Liu Shing-Hong, Sharma Alok Kumar, Wu Bo-Yan, Zhu Xin, Chang Chun-Ju, Wang Jia-Jung
Department of Computer Science and Information Engineering, Chaoyang University of Technology, Taichung City, 413310, Taiwan (ROC).
Department of AI Technology Development, M&D Data Science Center, Institute of Integrated Research, Institute of Science Tokyo, Tokyo, Japan.
Sci Rep. 2025 Apr 12;15(1):12575. doi: 10.1038/s41598-025-95973-0.
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.
步态分析已应用于许多领域,如跌倒评估、运动中的力评估以及神经肌肉疾病的步态障碍检测。其主要记录技术包括摄像机和可穿戴传感器。然而,目前的方法涉及测量表面肌电图(sEMG)来分析肌肉活动。本研究的主要目标是通过从下肢测量的sEMG来估计不同肌肉力量能力下的步态参数。一个自制的无线设备记录每只脚两块肌肉的sEMG,GaitUp Physilog5传感器从18名参与者跑步时获取步态参数作为参考。从sEMG数据中提取了包括中频(MDF)、波形长度(WL)、标准差(SD)和样本熵(SampEn)在内的四个特征。分析使用了三种机器学习模型(随机森林、CatBoost、XGBoost),并通过各种评估指标进行评估。此外,进行了5折交叉验证以评估肌肉疲劳对步态参数估计的影响。结果表明,所有模型都成功估计了20个步态参数,所有参数的皮尔逊相关系数(PCC)均高于0.800。然而,模型的性能显著取决于肌肉疲劳状况。本研究代表了步态分析的重大进展,提供了一种从sEMG信号估计步态参数的综合方法,对移动健康应用具有重要意义。