IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2022)

Towards Soft Wearable Strain Sensors for Muscle Activity Monitoring

  • Jonathan T. Alvarez,
  • Lucas F. Gerez,
  • Oluwaseun A. Araromi,
  • Jessica G. Hunter,
  • Dabin K. Choe,
  • Christopher J. Payne,
  • Robert J. Wood,
  • Conor J. Walsh

DOI
https://doi.org/10.1109/TNSRE.2022.3196501
Journal volume & issue
Vol. 30
pp. 2198 – 2206

Abstract

Read online

The force-generating capacity of skeletal muscle is an important metric in the evaluation and diagnosis of musculoskeletal health. Measuring changes in muscle force exertion is essential for tracking the progress of athletes during training, for evaluating patients’ recovery after muscle injury, and also for assisting the diagnosis of conditions such as muscular dystrophy, multiple sclerosis, or Parkinson’s disease. Traditional hardware for strength evaluation requires technical training for operation, generates discrete time points for muscle assessment, and is implemented in controlled settings. The ability to continuously monitor muscle force without restricting the range of motion or adapting the exercise protocol to suit specific hardware would allow for a richer dataset that can help unlock critical features of muscle health and strength evaluation. In this paper, we employ wearable, ultra-sensitive soft strain sensors for tracking changes in muscle deformation during contractions. We demonstrate the sensors’ sensitivity to isometric contractions, as well as the sensors’ capacity to track changes in peak torque over the course of an isokinetic fatiguing protocol for the knee extensors. The wearable soft system was able to efficiently estimate peak joint torque reduction caused by muscle fatigue (mean NRMSE $= 0.15\pm 0.03$ ).

Keywords