利用 s-EMG 传感器选择用于检测上肢补偿运动的肌肉

IF 3.4 Q2 ENGINEERING, BIOMEDICAL IEEE transactions on medical robotics and bionics Pub Date : 2025-01-20 DOI:10.1109/TMRB.2025.3531015
Mahshad Berjis;Marie-Eve LeBel;Daniel J. Lizotte;Ana Luisa Trejos
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摘要

上肢受伤的患者通常会使用代偿动作来克服活动范围的限制,如果不在康复计划中及早纠正,可能会导致更多损伤。虽然自动检测代偿运动的研究在文献中已有记载,但传感器位置对检测性能的影响还没有被探讨过。为了研究传感器位置如何影响自动检测上肢代偿运动的能力,我们在参与这些运动的关键肌肉上放置了 16 个表面肌电图传感器。31 名健康参与者在三种条件下完成了开门任务:无肘关节限制(健康模式),以及肘关节活动范围受限的两种条件(60°屈曲-完全屈曲和 30°-80°屈曲以模拟受伤)。统计分析确定了不同条件下具有显著差异的传感器位置。支持向量机分类器显示,使用三角肌中部、斜方肌上部、背阔肌、腹外斜肌和竖腹肌上的六个传感器的数据性能明显更高。这项研究强调了深思熟虑的肌肉选择对于有效自动检测和纠正上肢代偿运动的重要性,这对于可穿戴机电一体化设备有效改善患者的运动质量至关重要。
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Selecting Muscles for Detection of Upper-Limb Compensatory Movements Using s-EMG Sensors
Patients with upper-limb injuries often use compensatory movements to overcome limitations in range of motion, which can lead to additional injury if not corrected early within a rehabilitation program. Although automatic detection of compensatory movements has been studied in the literature, the impact of sensor locations on detection performance has not been previously explored. To investigate how sensor locations affect the ability to automatically detect compensatory movements of the upper limb, sixteen surface electromyography sensors were placed on key muscles involved in these movements. Thirty-one healthy participants performed a door-opening task in three conditions: without elbow restrictions (healthy pattern), and two conditions with limited elbow range of motion (60° of flexion-full flexion and 30°–80° of flexion to simulate injury). Statistical analyses identified sensor locations with significant differences between the conditions. Support vector machine classifiers demonstrated notably higher performance using data from six sensors on the middle deltoid, the upper trapezius, the latissimus dorsi, the external obliques, and the erector abdominis. This study highlights the importance of thoughtful muscle selection for effective automatic detection and correction of upper-limb compensatory movements, which is crucial for a wearable mechatronic device to be effective in improving the movement quality of patients.
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Table of Contents IEEE Transactions on Medical Robotics and Bionics Information for Authors IEEE Transactions on Medical Robotics and Bionics Society Information Guest Editorial BioRob2024 IEEE Transactions on Medical Robotics and Bionics Publication Information
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