Zhang Guoxin, Hong Tommy Tung-Ho, Li Li, Zhang Ming
Department of Biomedical Engineering, Faculty of Engineering, The Hong Kong Polytechnic University, Hong Kong SAR, 999077, China.
School of Fashion and Textiles, The Hong Kong Polytechnic University, Hong Kong SAR, 999077, China.
Ann Biomed Eng. 2025 Jan;53(1):48-58. doi: 10.1007/s10439-024-03603-z. Epub 2024 Aug 13.
This study aimed to assess the feasibility of early detection of fatigued gait patterns for older adults through the development of a smart portable device.
The smart device incorporated seven force sensors and a single inertial measurement unit (IMU) to measure regional plantar forces and foot kinematics. Data were collected from 18 older adults walking briskly on a treadmill for 60 min. The optimal feature set for each recognition model was determined using forward sequential feature selection in a wrapper fashion through fivefold cross-validation. The recognition model was selected from four machine learning models through leave-one-subject-out cross-validation.
Five selected characteristics that best represented the state of fatigue included impulse at the medial and lateral arches (increased, p = 0.002 and p < 0.001), contact angle and rotation range of angle in the sagittal plane (increased, p < 0.001), and the variability of the resultant swing angular acceleration (decreased, p < 0.001). The detection accuracy based on the dual signal source of IMU and plantar force was 99%, higher than the 95% accuracy based on the single source. The intelligent portable device demonstrated excellent generalization (ranging from 93 to 100%), real-time performance (2.79 ms), and portability (32 g).
The proposed smart device can detect fatigue patterns with high precision and in real time.
The application of this device possesses the potential to reduce the injury risk for older adults related to fatigue during gait.
本研究旨在通过开发一种智能便携式设备来评估早期检测老年人疲劳步态模式的可行性。
该智能设备集成了七个力传感器和一个惯性测量单元(IMU),以测量局部足底压力和足部运动学数据。从18名老年人在跑步机上轻快行走60分钟的数据中进行收集。通过五折交叉验证,以包装器方式使用前向顺序特征选择来确定每个识别模型的最佳特征集。通过留一法交叉验证从四种机器学习模型中选择识别模型。
最能代表疲劳状态的五个选定特征包括内侧和外侧足弓的冲量(增加,p = 0.002和p < 0.001)、矢状面内的接触角和角度旋转范围(增加,p < 0.001)以及合成摆动角加速度的变异性(降低,p < 0.001)。基于IMU和足底压力双信号源的检测准确率为99%,高于基于单信号源的95%准确率。该智能便携式设备具有出色的泛化能力(范围从93%到100%)、实时性能(2.79毫秒)和便携性(32克)。
所提出的智能设备能够高精度实时检测疲劳模式。
该设备的应用具有降低老年人步态中与疲劳相关的受伤风险的潜力。