A muscle synergies-based controller to drive a powered upper-limb exoskeleton in reaching tasks.

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Wearable technologies Pub Date : 2024-11-15 eCollection Date: 2024-01-01 DOI:10.1017/wtc.2024.16
Michele Francesco Penna, Luca Giordano, Stefano Tortora, Davide Astarita, Lorenzo Amato, Filippo Dell'Agnello, Emanuele Menegatti, Emanuele Gruppioni, Nicola Vitiello, Simona Crea, Emilio Trigili
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引用次数: 0

Abstract

This work introduces a real-time intention decoding algorithm grounded in muscle synergies (Syn-ID). The algorithm detects the electromyographic (EMG) onset and infers the direction of the movement during reaching tasks to control a powered shoulder-elbow exoskeleton. Features related to muscle synergies are used in a Gaussian Mixture Model and probability accumulation-based logic to infer the user's movement direction. The performance of the algorithm was verified by a feasibility study including eight healthy participants. The experiments comprised a transparent session, during which the exoskeleton did not provide any assistance, and an assistive session in which the Syn-ID strategy was employed. Participants were asked to reach eight targets equally spaced on a circumference of 25 cm radius (adjusted chance level: 18.1%). The results showed an average accuracy of 48.7% after 0.6 s from the EMG onset. Most of the confusion of the estimate was found along directions adjacent to the actual one (type 1 error: 33.4%). Effects of the assistance were observed in a statistically significant reduction in the activation of Posterior Deltoid and Triceps Brachii. The final positions of the movements during the assistive session were on average 1.42 cm far from the expected ones, both when the directions were estimated correctly and when type 1 errors occurred. Therefore, combining accurate estimates with type 1 errors, we computed a modified accuracy of 82.10±6.34%. Results were benchmarked with respect to a purely kinematics-based approach. The Syn-ID showed better performance in the first portion of the movement (0.14 s after EMG onset).

基于肌肉协同作用的控制器,用于驱动动力上肢外骨骼完成伸手任务。
这项工作介绍了一种基于肌肉协同作用(Syn-ID)的实时意图解码算法。该算法可检测肌电图(EMG)起始点,并推断出伸手任务中的运动方向,从而控制动力肩肘外骨骼。与肌肉协同作用有关的特征被用于高斯混合模型和基于概率积累的逻辑中,以推断用户的运动方向。该算法的性能通过一项包括八名健康参与者在内的可行性研究得到了验证。实验包括一个外骨骼不提供任何帮助的透明环节和一个采用 Syn-ID 策略的辅助环节。实验要求参与者在半径为 25 厘米(调整后的概率水平:18.1%)的圆周上等间距到达八个目标。结果显示,从肌电图开始计时 0.6 秒后,平均准确率为 48.7%。大部分估计值的混淆都发生在与实际估计值相邻的方向上(类型 1 错误:33.4%)。辅助的效果体现在后三角肌和肱三头肌的激活在统计学上的显著降低。无论是在方向估计正确的情况下,还是在出现类型 1 错误的情况下,辅助训练中动作的最终位置与预期位置平均相差 1.42 厘米。因此,结合准确估计和类型 1 错误,我们计算出修正准确率为 82.10±6.34%。我们将结果与纯粹基于运动学的方法进行了比较。Syn-ID 在运动的第一部分(EMG 开始后 0.14 秒)表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
0.00%
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0
审稿时长
11 weeks
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