IEEE Trans Neural Syst Rehabil Eng. 2020 Feb;28(2):498-507. doi: 10.1109/TNSRE.2019.2959714. Epub 2019 Dec 13.
In the case of a hand amputation, the affected person can use a myoelectric prosthesis to substitute the missing limb and regain motor functions. Unfortunately, commercial methods for myoelectric control, although robust and simple, are unintuitive and cognitively taxing when applied to an advanced multi-functional prosthesis. The state-of-the-art methods developed in academia are based on machine learning and therefore require long training and suffer from a lack of robustness. This work presents a novel closed-loop multi-level amplitude controller (CMAC), which aims at overcoming these drawbacks. The CMAC implements three degrees-of-freedom (DoF) control by thresholding the muscle contraction intensity during wrist flexion and extension movements. Unique features of the controller are the vibrotactile feedback that communicates the state of the controller to the user and a scheme for proportional control. These components allow exploiting the full dexterity of the prosthesis using a simple two-channel myoelectric interface. The CMAC was compared to a commonly implemented pattern-recognition method (linear discriminant analysis - LDA) using clinically relevant tests in 12 able-bodied and 2 amputee subjects. The experimental assessment demonstrated that CMAC was similarly fast as LDA in dexterous tests (clothespin and cube manipulation), while it was somewhat slower than LDA during a simple, single DoF task (box and blocks). In addition, in all the tasks, LDA and CMAC resulted in a similarly low error rate. On the other hand, to an amputee that could not generate six distinguishable classes using LDA, the CMAC still enabled the control of all the prosthesis DoFs. Importantly, the overall setup and training time in CMAC were significantly lower compared to LDA. In conclusion, the novel method is convenient for clinical applications, and allows substantially higher control dexterity compared to what can be normally achieved using conventional two channel EMG. Therefore, CMAC provides performance comparable to advanced machine-learning algorithms and the robustness and ease of use that is characteristic for the simple two-channel myoelectric interface.
在手部截肢的情况下,患者可以使用肌电假肢来替代缺失的肢体并恢复运动功能。不幸的是,商业上的肌电控制方法虽然强大且简单,但在应用于先进的多功能假肢时却不直观且认知负担重。学术界开发的最新方法基于机器学习,因此需要长时间的训练,并且缺乏鲁棒性。本工作提出了一种新颖的闭环多级幅度控制器(CMAC),旨在克服这些缺点。CMAC 通过在腕关节屈伸运动过程中对肌肉收缩强度进行阈值处理来实现三自由度(DoF)控制。该控制器的独特之处在于振动触觉反馈,该反馈将控制器的状态传达给用户,以及比例控制方案。这些组件允许使用简单的双通道肌电接口充分利用假肢的全部灵巧性。CMAC 与一种常用的模式识别方法(线性判别分析 - LDA)进行了比较,在 12 名健康人和 2 名截肢者中进行了临床相关测试。实验评估表明,CMAC 在灵巧测试(别针和魔方操作)中与 LDA 一样快速,而在简单的单自由度任务(盒子和积木)中则稍慢于 LDA。此外,在所有任务中,LDA 和 CMAC 的错误率都相似。另一方面,对于无法使用 LDA 生成六个可区分类别的截肢者,CMAC 仍然能够控制假肢的所有自由度。重要的是,与 LDA 相比,CMAC 的总体设置和培训时间要低得多。总之,该新方法便于临床应用,并且与使用常规双通道 EMG 通常可实现的控制灵巧性相比,可显著提高控制灵巧性。因此,CMAC 提供了与先进的机器学习算法相当的性能,以及简单双通道肌电接口的鲁棒性和易用性。