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Estimation of Exercise Energy Expenditure Using a Wrist-Worn Accelerometer: A Linear Mixed Model Approach with Fixed-Effect Variable Selection

机译:使用手腕加速度计估算运动能源支出:用固定效应变量选择的线性混合模型方法

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This article presents an approach to estimating exercise energy expenditure based on acceleration measurements from a wrist-worn biaxial sensor. The method uses the linear mixed model that makes it possible to model both between-subject and within-subject variation in energy expenditure. More precisely, a random-intercepts model is used. The variance and mean of the acceleration signals at 15-second intervals as well as subject demographics (height, weight, body mass index, age and VO2max) are used. Energy expenditure is modelled in four different activities: walking, running, Nordic walking and bicycling. This study introduces an effective backward model selection procedure for selecting the fixed-effect variables in the model. The procedure uses leave-one-out cross-validation to be able to effectively exploit the available data set and to ensure the robustness of the model. Estimation accuracy in test sets is used as a criterion of model performance. The model selection procedure proposed notably improves estimation accuracy. In walking, running, Nordic walking and bicycling, average estimation errors of 3.9, 3.6, 1.9 and13.5 percent are reached. The respective Pearson correlations for these activities are 0.91, 0.98, 0.97, and 0.81. These results are also compared to the performance of the general linear model. It is discovered that the linear mixed model outperforms the model that does not take the individual levels of energy expenditure of the subjects into account.
机译:本文介绍了一种估算运动能耗的方法,基于手腕磨损的双轴传感器的加速度测量。该方法使用线性混合模型,使其可以在主题和对象内的能量消耗中模拟。更确切地说,使用随机拦截模型。使用15秒间隔的加速信号的变化和平均值以及对象人口统计学(高度,重量,体重指数,年龄和vo2max)。能源支出以四种不同的活动建模:行走,跑步,北欧行走和骑自行车。本研究介绍了用于在模型中选择固定效果变量的有效后向模型选择过程。该过程使用休假交叉验证能够有效利用可用数据集并确保模型的稳健性。测试集中的估计准确性用作模型性能的标准。建议的模型选择程序显着提高了估计精度。在步行,跑步,北欧行走和骑自行车中,达到3.9,3.6,1.9和13.5%的平均估计误差。这些活动的各个Pearson相关性为0.91,0.98,0.97和0.81。这些结果也与一般线性模型的性能进行了比较。发现线性混合模型优于未考虑受试者能源支出的模型。

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