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基于运动肌电信号控制的仿生手的临床应用。

Clinical implementation of a bionic hand controlled with kineticomyographic signals.

机构信息

Orthopedic Research Center, Ghaem Hospital, Mashhad University of Medical Sciences, Azadi Sq., Mashhad, 91388-13944, Iran.

Department of Electrical Engineering, Center of Excellence on Soft Computing and Intelligent Information Processing (SCIIP), Ferdowsi University of Mashhad, Azadi Sq., Mashhad, 9177948974, Iran.

出版信息

Sci Rep. 2022 Aug 31;12(1):14805. doi: 10.1038/s41598-022-19128-1.

Abstract

Sensing the proper signal could be a vital piece of the solution to the much evading attributes of prosthetic hands, such as robustness to noise, ease of connectivity, and intuitive movement. Towards this end, magnetics tags have been recently suggested as an alternative sensing mechanism to the more common EMG signals. Such sensing technology, however, is inherently invasive and hence only in simulation stages of magnet localization to date. Here, for the first time, we report on the clinical implementation of implanted magnetic tags for an amputee's prosthetic hand from both the medical and engineering perspectives. Specifically, the proposed approach introduces a flexor-extensor tendon transfer surgical procedure to implant the tags, artificial neural networks to extract human intention directly from the implanted magnet's magnetic fields -in short KineticoMyoGraphy (KMG) signals- rather than localizing them, and a game strategy to examine the proposed algorithms and rehabilitate the patient with his new prosthetic hand. The bionic hand's ability is then tested following the patient's intended gesture type and grade. The statistical results confirm the possible utility of surgically implanted magnetic tags as an accurate sensing interface for recognizing the intended gesture and degree of movement between an amputee and his bionic hand.

摘要

感知正确的信号可能是解决假肢手许多难以捉摸的特性的关键,例如对噪声的鲁棒性、连接的易用性和直观的运动。为此,磁性标签最近被提议作为一种替代更常见的肌电图信号的传感机制。然而,这种传感技术本质上是侵入性的,因此迄今为止仅处于磁定位的模拟阶段。在这里,我们首次从医学和工程的角度报告了用于截肢者假肢手的植入磁性标签的临床实施。具体来说,所提出的方法引入了屈肌-伸肌肌腱转移手术来植入标签,人工神经网络直接从植入磁铁的磁场中提取人类意图——简而言之是 KineticoMyoGraphy (KMG) 信号——而不是对其进行定位,以及一种游戏策略来检查所提出的算法并使用他的新假肢手为患者进行康复。然后根据患者的预期手势类型和级别测试仿生手的能力。统计结果证实了手术植入的磁性标签作为识别截肢者与其仿生手之间的预期手势和运动程度的准确传感接口的可能用途。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9446/9433417/ae22a65be86c/41598_2022_19128_Fig1_HTML.jpg

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