Estimating gait parameters from sEMG signals using machine learning techniques under different power capacity of muscle.

Journal: Scientific reports
PMID:

Abstract

The gait analysis has been applied in many fields, such as the assessment of falling, force evaluation in sports, and gait disorder detection for neuromuscular diseases. Its main recording techniques include video cameras and wearable sensors. However, the present methods involve measuring surface electromyograms (sEMGs) to analyze muscle activities. The primary goal of this study is to estimate gait parameters under different power capacity of muscle by sEMGs measured from lower limbs. A self-made wireless device recorded sEMGs from two muscles of each foot, and GaitUp Physilog5 sensors captured gait parameters from 18 participants under running as references. Four features including median frequency (MDF), waveform length (WL), standard deviation (SD), and sample entropy (SampEn), were extracted from the sEMG data. The analysis utilized three machine learning models (Random Forest, CatBoost, XGBoost), evaluated through various evaluation metrics. Additionally, 5-fold cross-validation was conducted to assess the influence of muscle fatigue on the estimation of gait parameters. The results show that all models successfully estimated 20 gait parameters, all showing a Pearson correlation coefficient (PCC) above 0.800. However, the performance of models significantly depends on the condition of muscle fatigue. This study represents a significant advancement in gait analysis, providing a comprehensive method for estimating gait parameters from sEMG signals, with important implications for mobile health applications.

Authors

  • Shing-Hong Liu
  • Alok Kumar Sharma
    Department of Computer Science and Information Engineering, Chaoyang University of Technology, Taichung City 41349, Taiwan.
  • Bo-Yan Wu
    Department of Computer Science and Information Engineering, Chaoyang University of Technology, Taichung City, 413310, Taiwan (ROC).
  • Xin Zhu
    Biomedical Information Engineering Lab, The University of Aizu, Fukushima, Japan.
  • Chun-Ju Chang
    Department of Golden-Ager Industry Management, Chaoyang University of Technology, Taichung City, 41349, Taiwan (ROC).
  • Jia-Jung Wang
    Department of Biomedical Engineering, I-Shou University, Kaohsiung 82445, Taiwan.