Detection of Low Back Physiotherapy Exercises With Inertial Sensors and Machine Learning: Algorithm Development and Validation
BackgroundPhysiotherapy is a critical element in the successful conservative management of low back pain (LBP). A gold standard for quantitatively measuring physiotherapy participation is crucial to understanding physiotherapy adherence in managing recovery from LBP....
Main Authors: | Abdalrahman Alfakir, Colin Arrowsmith, David Burns, Helen Razmjou, Michael Hardisty, Cari Whyne |
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Format: | Article |
Language: | English |
Published: |
JMIR Publications
2022-08-01
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Series: | JMIR Rehabilitation and Assistive Technologies |
Online Access: | https://rehab.jmir.org/2022/3/e38689 |
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