Xu Zhen, Zong Chengzhi, Jafari Roozbeh
Annu Int Conf IEEE Eng Med Biol Soc. 2015;2015:6566-9. doi: 10.1109/EMBC.2015.7319897.
Accurate estimation of energy expenditure (EE) is a key enabler for many applications of healthcare and wellness. Heart rate (HR) based EE estimation methods typically require extensive training time to establish a relationship between HR and EE. In this work, we propose a method where just the few most representative EE-HR data pairs are used to train the estimation model. Furthermore, we present a systematical methodology based on the ranking of the correlation coefficients between EE and HR to find the least amount of EE-HR data pairs required for training while satisfying the constraint of estimation accuracy. During the experimental evaluation, while the study participants walk and run on a treadmill, our method is compared to three different training paradigms: training the EE-HR model 1) using all available data collected during the experiment, 2) using the EE-HR data only during speed changes (or during monotonic HR changes) and 3) using the EE-HR data pairs collected during constant speed. The results show that our method could maintain a comparable EE estimation performance as shown by only 2~4% changes on the coefficient of variation of root-mean-squared error (CV(RMSE)) for the testing dataset while saving nearly 91-97% training time for each individual.
准确估计能量消耗(EE)是许多医疗保健和健康应用的关键推动因素。基于心率(HR)的EE估计方法通常需要大量的训练时间来建立HR与EE之间的关系。在这项工作中,我们提出了一种方法,仅使用少数最具代表性的EE-HR数据对来训练估计模型。此外,我们提出了一种基于EE与HR之间相关系数排名的系统方法,以找到在满足估计精度约束的同时训练所需的最少EE-HR数据对数量。在实验评估期间,当研究参与者在跑步机上行走和跑步时,我们的方法与三种不同的训练范式进行了比较:训练EE-HR模型1)使用实验期间收集的所有可用数据,2)仅在速度变化期间(或在单调HR变化期间)使用EE-HR数据,以及3)使用在恒定速度期间收集的EE-HR数据对。结果表明,我们的方法可以保持可比的EE估计性能,测试数据集的均方根误差变异系数(CV(RMSE))变化仅为2%~4%,同时为每个个体节省了近91%-97%的训练时间。