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一种利用加速度计数据预测能量消耗的新方法。

A novel method for using accelerometer data to predict energy expenditure.

作者信息

Crouter Scott E, Clowers Kurt G, Bassett David R

机构信息

Department of Exercise, Sport, and Leisure Studies, University of Tennessee, Knoxville, USA.

出版信息

J Appl Physiol (1985). 2006 Apr;100(4):1324-31. doi: 10.1152/japplphysiol.00818.2005. Epub 2005 Dec 1.

DOI:10.1152/japplphysiol.00818.2005
PMID:16322367
Abstract

The purpose of this study was to develop a new two-regression model relating Actigraph activity counts to energy expenditure over a wide range of physical activities. Forty-eight participants [age 35 yr (11.4)] performed various activities chosen to represent sedentary, light, moderate, and vigorous intensities. Eighteen activities were split into three routines with each routine being performed by 20 individuals, for a total of 60 tests. Forty-five tests were randomly selected for the development of the new equation, and 15 tests were used to cross-validate the new equation and compare it against already existing equations. During each routine, the participant wore an Actigraph accelerometer on the hip, and oxygen consumption was simultaneously measured by a portable metabolic system. For each activity, the coefficient of variation (CV) for the counts per 10 s was calculated to determine whether the activity was walking/running or some other activity. If the CV was <or=10, then a walk/run regression equation was used, whereas if the CV was >10, a lifestyle/leisure time physical activity regression was used. In the cross-validation group, the mean estimates using the new algorithm (2-regression model with an inactivity threshold) were within 0.75 metabolic equivalents (METs) of measured METs for each of the activities performed (P >or= 0.05), which was a substantial improvement over the single-regression models. The new algorithm is more accurate for the prediction of energy expenditure than currently published regression equations using the Actigraph accelerometer.

摘要

本研究的目的是开发一种新的双回归模型,该模型可将活动记录仪的活动计数与广泛的身体活动中的能量消耗联系起来。48名参与者[年龄35岁(11.4)]进行了各种活动,这些活动被选择用来代表久坐、轻度、中度和剧烈强度。18项活动被分成三个程序,每个程序由20个人执行,总共进行60次测试。随机选择45次测试来开发新方程,15次测试用于交叉验证新方程并将其与现有方程进行比较。在每个程序中,参与者在臀部佩戴活动记录仪加速度计,并通过便携式代谢系统同时测量耗氧量。对于每项活动,计算每10秒计数的变异系数(CV),以确定该活动是步行/跑步还是其他活动。如果CV≤10,则使用步行/跑步回归方程,而如果CV>10,则使用生活方式/休闲时间身体活动回归方程。在交叉验证组中,使用新算法(具有不活动阈值的双回归模型)的平均估计值与所进行的每项活动的测量代谢当量(METs)相差在0.75代谢当量以内(P≥0.05),这比单回归模型有了显著改进。与目前使用活动记录仪加速度计发表的回归方程相比,新算法在预测能量消耗方面更准确。

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