可穿戴传感器系统和间接量热法收集的生理变量的数据融合和间接测量的功能回归

A. Gribok, W. Rumpler, R. Hoyt, M. Buller
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引用次数: 1

摘要

本文介绍了不同类型的函数回归对可穿戴传感器系统收集的数据进行分析和建模的应用。这些数据是人类受试者在整个房间的热量计室中待48小时后记录下来的。这样就可以非常精确地测量它们的耗氧量、能量消耗和底物氧化。在野外条件下测量时,这些生理参数的不准确性是出了名的。受试者佩戴两种类型的身体传感器:带有遥测温度计药丸的Hidalgo Equivital™生理监测仪(剑桥,英国)和iPro专业连续血糖监测系统(CGMS)(美敦力MiniMed公司,北岭,CA)。随后使用功能回归技术对这两个系统和量热计室收集的数据进行离线分析。能量消耗、底物氧化和体温被用作反应变量,而心率、呼吸频率、皮下葡萄糖浓度和皮肤温度被用作预测变量。结果表明,24小时和瞬时能量消耗值可以通过瞬时测量心率、呼吸频率和葡萄糖浓度来推断。此外,身体核心温度可以从心率、呼吸频率、葡萄糖浓度和皮肤温度推断出来。底物氧化是最难推断的参数,它只能在运动活动中完成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional regression for data fusion and indirect measurements of physiological variables collected by wearable sensor systems and indirect calorimetry
The paper describes application of different types of functional regression for analysis and modeling of the data collected by wearable sensor systems. The data have been recorded from human subjects while they were staying in whole room calorimeter chamber for 48 hours. This allowed very accurate measurements of their oxygen consumption, energy expenditure and substrate oxidation. These physiological parameters are notorious for their inaccuracy when measured in field conditions. The subjects wore two types of body sensors: the Hidalgo Equivital™ (Cambridge, UK) physiological monitors with a telemetry thermometer pill and iPro Professional Continuous Glucose Monitoring System (CGMS) (Medtronic MiniMed, Inc, Northridge, CA). The data collected by these two systems and by the calorimeter chamber were subsequently analyzed off-line using the functional regression techniques. The energy expenditure, substrate oxidation, and body core temperature were used as response variables, while heart rate, respiratory rate, subcutaneous glucose concentration, and skin temperature were used as predictors. The results show that the 24-hours and instantaneous energy expenditure values can be inferred from instantaneous measurements of heart rate, respiratory rate and glucose concentrations. Also, the body core temperature can be inferred from heart rate, respiratory rate, glucose concentration, and skin temperature. The substrate oxidation was the most difficult parameter to infer and it can only be accomplished during the exercise activity.
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