Accuracy Improvement of Energy Expenditure Estimation Through Neural Networks: A Pilot Study
Tomáš Veselý,
Pavel Smrčka,
Radim Kliment,
Martin Vítězník,
Zdeněk Hon,
Karel Hána
Affiliations
Tomáš Veselý
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
Pavel Smrčka
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
Radim Kliment
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
Martin Vítězník
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
Zdeněk Hon
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
Karel Hána
Department of Information and Communication Technologies in Medicine, Faculty of Biomedical Engineering, Czech Technical University in Prague, 128 00 Prague, Czech Republic
The estimation of energy expenditure (EE) is often an integral part of algorithms for wearable electronics. In field practice, procedures based on an indirect estimation of EE from the heart rate (using empirically or statistically based relationships) work correctly only in a narrow range of physical loads, yet they are current considered state of the art. This pilot study aims to experimentally assess novel method using a wide range of input sensors and parameters (heart rate, RR intervals, and 3D motion activity in several places on the body) and neural network (NN) algorithms. Our proposed method consists of training an NN on a specific subject, with a specific set and placement of sensors during the so-called training run, using the golden standard method of indirect calorimetry as a reference. Then, the subject’s EE can be estimated using trained NN. The results of the experiments (carried out on a total of 12 subjects during various physical activities) show a statistically significant improvement in EE estimation with the new prospective method, and it outperforms the state-of-the-art method based on the heart rate and regression model.