Advancing Quadriceps Muscle Monitoring: Wearable A-mode Ultrasound and Machine Learning Classification for Accurate Estimation of Muscle States
2023 IEEE International Ultrasonics Symposium (IUS)(2023)
摘要
Accurately estimating muscle states, including fatigue and contraction, holds significant potential in the fields of rehabilitation and muscle-related disorder identification. However, conventional invasive methods such as intramuscular electromyography (EMG) entail risks and discomfort. This study pioneers the integration of A-mode ultrasound (US) signals from a wearable sparse array with machine learning (ML) classification, advancing quadriceps muscle state estimation. A novel wearable transducer, comprising a 16-element array with a central frequency of 10 MHz, enables the capture of A-mode US signals on curved skin surfaces. Three able-bodied participants engaged in two experimental sets: voluntary knee extension for contraction prediction, and a fatiguing protocol utilizing functional electrical stimulation (FES). Employing US feature extraction, followed by supervised ML classification, resulted in an exceptional average accuracy of 93.66 % in contraction classification and achieved 90.1 % in fatigue classification.
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关键词
ultrasound transducers,wearable transducers,flexible transducers,muscle activities detection,functional electrical stimulation,machine learning classification
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