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比较 24 小时身体活动特征:办公室工作者、有妊娠糖尿病史的女性和患有慢性病(多种慢性病)的人群。

Comparing 24 h physical activity profiles: Office workers, women with a history of gestational diabetes and people with chronic disease condition(s).

机构信息

Diabetes Research Centre, University of Leicester, Leicester General Hospital , Leicester, UK.

NIHR Leicester Biomedical Research Centre , Leicester, UK.

出版信息

J Sports Sci. 2021 Jan;39(2):219-226. doi: 10.1080/02640414.2020.1812202. Epub 2020 Aug 25.

DOI:10.1080/02640414.2020.1812202
PMID:33459582
Abstract

This study demonstrates a novel data-driven method of summarising accelerometer data to profile physical activity in three diverse groups, compared with cut-point determined moderate-to-vigorous physical activity (MVPA). GGIR was used to generate average daily acceleration, intensity gradient, time in MVPA and MX metrics (acceleration above which the most active X-minutes accumulate) from wrist-worn accelerometer data from three datasets: office-workers (OW, N = 697), women with a history of post-gestational diabetes (PGD, N = 267) and adults with ≥1 chronic disease (CD, N = 1,325). Average acceleration and MVPA were lower in CD, but not PGD, relative to OW (-5.2 m and -30.7 minutes, respectively, P < 0.001). Both PGD and CD had poorer intensity distributions than OW (P < 0.001). Application of a cut-point to the M30 showed 7%, 17% and 28%, of OW, PGD and CD, respectively, accumulated 30 minutes of brisk walking per day. Radar plots showed OW had higher overall activity than CD. The relatively poor intensity distribution of PGD, despite similar overall activity to OW, was due to accumulation of more light and less higher intensity activity. These data-driven methods identify aspects of activity that differ between groups, which may be missed by cut-point methods alone. : CD: Adults with ≥1 chronic disease; m: Milli-gravitational unit; MVPA: Moderate-to-vigorous physical activity; OW: Office workers; PGD: Women with a history of post-gestational diabetes; VPA: Vigorous physical activity.

摘要

本研究展示了一种新颖的数据驱动方法,可用于总结三个不同群体的身体活动模式,与基于切点的中高强度体力活动(MVPA)相比。使用 GGIR 从三个数据集(办公室工作人员[OW]、有妊娠后糖尿病病史的女性[PGD]和≥1 种慢性病的成年人[CD])的腕戴加速度计数据中生成平均日常加速度、强度梯度、MVPA 时间和 MX 指标(在该加速度下,最活跃的 X 分钟内累计的加速度)。与 OW 相比,CD 的平均加速度和 MVPA 更低(分别为-5.2 m 和-30.7 分钟,P <0.001),但 PGD 则不然。PGD 和 CD 的强度分布均不如 OW(P <0.001)。将切点应用于 M30 表明,OW、PGD 和 CD 分别有 7%、17%和 28%的人每天积累 30 分钟的轻快步行。雷达图显示 OW 的整体活动量高于 CD。尽管 PGD 的整体活动量与 OW 相似,但强度分布较差,原因是积累了更多的低强度活动和较少的高强度活动。这些数据驱动的方法可以识别出不同组之间活动的不同方面,而仅基于切点的方法可能会忽略这些方面。 : CD:患有≥1 种慢性病的成年人;m:毫重力单位;MVPA:中高强度体力活动;OW:办公室工作人员;PGD:有妊娠后糖尿病病史的女性;VPA:剧烈体力活动。

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