Michmizos Konstantinos P, Vaisman Lev, Krebs Hermano Igo
Martinos Center for Biomedical Imaging, Massachusetts Institute of Technology, Massachusetts General Hospital, Harvard Medical School , Charlestown, MA , USA ; McGovern Institute for Brain Research, Massachusetts Institute of Technology , Cambridge, MA , USA.
Department of Anatomy and Neurobiology, School of Medicine, Boston University , Boston, MA , USA.
Front Hum Neurosci. 2014 Nov 27;8:962. doi: 10.3389/fnhum.2014.00962. eCollection 2014.
Little is known about whether our knowledge of how the central nervous system controls the upper extremities (UE), can generalize, and to what extent to the lower limbs. Our continuous efforts to design the ideal adaptive robotic therapy for the lower limbs of stroke patients and children with cerebral palsy highlighted the importance of analyzing and modeling the kinematics of the lower limbs, in general, and those of the ankle joints, in particular. We recruited 15 young healthy adults that performed in total 1,386 visually evoked, visually guided, and target-directed discrete pointing movements with their ankle in dorsal-plantar and inversion-eversion directions. Using a non-linear, least-squares error-minimization procedure, we estimated the parameters for 19 models, which were initially designed to capture the dynamics of upper limb movements of various complexity. We validated our models based on their ability to reconstruct the experimental data. Our results suggest a remarkable similarity between the top-performing models that described the speed profiles of ankle pointing movements and the ones previously found for the UE both during arm reaching and wrist pointing movements. Among the top performers were the support-bounded lognormal and the beta models that have a neurophysiological basis and have been successfully used in upper extremity studies with normal subjects and patients. Our findings suggest that the same model can be applied to different "human" hardware, perhaps revealing a key invariant in human motor control. These findings have a great potential to enhance our rehabilitation efforts in any population with lower extremity deficits by, for example, assessing the level of motor impairment and improvement as well as informing the design of control algorithms for therapeutic ankle robots.
关于我们对中枢神经系统如何控制上肢(UE)的了解能否推广以及在多大程度上适用于下肢,目前所知甚少。我们持续致力于为中风患者和脑瘫儿童的下肢设计理想的适应性机器人疗法,这凸显了分析和模拟下肢运动学,特别是踝关节运动学的重要性。我们招募了15名年轻健康的成年人,他们总共进行了1386次视觉诱发、视觉引导和目标导向的离散指向运动,踝关节运动方向为背屈 - 跖屈和内翻 - 外翻。使用非线性最小二乘误差最小化程序,我们估计了19种模型的参数,这些模型最初旨在捕捉各种复杂程度的上肢运动动态。我们根据模型重建实验数据的能力对其进行了验证。我们的结果表明,描述踝关节指向运动速度曲线的最佳模型与先前在手臂伸展和腕关节指向运动中发现的上肢最佳模型之间存在显著相似性。表现最佳的模型包括具有神经生理学基础且已成功用于正常受试者和患者上肢研究的支持有界对数正态模型和贝塔模型。我们的研究结果表明,同一模型可应用于不同的“人体”硬件,这或许揭示了人类运动控制中的一个关键不变量。这些发现具有巨大潜力,可通过例如评估运动损伤程度和改善情况以及为治疗性踝关节机器人的控制算法设计提供信息,来加强我们对任何下肢功能障碍人群的康复工作。