TY - JOUR
T1 - Energy Expenditure Prediction from Accelerometry Data Using Long Short-Term Memory Recurrent Neural Networks
AU - Vibæk, Martin
AU - Peimankar, Abdolrahman
AU - Wiil, Uffe Kock
AU - Arvidsson, Daniel
AU - Brønd, Jan Christian
PY - 2024/4
Y1 - 2024/4
N2 - The accurate estimation of energy expenditure from simple objective accelerometry measurements provides a valuable method for investigating the effect of physical activity (PA) interventions or population surveillance. Methods have been evaluated previously, but none utilize the temporal aspects of the accelerometry data. In this study, we investigated the energy expenditure prediction from acceleration measured at the subjects’ hip, wrist, thigh, and back using recurrent neural networks utilizing temporal elements of the data. The acceleration was measured in children (N = 33) performing a standardized activity protocol in their natural environment. The energy expenditure was modelled using Multiple Linear Regression (MLR), stacked long short-term memory (LSTM) networks, and combined convolutional neural networks (CNN) and LSTM. The correlation and mean absolute percentage error (MAPE) were 0.76 and 19.9% for the MLR, 0.882 and 0.879 and 14.22% for the LSTM, and, with the combined LSTM-CNN, the best performance of 0.883 and 13.9% was achieved. The prediction error for vigorous intensities was significantly different (p < 0.01) from those of the other intensity domains: sedentary, light, and moderate. Utilizing the temporal elements of movement significantly improves energy expenditure prediction accuracy compared to other conventional approaches, but the prediction error for vigorous intensities requires further investigation.
AB - The accurate estimation of energy expenditure from simple objective accelerometry measurements provides a valuable method for investigating the effect of physical activity (PA) interventions or population surveillance. Methods have been evaluated previously, but none utilize the temporal aspects of the accelerometry data. In this study, we investigated the energy expenditure prediction from acceleration measured at the subjects’ hip, wrist, thigh, and back using recurrent neural networks utilizing temporal elements of the data. The acceleration was measured in children (N = 33) performing a standardized activity protocol in their natural environment. The energy expenditure was modelled using Multiple Linear Regression (MLR), stacked long short-term memory (LSTM) networks, and combined convolutional neural networks (CNN) and LSTM. The correlation and mean absolute percentage error (MAPE) were 0.76 and 19.9% for the MLR, 0.882 and 0.879 and 14.22% for the LSTM, and, with the combined LSTM-CNN, the best performance of 0.883 and 13.9% was achieved. The prediction error for vigorous intensities was significantly different (p < 0.01) from those of the other intensity domains: sedentary, light, and moderate. Utilizing the temporal elements of movement significantly improves energy expenditure prediction accuracy compared to other conventional approaches, but the prediction error for vigorous intensities requires further investigation.
KW - LSTM
KW - accelerometry
KW - children
KW - deep learning
KW - energy expenditure
KW - Energy Metabolism/physiology
KW - Accelerometry/methods
KW - Neural Networks, Computer
KW - Humans
KW - Exercise/physiology
KW - Linear Models
KW - Male
KW - Memory, Short-Term/physiology
KW - Female
KW - Child
U2 - 10.3390/s24082520
DO - 10.3390/s24082520
M3 - Journal article
C2 - 38676136
SN - 1424-8220
VL - 24
JO - Sensors
JF - Sensors
IS - 8
M1 - 2520
ER -