Olsson Alexander E, Malešević Nebojša, Björkman Anders, Antfolk Christian
Department of Biomedical Engineering, Faculty of Engineering, Lund University, Lund, Sweden.
Department of Hand Surgery, Sahlgrenska University Hospital, Institute of Clinical Sciences, University of Gothenburg, Sahlgrenska Academy, Gothenburg, Sweden.
Front Neurosci. 2021 Nov 17;15:777329. doi: 10.3389/fnins.2021.777329. eCollection 2021.
Processing myoelectrical activity in the forearm has for long been considered a promising framework to allow transradial amputees to control motorized prostheses. In spite of expectations, contemporary muscle-computer interfaces built for this purpose typically fail to satisfy one or more important desiderata, such as accuracy, robustness, and/or naturalness of control, in part due to difficulties in acquiring high-quality signals continuously outside laboratory conditions. In light of such problems, surgically implanted electrodes have been made a viable option that allows for long-term acquisition of intramuscular electromyography (iEMG) measurements of spatially precise origin. As it stands, the question of how information embedded in such signals is best extracted and combined across multiple channels remains open. This study presents and evaluates an approach to this end that uses deep neural networks based on the Long Short-Term Memory (LSTMs) architecture to regress forces exerted by multiple degrees of freedom (DoFs) from multichannel iEMG. Three deep learning models, representing three distinct regression strategies, were evaluated: (I) One-to-One, wherein each DoF is separately estimated by an LSTM model processing a single iEMG channel, (II) All-to-One, wherein each DoF is separately estimated by an LSTM model processing all iEMG channels, and (III) All-to-All, wherein a single LSTM model with access to all iEMG channels estimates all DoFs simultaneously. All models operate on raw iEMG, with no preliminary feature extraction required. When evaluated on a dataset comprising six iEMG channels with concurrent force measurements acquired from 14 subjects, all LSTM strategies were found to significantly outperform a baseline feature-based linear control regression method. This finding indicates that recurrent neural networks can learn to transform raw forearm iEMG signals directly into representations that correlate with forces exerted at the level of the hand to a greater degree than simple features do. Furthermore, the All-to-All and All-to-One strategies were found to exhibit better performance than the One-to-One strategy. This finding suggests that, in spite of the spatially local nature of signals, iEMG from muscles not directly actuating the relevant DoF can provide contextual information that aid in decoding motor intent.
长期以来,处理前臂的肌电活动一直被认为是一个有前景的框架,可让经桡骨截肢者控制电动假肢。尽管人们满怀期待,但为此目的构建的当代肌肉-计算机接口通常无法满足一项或多项重要要求,比如控制的准确性、稳健性和/或自然性,部分原因是在实验室条件之外持续获取高质量信号存在困难。鉴于此类问题,手术植入电极已成为一种可行的选择,它能够长期获取空间精确起源的肌内肌电图(iEMG)测量值。目前,如何从这些信号中最佳地提取信息并在多个通道之间进行组合的问题仍然悬而未决。本研究提出并评估了一种为此目的的方法,该方法使用基于长短期记忆(LSTM)架构的深度神经网络,从多通道iEMG中回归多个自由度(DoF)施加的力。评估了代表三种不同回归策略的三个深度学习模型:(I)一对一,其中每个自由度由处理单个iEMG通道的LSTM模型单独估计;(II)全对一,其中每个自由度由处理所有iEMG通道的LSTM模型单独估计;(III)全对全,其中可访问所有iEMG通道的单个LSTM模型同时估计所有自由度。所有模型都对原始iEMG进行操作,无需进行初步特征提取。在一个包含从14名受试者获取的六个iEMG通道以及同步力测量的数据集上进行评估时,发现所有LSTM策略均显著优于基于特征的基线线性控制回归方法。这一发现表明,循环神经网络能够学会将原始前臂iEMG信号直接转换为与手部水平施加的力相关性更高的表示,其程度超过简单特征。此外,发现全对全和全对一策略比一对一策略表现更好。这一发现表明,尽管信号具有空间局部性,但来自未直接驱动相关自由度的肌肉的iEMG可以提供有助于解码运动意图的上下文信息。