2024
DOI: 10.1088/1361-6579/ad7ad2
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Energy expenditure prediction in preschool children: a machine learning approach using accelerometry and external validation

Hannah J Coyle-Asbil,
Lukas Burk,
Mirko Brandes
et al.

Abstract: Objective:
This study aimed to develop convolutional neural networks (CNN) models to predict the energy expenditure (EE) of children from raw accelerometer data. Additionally, this study sought to external validation of the CNN models in addition to the linear regression (LM), random forest (RF), and full connected neural network (FcNN) models published inet al (2019).
Approach:
Included in this study were 41 German children (3.0 to 6.99 years) for the training and internal validation w… Show more

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