首页> 外文期刊>Journal of applied physiology >Methods to estimate aspects of physical activity and sedentary behavior from high-frequency wrist accelerometer measurements
【24h】

Methods to estimate aspects of physical activity and sedentary behavior from high-frequency wrist accelerometer measurements

机译:通过高频手腕加速度计测量来估计身体活动和久坐行为方面的方法

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

This investigation developed models to estimate aspects of physical activity and sedentary behavior from three-axis high-frequency wrist-worn accelerometer data. The models were developed and tested on 20 participants (n = 10 males, n = 10 females, mean age = 24.1, mean body mass index = 23.9), who wore an ActiGraph GT3X+ accelerometer on their dominant wrist and an ActiGraph GT3X on the hip while performing a variety of scripted activities. Energy expenditure was concurrently measured by a portable indirect calorimetry system. Those calibration data were then used to develop and assess both machine-learning and simpler models with fewer unknown parameters (linear regression and decision trees) to estimate metabolic equivalent scores (METs) and to classify activity intensity, sedentary time, and locomotion time. The wrist models, applied to 15-s windows, estimated METs [random forest: root mean squared error (rSME) = 1.21 METs, hip: rMSE = 1.67 METs] and activity intensity (random forest: 75% correct, hip: 60% correct) better than a previously developed model that used counts per minute measured at the hip. In a separate set of comparisons, the simpler decision trees classified activity intensity (random forest: 75% correct, tree: 74% correct), sedentary time (random forest: 96% correct, decision tree: 97% correct), and locomotion time (random forest: 99% correct, decision tree: 96% correct) nearly as well or better than the machine-learning approaches. Preliminary investigation of the models' performance on two free-living people suggests that they may work well outside of controlled conditions.
机译:这项研究开发了一些模型,用于从三轴高频腕戴式加速度计数据估算出身体活动和久坐行为的各个方面。这些模型是在20名参与者(n = 10男性,n = 10女性,平均年龄= 24.1,平均体重指数= 23.9)上开发和测试的,他们的主要腕部佩戴了ActiGraph GT3X +加速度计,髋部佩戴了ActiGraph GT3X同时执行各种脚本化活动。通过便携式间接量热系统同时测量能量消耗。然后将这些校准数据用于开发和评估具有较少未知参数(线性回归和决策树)的机器学习模型和更简单的模型,以估计代谢当量分数(METs)并对活动强度,久坐时间和运动时间进行分类。适用于15秒窗口的手腕模型,估计的MET(随机森林:均方根误差(rSME)= 1.21 MET,臀部:rMSE = 1.67 MET)和活动强度(随机森林:正确率75%,臀部:60%正确)优于以前开发的模型,该模型使用了在臀部测量的每分钟计数。在单独的一组比较中,简单的决策树对活动强度(随机森林:正确的75%,树:正确的74%),久坐时间(随机森林:正确的96%,决策树:正确的97%)和运动时间进行了分类。 (随机森林:99%正确,决策树:96%正确)几乎比机器学习方法好或更好。对模型在两个自由人身上的表现的初步调查表明,它们在不受控制的条件下可能运作良好。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号