Jarrett Christopher, McDaid Andrew
Department of Mechanical Engineering, Faculty of Engineering, University of Auckland Auckland, New Zealand.
Front Neurosci. 2017 Mar 14;11:101. doi: 10.3389/fnins.2017.00101. eCollection 2017.
Motor learning is a critical component of the rehabilitation process; however, it can be difficult to separate the fundamental causes of a learning deficit when physical impairment is a confounding factor. In this paper, a new technique is proposed to augment the residual ability of physically impaired patients with a robotic rehabilitation exoskeleton, such that motor learning can be studied independently of physical impairment. The proposed technique augments the velocity of an on-screen cursor relative to the restricted physical motion. Radial Basis Functions (RBFs) are used to both model velocity and derive a function to scale velocity as a function of workspace position. Two variations of the algorithm are presented for comparison. In a cross-over pilot study, healthy participants were recruited and subjected to a simulated impairment to constrain their motion, imposed by the cable-driven wrist exoskeleton. Participants then completed a sinusoidal tracking task, in which the algorithms were statistically shown to augment the cursor velocity in the constrained state such that it matched position-dependent velocities recorded in the healthy state. A kinematic task was then designed as a motor-learning case study where the algorithms were statistically shown to allow participants to achieve the same performance when their motion was constrained as when unconstrained. The results of the pilot study provide motivation for further research into the use of this technique, thus providing a tool with which motor-learning can be studied in neurologically impaired populations. This could be used to give physiotherapists greater insight into underlying causes of motor learning deficits, consequently facilitating and enhancing subject-specific therapy regimes.
运动学习是康复过程的关键组成部分;然而,当身体损伤成为一个混杂因素时,很难区分学习缺陷的根本原因。本文提出了一种新技术,通过机器人康复外骨骼增强身体受损患者的残余能力,从而能够独立于身体损伤来研究运动学习。所提出的技术增强了屏幕上光标相对于受限身体运动的速度。径向基函数(RBF)用于对速度进行建模,并推导一个函数,将速度作为工作空间位置的函数进行缩放。为了进行比较,给出了该算法的两种变体。在一项交叉试点研究中,招募了健康参与者,并对他们施加由缆索驱动的手腕外骨骼造成的模拟损伤来限制其运动。参与者随后完成了一项正弦跟踪任务,在该任务中,统计结果表明算法在受限状态下增强了光标速度,使其与在健康状态下记录的位置相关速度相匹配。然后设计了一项运动学任务作为运动学习案例研究,在该研究中,统计结果表明算法使参与者在运动受限和不受限时能够达到相同的表现。试点研究结果为进一步研究该技术的应用提供了动力,从而提供了一种工具,可用于在神经受损人群中研究运动学习。这可用于让物理治疗师更深入了解运动学习缺陷的潜在原因,从而促进和加强针对个体的治疗方案。