Abstract
Background/Objectives:
The purpose of this study was to develop an activity energy expenditure (AEE) prediction equation for the Actiheart activity monitor for use in children with chronic disease.
Subjects/Methods:
In total, 63 children, aged 8–18 years with different types of chronic disease (juvenile arthritis, hemophilia, dermatomyositis, neuromuscular disease, cystic fibrosis or congenital heart disease) participated in an activity testing session, which consisted of a resting protocol, working on the computer, sweeping, hallway walking, steps and treadmill walking at three different speeds. During all activities, actual AEE was measured with indirect calorimetry and the participants wore an Actiheart on the chest. Resting EE and resting heart rate were measured during the resting protocol and heart rate above sleep (HRaS) was calculated.
Results:
Mixed linear modeling produced the following prediction equation:
This equation results in a nonsignificant mean difference of 2.1 J/kg/min (limits of agreement: −144.2 to 148.4 J/kg/min) for the prediction of AEE from the Actiheart compared with actual AEE.
Conclusions:
The Actiheart is valid for the use of AEE determination when using the new prediction equation for groups of children with chronic disease. However, the prediction error limits the use of the equation in individual subjects.
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Acknowledgements
This study was funded by a grant from the Canadian Institutes of Health Research (no. 167391/CIHR). We thank Fypro BV, Amsterdam, the Netherlands for their unconditional support with the Actiheart. We also thank Preeya Govan and Danial Ingas for their assistance in this study.
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Takken, T., Stephens, S., Balemans, A. et al. Validation of the Actiheart activity monitor for measurement of activity energy expenditure in children and adolescents with chronic disease. Eur J Clin Nutr 64, 1494–1500 (2010). https://doi.org/10.1038/ejcn.2010.196
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DOI: https://doi.org/10.1038/ejcn.2010.196
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