School of Physical Education, Hubei University of Technology, Wuhan 430068, China.
Sports Nutrition Center, National Institute of Sports Medicine, Beijing 100029, China.
Int J Environ Res Public Health. 2023 Mar 15;20(6):5184. doi: 10.3390/ijerph20065184.
We investigated the use of multi-sensor physical activity monitors, body mass index (BMI), and heart rate (HR) to measure energy expenditure (EE) of various physical activity levels among Chinese collegiate students, compared with portable indirect calorimetry.
In a laboratory experiment, 100 college students, 18-25 years old, wore the SenseWear Pro3 Armband™ (SWA; BodyMedia, Inc., Pittsburg, PA, USA) and performed 7 different physical activities. EE was measured by indirect calorimetry, while body motion and accelerations were measured with an SWA accelerometer. Special attention was paid to the analysis of unidirectional and three-directional accelerometer output.
Seven physical activities were recorded and distinguished by SWA, and different physical activities demonstrated different data features. The mean values of acceleration ACz (longitudinal accel point, axis Z) and VM (vector magnitude) were significantly different ( = 0.000, < 0.05) for different physical activities, whereas no significant difference was found in one single physical activity with varied speeds ( = 0.9486, > 0.05). When all physical activities were included in a correlation regression analysis, a strong linear correlation between the EE and accelerometer reporting value was found. According to the correlation analysis, sex, BMI, HR, ACz, and VM were independent variables, and the EE algorithm model demonstrated a high correlation coefficient R value of 0.7.
The predictive energy consumption model of physical activity based on multi-sensor physical activity monitors, BMI, and HR demonstrated high accuracy and can be applied to daily physical activity monitoring among Chinese collegiate students.
我们研究了使用多传感器活动监测器、体重指数(BMI)和心率(HR)来测量中国大学生不同身体活动水平的能量消耗(EE),并与便携式间接测热法进行了比较。
在实验室实验中,100 名 18-25 岁的大学生佩戴 SenseWear Pro3 臂带(SWA;BodyMedia,Inc.,匹兹堡,宾夕法尼亚州,美国)并进行了 7 种不同的身体活动。EE 通过间接测热法测量,而身体运动和加速度则通过 SWA 加速度计测量。特别注意对单向和三向加速度计输出的分析。
SWA 记录并区分了 7 种身体活动,不同的身体活动表现出不同的数据特征。加速度 ACz(纵向加速度点,轴 Z)和 VM(矢量幅度)的平均值在不同的身体活动中差异显著(=0.000,<0.05),而在单一身体活动中以不同速度进行时则没有显著差异(=0.9486,>0.05)。当将所有身体活动都包括在相关回归分析中时,发现 EE 与加速度计报告值之间存在很强的线性相关性。根据相关分析,性别、BMI、HR、ACz 和 VM 是自变量,EE 算法模型显示出高相关系数 R 值为 0.7。
基于多传感器活动监测器、BMI 和 HR 的身体活动预测能量消耗模型具有很高的准确性,可应用于中国大学生的日常身体活动监测。