在行走和跑步期间,CoM 加速度大小在 ActiGraph 监测器的动态加速度检测能力范围内。由 ActiGraph 带通滤波器消除的更高频率的加速度信号可能对于区分较高跑步速度下的运动强度是必要的。

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