IEEE Trans Biomed Eng. 2022 Oct;69(10):3224-3233. doi: 10.1109/TBME.2022.3163429. Epub 2022 Sep 19.
Energy Expenditure (EE) estimation plays an important role in objectively evaluating physical activity and its impact on human health. EE during activity can be affected by many factors, including activity intensity, individual physical and physiological characteristics, environment, etc. However, current studies only use very limited information, such as heart rate and step count, to estimate EE, which leads to a low estimation accuracy.
In this study, we proposed a deep multi-branch two-stage regression network (DMTRN) to effectively fuse a variety of related information including motion information, physiological characteristics, and human physical information, which significantly improved the EE estimation accuracy. The proposed DMTRN consists of two main modules: a multi-branch convolutional neural network module which is used to extract multi-scale context features from electrocardiogram (ECG) and inertial measurement unit (IMU) data, and a two-stage regression module which aggregated the extracted multi-scale context features containing the physiological and motion information and the anthropometric features to accurately estimate EE.
Experiments performed on 33 participants show that our proposed method is more accurate and the average root mean square error (RMSE) is reduced by 22.8% compared with previous works.
The EE estimation accuracy was improved by the proposed DMTRN model with a well-designed network structure and new input signal ECG.
This study verified that ECG was much more effective than HR for EE estimation and cast light on EE estimation using the deep learning method.
能量消耗(EE)估计在客观评估活动和其对人体健康的影响方面起着重要作用。活动期间的 EE 会受到许多因素的影响,包括活动强度、个体的身体和生理特征、环境等。然而,目前的研究仅使用非常有限的信息,如心率和步数,来估计 EE,这导致估计精度较低。
在本研究中,我们提出了一种深度多分支两阶段回归网络(DMTRN),有效地融合了多种相关信息,包括运动信息、生理特征和人体物理信息,从而显著提高了 EE 估计的准确性。所提出的 DMTRN 由两个主要模块组成:一个多分支卷积神经网络模块,用于从心电图(ECG)和惯性测量单元(IMU)数据中提取多尺度上下文特征;以及一个两阶段回归模块,用于聚合提取的包含生理和运动信息以及人体测量特征的多尺度上下文特征,以准确估计 EE。
对 33 名参与者进行的实验表明,与以前的工作相比,我们提出的方法更准确,平均均方根误差(RMSE)降低了 22.8%。
通过使用精心设计的网络结构和新的输入信号 ECG,DMTRN 模型提高了 EE 估计的准确性。
本研究验证了 ECG 比 HR 更有效地用于 EE 估计,并为使用深度学习方法进行 EE 估计提供了启示。