Modeling Energy Expenditure Estimation in Occupational Context by Actigraphy: A Multi Regression Mixed-Effects Model.
André LucenaJoana Cristina Cardoso GuedesMário VazLuiz Bueno SilvaDenisse BustosErivaldo SouzaPublished in: International journal of environmental research and public health (2021)
The accurate prediction of energy requirements for healthy individuals has many useful applications. The occupational perspective has also been proven to be of great utility for improving workers' ergonomics, safety, and health. This work proposes a statistical regression model based on actigraphy and personal characteristics to estimate energy expenditure and cross-validate the results with reference standardized methods. The model was developed by hierarchical mixed-effects regression modeling based on the multitask protocol data. Measurements combined actigraphy, indirect calorimetry, and other personal and lifestyle information from healthy individuals (n = 50) within the age of 29.8 ± 5 years old. Results showed a significant influence of the variables related to movements, heart rate and anthropometric variables of body composition for energy expenditure estimation. Overall, the proposed model showed good agreement with energy expenditure measured by indirect calorimetry and evidenced a better performance than the methods presented in the international guidelines for metabolic rate assessment proving to be a reliable alternative to normative guidelines. Furthermore, a statistically significant relationship was found between daily activity and energy expenditure, which raised the possibility of further studies including other variables, namely those related to the subject's lifestyle.
Keyphrases
- body composition
- heart rate
- physical activity
- metabolic syndrome
- healthcare
- randomized controlled trial
- heart rate variability
- cardiovascular disease
- resistance training
- public health
- health information
- clinical practice
- electronic health record
- mental health
- high resolution
- machine learning
- mass spectrometry
- big data
- artificial intelligence