Research (Jan 2024)

Deep Learning Model Coupling Wearable Bioelectric and Mechanical Sensors for Refined Muscle Strength Assessment

  • Chengyu Li,
  • Tingyu Wang,
  • Siyu Zhou,
  • Yanshuo Sun,
  • Zijie Xu,
  • Shuxing Xu,
  • Sheng Shu,
  • Yi Zhao,
  • Bing Jiang,
  • Shiwang Xie,
  • Zhuoran Sun,
  • Xiaowei Xu,
  • Weishi Li,
  • Baodong Chen,
  • Wei Tang

DOI
https://doi.org/10.34133/research.0366
Journal volume & issue
Vol. 7

Abstract

Read online

Muscle strength (MS) is related to our neural and muscle systems, essential for clinical diagnosis and rehabilitation evaluation. Although emerging wearable technology seems promising for MS assessment, problems still exist, including inaccuracy, spatiotemporal differences, and analyzing methods. In this study, we propose a wearable device consisting of myoelectric and strain sensors, synchronously acquiring surface electromyography and mechanical signals at the same spot during muscle activities, and then employ a deep learning model based on temporal convolutional network (TCN) + Transformer (Tcnformer), achieving accurate grading and prediction of MS. Moreover, by combining with deep clustering, named Tcnformer deep cluster (TDC), we further obtain a 25-level classification for MS assessment, refining the conventional 5 levels. Quantification and validation showcase a patient’s postoperative recovery from level 3.2 to level 3.6 in the first few days after surgery. We anticipate that this system will importantly advance precise MS assessment, potentially improving relevant clinical diagnosis and rehabilitation outcomes.