School of Engineering Sciences in Chemistry, Biotechnology and Health, KTH Royal Institute of Technology, Hälsovägen 11C, 141 57 Huddinge, Sweden.
Institute of Environmental Medicine, Karolinska Institutet, Solnavägen 1, 171 77 Solna, Sweden.
Sensors (Basel). 2018 Sep 14;18(9):3092. doi: 10.3390/s18093092.
This paper presents a new method that integrates heart rate, respiration, and motion information obtained from a wearable sensor system to estimate energy expenditure. The system measures electrocardiography, impedance pneumography, and acceleration from upper and lower limbs. A multilayer perceptron neural network model was developed, evaluated, and compared to two existing methods, with data from 11 subjects (mean age, 27 years, range, 21⁻65 years) who performed a 3-h protocol including submaximal tests, simulated work tasks, and periods of rest. Oxygen uptake was measured with an indirect calorimeter as a reference, with a time resolution of 15 s. When compared to the reference, the new model showed a lower mean absolute error (MAE = 1.65 mL/kg/min, R² = 0.92) than the two existing methods, i.e., the flex-HR method (MAE = 2.83 mL/kg/min, R² = 0.75), which uses only heart rate, and arm-leg HR+M method (MAE = 2.12 mL/kg/min, R² = 0.86), which uses heart rate and motion information. As indicated, this new model may, in combination with a wearable system, be useful in occupational and general health applications.
本文提出了一种新方法,该方法结合了可穿戴传感器系统获取的心率、呼吸和运动信息来估计能量消耗。该系统测量心电图、阻抗式呼吸描记法和上下肢加速度。开发了一个多层感知器神经网络模型,并对其进行了评估和与两种现有方法进行了比较,数据来自 11 名受试者(平均年龄 27 岁,年龄范围 21⁻65 岁),他们进行了 3 小时的方案,包括次最大测试、模拟工作任务和休息期。使用间接量热法作为参考来测量耗氧量,时间分辨率为 15 秒。与参考值相比,新模型的平均绝对误差(MAE=1.65 毫升/千克/分钟,R²=0.92)低于两种现有方法,即仅使用心率的 flex-HR 方法(MAE=2.83 毫升/千克/分钟,R²=0.75)和使用心率和运动信息的 arm-leg HR+M 方法(MAE=2.12 毫升/千克/分钟,R²=0.86)。结果表明,该新模型结合可穿戴系统,可能在职业和一般健康应用中有用。