Literature DB >> 33121379

Deep Learning to Predict Energy Expenditure and Activity Intensity in Free Living Conditions using Wrist-specific Accelerometry.

Rashmika Nawaratne1, Damminda Alahakoon1, Daswin De Silva1, Paul D O'Halloran2,3, Alexander Hk Montoye4, Kiera Staley3, Matthew Nicholson3, Michael Ic Kingsley5,6.   

Abstract

Wrist-worn accelerometers are more comfortable and yield greater compliance than hip-worn devices, making them attractive for free-living activity assessments. However, intricate wrist movements may require more complex predictive models than those applied to hip-worn devices. This study developed a novel deep learning method that predicts energy expenditure and physical activity intensity of adults using wrist-specific accelerometry. Triaxial accelerometers were worn by 119 participants on their wrist and hip for two weeks during waking hours. A deep learning model was developed from week 1 data of 60 participants and tested using week 2 data for: (i) the remaining 59 participants (Group UT), and (ii) participants used for training (Group TR). Estimates of physical activity were compared to a reference hip-specific method. Moderate-to-vigorous physical activity predicted by the wrist-model was not different to the reference method for participants in Group UT (5.9±3.1vs. 6.3±3.3 hour/week) and Group TR (6.9±3.7 vs. 7.2±4.2 hour/week). At 60-s epoch level, energy expenditure predicted by the wrist-model on Group UT was strongly correlated with the reference method (r=0.86, 95%CI: 0.84-0.87) and closely predicted activity intensity (83.7%, 95%CI: 80.9-86.5%). The deep learning method has application for wrist-worn accelerometry in free-living adults.

Entities:  

Keywords:  Accelerometer; actigraph; classification; convolutional neural network; physical activity; wrist

Mesh:

Year:  2020        PMID: 33121379     DOI: 10.1080/02640414.2020.1841394

Source DB:  PubMed          Journal:  J Sports Sci        ISSN: 0264-0414            Impact factor:   3.337


  1 in total

1.  The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study.

Authors:  Mikael Anne Greenwood-Hickman; Supun Nakandala; Marta M Jankowska; Dori E Rosenberg; Fatima Tuz-Zahra; John Bellettiere; Jordan Carlson; Paul R Hibbing; Jingjing Zou; Andrea Z Lacroix; Arun Kumar; Loki Natarajan
Journal:  Med Sci Sports Exerc       Date:  2021-11-01
  1 in total

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