Panarese Alessandro, Pirondini Elvira, Tropea Peppino, Cesqui Benedetta, Posteraro Federico, Micera Silvestro
The BioRobotics Institute, Scuola Superiore Sant'Anna, Viale R. Piaggio 34, 56025, Pontedera, Pisa, Italy.
Bertarelli Foundation Chair in Translational Neuroengineering, Center for Neuroprosthetics and Institute of Bioengineering, School of Engineering, École Polytechnique Fédérale de Lausanne (EPFL), Lausanne, Switzerland.
J Neuroeng Rehabil. 2016 Sep 8;13(1):81. doi: 10.1186/s12984-016-0187-9.
Common scales for clinical evaluation of post-stroke upper-limb motor recovery are often complemented with kinematic parameters extracted from movement trajectories. However, there is no a general consensus on which parameters to use. Moreover, the selected variables may be redundant and highly correlated or, conversely, may incompletely sample the kinematic information from the trajectories. Here we sought to identify a set of clinically useful variables for an exhaustive but yet economical kinematic characterization of upper limb movements performed by post-stroke hemiparetic subjects.
For this purpose, we pursued a top-down model-driven approach, seeking which kinematic parameters were pivotal for a computational model to generate trajectories of point-to-point planar movements similar to those made by post-stroke subjects at different levels of impairment.
The set of kinematic variables used in the model allowed for the generation of trajectories significantly similar to those of either sub-acute or chronic post-stroke patients at different time points during the therapy. Simulated trajectories also correctly reproduced many kinematic features of real movements, as assessed by an extensive set of kinematic metrics computed on both real and simulated curves. When inspected for redundancy, we found that variations in the variables used in the model were explained by three different underlying and unobserved factors related to movement efficiency, speed, and accuracy, possibly revealing different working mechanisms of recovery.
This study identified a set of measures capable of extensively characterizing the kinematics of upper limb movements performed by post-stroke subjects and of tracking changes of different motor improvement aspects throughout the rehabilitation process.
中风后上肢运动恢复的临床评估常用量表通常辅以从运动轨迹中提取的运动学参数。然而,对于使用哪些参数尚无普遍共识。此外,所选变量可能冗余且高度相关,或者相反,可能无法完整地从轨迹中采样运动学信息。在此,我们试图确定一组临床上有用的变量,以便对中风后偏瘫患者进行的上肢运动进行详尽但经济的运动学特征描述。
为此,我们采用了一种自上而下的模型驱动方法,探寻哪些运动学参数对于计算模型生成类似于不同损伤程度的中风后患者所做的点对点平面运动轨迹至关重要。
模型中使用的运动学变量集能够生成与治疗期间不同时间点的亚急性或慢性中风后患者的轨迹显著相似的轨迹。通过在真实曲线和模拟曲线上计算的大量运动学指标评估,模拟轨迹也正确地再现了真实运动的许多运动学特征。在检查冗余性时,我们发现模型中使用的变量变化可由与运动效率、速度和准确性相关的三个不同潜在且未观察到的因素解释,这可能揭示了不同的恢复工作机制。
本研究确定了一组能够广泛表征中风后患者上肢运动学特征并跟踪整个康复过程中不同运动改善方面变化的测量方法。