Statistical machine learning of sleep and physical activity phenotypes from sensor data in 96,220 UK Biobank participants.
Matthew WillettsSven HollowellLouis AslettChris HolmesAiden DohertyPublished in: Scientific reports (2018)
Current public health guidelines on physical activity and sleep duration are limited by a reliance on subjective self-reported evidence. Using data from simple wrist-worn activity monitors, we developed a tailored machine learning model, using balanced random forests with Hidden Markov Models, to reliably detect a number of activity modes. We show that physical activity and sleep behaviours can be classified with 87% accuracy in 159,504 minutes of recorded free-living behaviours from 132 adults. These trained models can be used to infer fine resolution activity patterns at the population scale in 96,220 participants. For example, we find that men spend more time in both low- and high- intensity behaviours, while women spend more time in mixed behaviours. Walking time is highest in spring and sleep time lowest during the summer. This work opens the possibility of future public health guidelines informed by the health consequences associated with specific, objectively measured, physical activity and sleep behaviours.
Keyphrases
- physical activity
- public health
- sleep quality
- machine learning
- high intensity
- big data
- body mass index
- resistance training
- healthcare
- electronic health record
- clinical practice
- artificial intelligence
- climate change
- type diabetes
- global health
- mental health
- cross sectional
- deep learning
- depressive symptoms
- air pollution
- data analysis
- heat stress
- middle aged
- pregnant women
- risk assessment
- smoking cessation
- adipose tissue
- health promotion
- single molecule
- pregnancy outcomes
- neural network