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Energy expenditure prediction via a footwear-based physical activity monitor: Accuracy and comparison to other devices.

机译:通过基于鞋类的身体活动监测器进行的能量消耗预测:准确性和与其他设备的比较。

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摘要

Accurately estimating free-living energy expenditure (EE) is important for monitoring or altering energy balance and quantifying levels of physical activity. The use of accelerometers to monitor physical activity and estimate physical activity EE is common in both research and consumer settings. Recent advances in physical activity monitors include the ability to identify specific activities (e.g. stand vs. walk) which has resulted in improved EE estimation accuracy. Recently, a multi-sensor footwear-based physical activity monitor that is capable of achieving 98% activity identification accuracy has been developed. However, no study has compared the EE estimation accuracy for this monitor and compared this accuracy to other similar devices. Purpose . To determine the accuracy of physical activity EE estimation of a footwear-based physical activity monitor that uses an embedded accelerometer and insole pressure sensors and to compare this accuracy against a variety of research and consumer physical activity monitors. Methods. Nineteen adults (10 male, 9 female), mass: 75.14 (17.1) kg, BMI: 25.07(4.6) kg/m2 (mean (SD)), completed a four hour stay in a room calorimeter. Participants wore a footwear-based physical activity monitor, as well as three physical activity monitoring devices used in research: hip-mounted Actical and Actigraph accelerometers and a multi-accelerometer IDEEA device with sensors secured to the limb and chest. In addition, participants wore two consumer devices: Philips DirectLife and Fitbit. Each individual performed a series of randomly assigned and ordered postures/activities including lying, sitting (quietly and using a computer), standing, walking, stepping, cycling, sweeping, as well as a period of self-selected activities. We developed branched (i.e. activity specific) linear regression models to estimate EE from the footwear-based device, and we used the manufacturer's software to estimate EE for all other devices. Results. The shoe-based device was not significantly different than the mean measured EE (476(20) vs. 478(18) kcal) (Mean(SE)), respectively, and had the lowest root mean square error (RMSE) by two-fold (29.6 kcal (6.19%)). The IDEEA (445(23) kcal) and DirecLlife (449(13) kcal) estimates of EE were also not different than the measured EE. The Actigraph, Fitbit and Actical devices significantly underestimated EE (339 (19) kcal, 363(18) kcal and 383(17) kcal, respectively (p.05)). Root mean square errors were 62.1 kcal (14%), 88.2 kcal(18%), 122.2 kcal (27%), 130.1 kcal (26%), and 143.2 kcal (28%) for DirectLife, IDEEA, Actigraph, Actical and Fitbit respectively. Conclusions. The shoe based physical activity monitor was able to accurately estimate EE. The research and consumer physical activity monitors tested have a wide range of accuracy when estimating EE. Given the similar hardware of these devices, these results suggest that the algorithms used to estimate EE are primarily responsible for their accuracy, particularly the ability of the shoe-based device to estimate EE based on activity classifications.
机译:准确估算自由活动的能量消耗(EE)对于监视或更改能量平衡以及量化身体活动水平非常重要。在研究和消费者环境中,通常使用加速度计来监测身体活动并估计身体活动EE。身体活动监测器的最新进展包括能够识别特定活动(例如站立与步行)的能力,从而提高了EE估算的准确性。近来,已经开发出能够实现98%的活动识别精度的基于多传感器鞋类的体育活动监视器。但是,尚无研究比较此监视器的EE估计精度,并将此精度与其他类似设备进行比较。目的。要确定体育活动的准确性,使用嵌入式嵌入式加速度计和鞋垫压力传感器的基于鞋类的体育活动监测器的EE估算,并将此准确性与各种研究和消费者体育活动监测器进行比较。方法。 19名成人(10名男性,9名女性),体重:75.14(17.1)kg,BMI:25.07(4.6)kg / m2(平均(SD)),在房间热量计中停留了四个小时。参与者佩戴了基于鞋类的身体活动监测器,以及用于研究的三种身体活动监测设备:臀部安装的Actical和Actigraph加速度计以及将传感器固定在四肢和胸部的多加速度计IDEEA设备。此外,参与者佩戴了两种消费类设备:Philips DirectLife和Fitbit。每个人执行一系列随机分配和有序的姿势/活动,包括躺着,坐着(安静地使用计算机),站立,行走,踩踏,骑自行车,打扫以及一段自选活动。我们开发了分支(即特定于活动的)线性回归模型来估计基于鞋类设备的EE,并使用制造商的软件来估计所有其他设备的EE。结果。基于鞋的设备分别与平均测得的EE(476(20)与478(18)kcal)(Mean(SE))并无显着差异,并且均方根误差(RMSE)最低,为2倍,倍(29.6 kcal(6.19%))。对EE的IDEEA(445(23)kcal)和DirecLlife(449(13)kcal)的估计也与测得的EE相同。 Actigraph,Fitbit和Actical设备显着低估了EE(分别为339(19)kcal,363(18)kcal和383(17)kcal(p <.05))。 DirectLife,IDEEA,Actigraph,Actical和Fitbit的均方根误差分别为62.1 kcal(14%),88.2 kcal(18%),122.2 kcal(27%),130.1 kcal(26%)和143.2 kcal(28%)分别。结论。基于鞋子的体育锻炼监测器能够准确估算EE。在评估EE时,所测试的研究人员和消费者身体活动监测器具有广泛的准确性。给定这些设备的硬件类似,这些结果表明,用于估算EE的算法主要负责其准确性,尤其是基于鞋子的设备基于活动分类估算EE的能力。

著录项

  • 作者

    Dannecker, Kathryn.;

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Health Sciences General.;Energy.;Health Sciences Public Health.
  • 学位 M.S.
  • 年度 2011
  • 页码 78 p.
  • 总页数 78
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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