Deep Learning Models Optimization for Gait Phase Identification from EMG Data During Exoskeleton-Assisted Walking.

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Roberto Soldi, Bruna Maria Vittoria Guerra, Stefania Sozzi, Leo Russo, Serena Pizzocaro, Renato Baptista, Alessandro Marco De Nunzio, Micaela Schmid, Stefano Ramat
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Abstract

Exoskeletons are a fast-growing technology that enables multiple use-cases in clinical scenarios. They can be useful tools for the rehabilitation of patients with motor dysfunctions caused by neurological conditions, aging or trauma. Assistive exoskeletons modulate the torque exerted by the electrical motors moving their joints to allow the patients wearing them to achieve an intended movement, such as gait, correctly. Their effectiveness, therefore, requires accurate online control of such torques to complement those generated by the patient. Hereby we explored Deep Learning (DL) models to generate an online prediction of the gait phase, i.e., stance or swing, during assisted walking with a lower-limb exoskeleton based on surface electromyography (sEMG) data. We leveraged the lead of muscular activation with respect to the movement of the limbs to adjust the labeling based on joints kinematics. The cross-subject design allowed to generalize over subjects not considered for training A hyperparameter optimization algorithm was also implemented to further explore the capabilities of DL models of a reduced size. We simulated a use case scenario to assess whether online implementation of the proposed technique is feasible. We also proposed a new metric called trade-of score (TOS) for evaluating the cost-performance compromise of the optimized models which lead to identifying a DL model capable of classifying gait phases with an accuracy of about 95% while significantly reducing the number of parameters compared to the full architecture. Its mean computational time of less than 10 ms offers the opportunity for accurate, online exoskeleton control based on sEMG data.

Abstract Image

Abstract Image

Abstract Image

基于外骨骼辅助行走肌电图数据的步态相位识别的深度学习模型优化。
外骨骼是一项快速发展的技术,可以在临床场景中实现多种用例。它们可以成为由神经系统疾病、衰老或创伤引起的运动功能障碍患者康复的有用工具。辅助外骨骼调节电动机施加的扭矩,使其运动关节,使佩戴它们的患者能够正确地完成预期的运动,例如步态。因此,它们的有效性需要精确的在线控制这些扭矩,以补充患者产生的扭矩。因此,我们探索了深度学习(DL)模型,以基于表面肌电图(sEMG)数据,在线预测下肢外骨骼辅助行走期间的步态阶段,即站立或摆动。我们利用肌肉激活对肢体运动的影响来调整基于关节运动学的标签。跨主题设计允许在未考虑训练的主题上进行泛化,还实现了超参数优化算法,以进一步探索缩小尺寸的DL模型的能力。我们模拟了一个用例场景来评估所建议的技术的在线实现是否可行。我们还提出了一种新的度量,称为交易分数(TOS),用于评估优化模型的性价比折衷,从而识别出能够以约95%的准确率对步态阶段进行分类的深度学习模型,同时与完整架构相比显着减少了参数数量。其平均计算时间小于10毫秒,为基于表面肌电信号数据的准确在线外骨骼控制提供了机会。
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
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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