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Title: Prediction of oxygen uptake kinetics during heavy-intensity cycling exercise by machine learning analysis. Author: Hedge ET, Amelard R, Hughson RL. Journal: J Appl Physiol (1985); 2023 Jun 01; 134(6):1530-1536. PubMed ID: 37199779. Abstract: Nonintrusive estimation of oxygen uptake (V̇o2) is possible with wearable sensor technology and artificial intelligence. V̇o2 kinetics have been accurately predicted during moderate exercise using easy-to-obtain sensor inputs. However, V̇o2 prediction algorithms for higher-intensity exercise with inherent nonlinearities are still being refined. The purpose of this investigation was to test if a machine learning model can accurately predict dynamic V̇o2 across exercise intensities, including slower V̇O2 kinetics normally observed during heavy- compared with moderate-intensity exercise. Fifteen young healthy adults (seven females; peak V̇o2: 42 ± 5 mL·min-1·kg-1) performed three different pseudorandom binary sequence (PRBS) exercise tests ranging in intensity from low-to-moderate, low-to-heavy, and ventilatory threshold-to-heavy work rates. A temporal convolutional network was trained to predict instantaneous V̇o2, with model inputs including heart rate, percent heart rate reserve, estimated minute ventilation, breathing frequency, and work rate. Frequency domain analyses between V̇o2 and work rate were used to evaluate measured and predicted V̇o2 kinetics. Predicted V̇o2 had low bias (-0.017 L·min-1, 95% limits of agreement: [-0.289, 0.254]), and was very strongly correlated (rrm = 0.974, P < 0.001) with the measured V̇o2. The extracted indicator of kinetics, mean normalized gain (MNG), was not different between predicted and measured V̇o2 responses (main effect: P = 0.374, ηp2 = 0.01), and decreased with increasing exercise intensity (main effect: P < 0.001, ηp2 = 0.64). Predicted and measured V̇o2 kinetics indicators were moderately correlated across repeated measurements (MNG: rrm = 0.680, P < 0.001). Therefore, the temporal convolutional network accurately predicted slower V̇o2 kinetics with increasing exercise intensity, enabling nonintrusive monitoring of cardiorespiratory dynamics across moderate- and heavy-exercise intensities.NEW & NOTEWORTHY Machine learning analysis of wearable sensor data with a sequential model, which utilized a receptive field of approximately 3 min to make instantaneous oxygen uptake estimations, accurately predicted oxygen uptake kinetics from moderate through to higher-intensity exercise. This innovation will enable nonintrusive cardiorespiratory monitoring over a wide range of exercise intensities encountered in vigorous training and competitive sports.[Abstract] [Full Text] [Related] [New Search]