School of Psychology, University of Birmingham, B15 2TT, Birmingham, UK.
School of Computer Science, University of Birmingham, B15 2TT, Birmingham, UK.
J Neuroeng Rehabil. 2017 Dec 6;14(1):127. doi: 10.1186/s12984-017-0335-x.
Chronic upper limb motor impairment is a common outcome of stroke. Therapeutic training can reduce motor impairment. Recently, a growing interest in evaluating motor training provided by robotic assistive devices has emerged. Robot-assisted therapy is attractive because it provides a means of increasing practice intensity without increasing the workload of physical therapists. However, movements practised through robotic assistive devices are commonly pre-defined and fixed across individuals. More optimal training may result from individualizing the selection of the trained movements based on the individual's impairment profile. This requires quantitative assessment of the degree of the motor impairment prior to training, in relevant movement tasks. However, standard clinical measures for profiling motor impairment after stroke are often subjective and lack precision. We have developed a novel robot-mediated method for systematic and fine-grained mapping (or profiling) of individual performance across a wide range of planar arm reaching movements. Here we describe and demonstrate this mapping method and its utilization for individualized training. We also present a novel principle for the individualized selection of training movements based on the performance maps.
To demonstrate the utility of our method we present examples of 2D performance maps produced from the kinetic and kinematics data of two individuals with stroke-related upper limb hemiparesis. The maps outline distinct regions of high motor impairment. The procedure of map-based selection of training movements and the change in motor performance following training is demonstrated for one participant.
The performance mapping method is feasible to produce (online or offline). The 2D maps are easy to interpret and to be utilized for selecting individual performance-based training. Different performance maps can be easily compared within and between individuals, which potentially has diagnostic utility.
慢性上肢运动障碍是中风的常见后果。治疗性训练可以减轻运动障碍。最近,人们对评估机器人辅助设备提供的运动训练越来越感兴趣。机器人辅助治疗很有吸引力,因为它提供了一种在不增加物理治疗师工作量的情况下增加练习强度的方法。然而,通过机器人辅助设备进行的运动通常是预先定义的,并在个体之间固定。根据个体的损伤情况,为训练选择个性化的训练动作可能会产生更理想的效果。这需要在相关运动任务中,在训练前对运动障碍的程度进行定量评估。然而,中风后用于损伤情况评估的标准临床方法通常是主观的,缺乏精确性。我们开发了一种新的机器人介导方法,用于对个体在广泛的平面手臂运动任务中的表现进行系统和精细的映射(或分析)。在这里,我们描述并展示了这种映射方法及其在个体化训练中的应用。我们还提出了一种基于性能图的个体化选择训练动作的新原则。
为了演示我们的方法的实用性,我们展示了两个患有中风相关上肢偏瘫的个体的运动动力学和运动学数据产生的二维性能图的示例。这些图勾勒出运动障碍程度高的特定区域。我们演示了基于地图选择训练动作的过程,以及一名参与者在训练后的运动表现变化。
性能映射方法是可行的(在线或离线)。二维地图易于解释和用于选择基于个体表现的训练。不同的性能图可以在个体内部和之间轻松比较,这具有潜在的诊断效用。