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对于中重度手部残障的个体来说,他们可能难以使用肌电控制来操作辅助设备。

Individuals with moderate to severe hand impairments may struggle to use EMG control for assistive devices.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:2864-2869. doi: 10.1109/EMBC48229.2022.9871351.

DOI:10.1109/EMBC48229.2022.9871351
PMID:36085874
Abstract

Neurological trauma, such as stroke, traumatic brain injury (TBI), spinal cord injury, and cerebral palsy can cause mild to severe upper limb impairments. Hand impairment makes it difficult for individuals to complete activities of daily living, especially bimanual tasks. A robotic hand orthosis or hand exoskeleton can be used to restore partial function of an intact but impaired hand. It is common for upper extremity prostheses and orthoses to use electromyography (EMG) sensing as a method for the user to control their device. However some individuals with an intact but impaired hand may struggle to use a myoelectrically controlled device due to potentially confounding muscle activity. This study was conducted to evaluate the application of conventional EMG control techniques as a robotic orthosis/exoskeleton user input method for individuals with mild to severe hand impairments. Nine impaired subjects and ten healthy subjects were asked to perform repeated contractions of muscles in their forearm and then onset analysis and feature classification were used to determine the accuracy of the employed EMG techniques. The average accuracy for contraction identification across employed EMG techniques was 95.4% ± 4.9 for the healthy subjects and 73.9% ± 13.1 for the impaired subjects with a range of 47.0% ± 19.1 - 91.6% ± 8.5. These preliminary results suggest that the conventional EMG control technologies employed in this paper may be difficult for some impaired individuals to use due to their unreliable muscle control.

摘要

神经创伤,如中风、创伤性脑损伤(TBI)、脊髓损伤和脑瘫,可能导致上肢轻度至重度损伤。手部损伤使个人难以完成日常生活活动,尤其是双手任务。机器人手矫形器或手部外骨骼可用于恢复完整但受损手的部分功能。上肢假肢和矫形器通常使用肌电图(EMG)感应作为用户控制其设备的方法。然而,一些手部完整但受损的人可能会因为潜在的肌肉活动干扰而难以使用肌电控制设备。这项研究旨在评估常规 EMG 控制技术作为机器人矫形器/外骨骼用户输入方法在轻度至重度手部损伤患者中的应用。九名受损受试者和十名健康受试者被要求重复收缩前臂肌肉,然后进行起始分析和特征分类,以确定所采用的 EMG 技术的准确性。在健康受试者中,所采用的 EMG 技术的收缩识别平均准确率为 95.4%±4.9%,而在受损受试者中为 73.9%±13.1%,范围为 47.0%±19.1%至 91.6%±8.5%。这些初步结果表明,由于肌肉控制不可靠,本文中采用的常规 EMG 控制技术可能难以被一些受损个体使用。

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