Machine-Learning-Based Methodology for Estimation of Shoulder Load in Wheelchair-Related Activities Using Wearables.

Sensors (Basel)

Swiss Paraplegic Research, Guido A. Zächstrasse 4, 6207 Nottwil, Switzerland.

Published: February 2023

AI Article Synopsis

  • High shoulder problems are common among manual wheelchair users with spinal cord injuries, but understanding the relation to shoulder load is not clear.
  • The study developed a machine-learning method using wearable sensors to estimate the shoulder load during daily activities by testing able-bodied participants with sensors and EMG recordings.
  • A neural network model showed promising results, achieving a good correlation and similarity in predicting shoulder loads, indicating wearable technology's potential in assessing shoulder stress for wheelchair users.

Article Abstract

There is a high prevalence of shoulder problems in manual wheelchair users (MWUs) with a spinal cord injury. How shoulder load relates to shoulder problems remains unclear. This study aimed to develop a machine-learning-based methodology to estimate the shoulder load in wheelchair-related activities of daily living using wearable sensors. Ten able-bodied participants equipped with five inertial measurement units (IMU) on their thorax, right arm, and wheelchair performed activities exemplary of daily life of MWUs. Electromyography (EMG) was recorded from the long head of the biceps and medial part of the deltoid. A neural network was trained to predict the shoulder load based on IMU and EMG data. Different cross-validation strategies, sensor setups, and model architectures were examined. The predicted shoulder load was compared to the shoulder load determined with musculoskeletal modeling. A subject-specific biLSTM model trained on a sparse sensor setup yielded the most promising results (mean correlation coefficient = 0.74 ± 0.14, relative root-mean-squared error = 8.93% ± 2.49%). The shoulder-load profiles had a mean similarity of 0.84 ± 0.10 over all activities. This study demonstrates the feasibility of using wearable sensors and neural networks to estimate the shoulder load in wheelchair-related activities of daily living.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9918997PMC
http://dx.doi.org/10.3390/s23031577DOI Listing

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