Estimating human metabolic energy expenditure using a bootstrap particle filter

Alexander P. Welles, David P. Looney, W. Rumpler, M. Buller
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引用次数: 1

Abstract

Metabolic energy expenditure is a physiological measure of importance to multiple scientific fields including nutrition, athletic performance, and thermoregulatory modeling. However, measuring metabolic rate in non-laboratory settings is difficult due to the restrictions imposed by laboratory grade measurement methods. The use of probabilistic graphical models, a type of machine learning model, may provide a means to estimate hidden variables such as metabolic rate from more easily observed variables such as heart rate and core body temperature. Using a probabilistic graphical model approach, a particle filter was applied to estimate metabolic rate from continuous heart rate and core body temperature observations. This paper examines which set of observations allows the particle filter to make more accurate estimations of metabolic rate and whether or not the addition of change in metabolic rate as a state variable improves accuracy. Observation and state parameters were learned by linear regression from continuous heart rate, core temperature, and metabolic rate collected from 15 volunteers (age: 23 ± 3 yr, ± SD) over N = 24, 3-hour periods during which 1 hour was spent running up to 8 km distance. State segmentations were learned using k-means clustering with up to 10 states. Observations of heart rate alone and with core temperature were used to predict metabolic rate with a root mean square error ± standard deviation of 166 ± 27 W and 133 ± 26 W.
用自举粒子滤波器估计人体代谢能量消耗
代谢能量消耗是一种重要的生理指标,对营养学、运动表现和体温调节模型等多个科学领域都很重要。然而,由于实验室级测量方法的限制,在非实验室环境中测量代谢率是困难的。概率图形模型(一种机器学习模型)的使用可以提供一种方法,从心率和核心体温等更容易观察到的变量中估计代谢率等隐藏变量。采用概率图形模型方法,采用粒子滤波方法从连续的心率和核心体温观察中估计代谢率。本文研究了哪一组观测值允许粒子滤波器对代谢率做出更准确的估计,以及添加代谢率变化作为状态变量是否提高了准确性。观察和状态参数通过线性回归从15名志愿者(年龄:23±3岁,±SD)收集的连续心率,核心温度和代谢率中获得,在N = 24,3小时的时间内,其中1小时跑8公里。使用最多10个状态的k-means聚类学习状态分割。单独观察心率和结合核心温度预测代谢率,均方根误差±标准差分别为166±27 W和133±26 W。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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