Huang Vincent S, Krakauer John W
Motor Performance Laboratory, Department of Neurology, The Neurological Institute, Columbia University College of Physicians and Surgeons, New York, New York, USA.
J Neuroeng Rehabil. 2009 Feb 25;6:5. doi: 10.1186/1743-0003-6-5.
Conventional neurorehabilitation appears to have little impact on impairment over and above that of spontaneous biological recovery. Robotic neurorehabilitation has the potential for a greater impact on impairment due to easy deployment, its applicability across of a wide range of motor impairment, its high measurement reliability, and the capacity to deliver high dosage and high intensity training protocols. We first describe current knowledge of the natural history of arm recovery after stroke and of outcome prediction in individual patients. Rehabilitation strategies and outcome measures for impairment versus function are compared. The topics of dosage, intensity, and time of rehabilitation are then discussed. Robots are particularly suitable for both rigorous testing and application of motor learning principles to neurorehabilitation. Computational motor control and learning principles derived from studies in healthy subjects are introduced in the context of robotic neurorehabilitation. Particular attention is paid to the idea of context, task generalization and training schedule. The assumptions that underlie the choice of both movement trajectory programmed into the robot and the degree of active participation required by subjects are examined. We consider rehabilitation as a general learning problem, and examine it from the perspective of theoretical learning frameworks such as supervised and unsupervised learning. We discuss the limitations of current robotic neurorehabilitation paradigms and suggest new research directions from the perspective of computational motor learning.
传统神经康复对功能障碍的影响似乎不大,超出自发生物学恢复的影响之外。机器人神经康复由于易于部署、适用于广泛的运动障碍、测量可靠性高以及能够提供高剂量和高强度训练方案,因此有可能对功能障碍产生更大影响。我们首先描述目前关于中风后手臂恢复自然史以及个体患者预后预测的知识。比较了针对功能障碍与功能的康复策略和预后指标。然后讨论康复的剂量、强度和时间等主题。机器人特别适合严格测试以及将运动学习原则应用于神经康复。在机器人神经康复的背景下,引入了源自对健康受试者研究的计算运动控制和学习原则。特别关注情境、任务泛化和训练计划的概念。研究了编程到机器人中的运动轨迹选择以及受试者所需主动参与程度背后的假设。我们将康复视为一个一般的学习问题,并从监督学习和无监督学习等理论学习框架的角度进行审视。我们讨论当前机器人神经康复范式的局限性,并从计算运动学习的角度提出新的研究方向。