临床参数对肌电机械假手控制的影响。

Q Medicine
Manfredo Atzori, Arjan Gijsberts, Claudio Castellini, Barbara Caputo, Anne-Gabrielle Mittaz Hager, Simone Elsig, Giorgio Giatsidis, Franco Bassetto, Henning Müller
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引用次数: 46

摘要

用非侵入性技术改善假手的功能仍然是一个挑战。目前,表面肌电图(sEMG)的控制能力有限;然而,将机器学习应用于表面肌电信号的分析是很有前途的,并且最近已经在实践中得到了应用,但仍然存在许多问题。在这项研究中,我们记录了11名经桡骨截肢的男性受试者在心理上进行40个手和手腕动作时前臂的肌电信号活动。研究了分类性能和独立动作数量(定义为能够以>90%的准确率区分的动作子集)与截肢相关临床参数的关系。分析表明,随着幻肢感觉强度、剩余前臂比例和颞部距离的增加,分类准确率和独立运动次数显著增加。分类结果表明,在几乎没有训练的情况下,机器人假肢可以自然地控制多达11个动作。了解分类准确性与临床参数之间的关系,增加了关于幻肢痛的性质以及其他临床参数的新信息,可以为未来外科“功能性截肢”手术奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of clinical parameters on the control of myoelectric robotic prosthetic hands.

Improving the functionality of prosthetic hands with noninvasive techniques is still a challenge. Surface electromyography (sEMG) currently gives limited control capabilities; however, the application of machine learning to the analysis of sEMG signals is promising and has recently been applied in practice, but many questions still remain. In this study, we recorded the sEMG activity of the forearm of 11 male subjects with transradial amputation who were mentally performing 40 hand and wrist movements. The classification performance and the number of independent movements (defined as the subset of movements that could be distinguished with >90% accuracy) were studied in relationship to clinical parameters related to the amputation. The analysis showed that classification accuracy and the number of independent movements increased significantly with phantom limb sensation intensity, remaining forearm percentage, and temporal distance to the amputation. The classification results suggest the possibility of naturally controlling up to 11 movements of a robotic prosthetic hand with almost no training. Knowledge of the relationship between classification accuracy and clinical parameters adds new information regarding the nature of phantom limb pain as well as other clinical parameters, and it can lay the foundations for future "functional amputation" procedures in surgery.

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