Department of Health Sciences and Technology, Rehabilitation Engineering Laboratory, Institute of Robotics and Intelligent Systems, ETH Zurich, Zurich, Switzerland.
Future Health Technologies, Singapore-ETH Centre, Campus for Research Excellence and Technological Enterprise (CREATE), Singapore, Singapore.
Sci Rep. 2022 May 9;12(1):7601. doi: 10.1038/s41598-022-11806-4.
Characterizing post-stroke impairments in the sensorimotor control of arm and hand is essential to better understand altered mechanisms of movement generation. Herein, we used a decomposition algorithm to characterize impairments in end-effector velocity and hand grip force data collected from an instrumented functional task in 83 healthy control and 27 chronic post-stroke individuals with mild-to-moderate impairments. According to kinematic and kinetic raw data, post-stroke individuals showed reduced functional performance during all task phases. After applying the decomposition algorithm, we observed that the behavioural data from healthy controls relies on a low-dimensional representation and demonstrated that this representation is mostly preserved post-stroke. Further, it emerged that reduced functional performance post-stroke correlates to an abnormal variance distribution of the behavioural representation, except when reducing hand grip forces. This suggests that the behavioural repertoire in these post-stroke individuals is mostly preserved, thereby pointing towards therapeutic strategies that optimize movement quality and the reduction of grip forces to improve performance of daily life activities post-stroke.
描述卒中后手臂和手部感觉运动控制的障碍对于更好地理解运动产生的改变机制至关重要。在此,我们使用分解算法来描述从 83 名健康对照者和 27 名轻度至中度障碍的慢性卒中后个体在一项仪器化功能任务中收集的末端效应器速度和手抓力数据的障碍。根据运动学和动力学原始数据,卒中后个体在所有任务阶段的功能表现都有所下降。在应用分解算法后,我们观察到健康对照者的行为数据依赖于低维表示,并且表明这种表示在卒中后基本保持不变。此外,卒中后功能表现的降低与行为表示的异常方差分布相关,除了降低手抓力的情况。这表明这些卒中后个体的行为表现大多保持不变,因此指向优化运动质量和减少抓力以改善卒中后日常生活活动表现的治疗策略。