Hahne Janne M, Wilke Meike A, Koppe Mario, Farina Dario, Schilling Arndt F
Applied Rehabilitation Technology Lab, Department of Trauma Surgery, Orthopedic Surgery and Hand Surgery, University Medical Center Göttingen, Göttingen, Germany.
Faculty of Life Sciences, University of Applied Sciences (HAW) Hamburg, Hamburg, Germany.
Front Neurosci. 2020 Jun 17;14:600. doi: 10.3389/fnins.2020.00600. eCollection 2020.
Hand prostheses are usually controlled by electromyographic (EMG) signals from the remnant muscles of the residual limb. Most prostheses used today are controlled with very simple techniques using only two EMG electrodes that allow to control a single prosthetic function at a time only. Recently, modern prosthesis controllers based on EMG classification, have become clinically available, which allow to directly access more functions, but still in a sequential manner only. We have recently shown in laboratory tests that a regression-based mapping from EMG signals into prosthetic control commands allows for a simultaneous activation of two functions and an independent control of their velocities with high reliability. Here we aimed to study how such regression-based control performs in daily life in a two-month case study. The performance is evaluated in functional tests and with a questionnaire at the beginning and the end of this phase and compared with the participant's own prosthesis, controlled with a classical approach. Already 1 day after training of the regression model, the participant with transradial amputation outperformed the performance achieved with his own Michelangelo hand in two out of three functional metrics. No retraining of the model was required during the entire study duration. During the use of the system at home, the performance improved further and outperformed the conventional control in all three metrics. This study demonstrates that the high fidelity of linear regression-based prosthesis control is not restricted to a laboratory environment, but can be transferred to daily use.
手部假肢通常由来自残肢残余肌肉的肌电(EMG)信号控制。如今使用的大多数假肢采用非常简单的技术进行控制,仅使用两个EMG电极,每次只能控制单一的假肢功能。最近,基于EMG分类的现代假肢控制器已在临床上可用,其允许直接访问更多功能,但仍仅以顺序方式进行。我们最近在实验室测试中表明,从EMG信号到假肢控制命令的基于回归的映射能够同时激活两种功能,并以高可靠性独立控制其速度。在此,我们旨在通过一项为期两个月的案例研究,探讨这种基于回归的控制在日常生活中的表现。在该阶段开始和结束时,通过功能测试和问卷调查对性能进行评估,并与采用传统方法控制的参与者自己的假肢进行比较。在回归模型训练后的第1天,经桡骨截肢的参与者在三项功能指标中的两项上,其表现就超过了使用自己的米开朗基罗手所达到的性能。在整个研究期间无需对模型进行重新训练。在居家使用该系统期间,性能进一步提升,在所有三项指标上均优于传统控制。这项研究表明,基于线性回归的假肢控制的高保真度并不局限于实验室环境,而是可以转移到日常使用中。