基于协作机器人的痉挛自动评估

Mar Hernandez, E. Oña, J. Garcia-Haro, Alberto Jardón Huete, C. Balaguer
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引用次数: 2

摘要

机器人可以通过改善痉挛患者的早期诊断和降低与护理相关的成本,在痉挛患者的康复中发挥重要作用。痉挛是一种肌肉控制障碍,其特征是肌肉张力增加并伴有过度的拉伸反射,是上运动神经元综合征的一个组成部分。此外,痉挛还存在于其他病理中,如脑瘫、脊柱裂、脑中风等。这个视频展示了正在进行的研究,开发一个平台,用于建模和评估痉挛使用协作机器人作为临床工具。我们的目标是利用7-DOF Rosen Kinematics[1],结合Hills力-速度关系的非线性状态[2],开发上肢关节的无创生物力学建模方法,并通过引入刚度、粘弹性、延伸性和触变性等新参数进行改进。在治疗师进行学习阶段后,机器人复制执行评估所需的轨迹。视频还详细分析了肢体的被动运动响应(力/扭矩和位置/速度)。这些参数将用于快速客观地判断患者的痉挛程度,同时开发新的临床量表,如修改版Ashworth量表[3]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an Automatic Spasticity Assessment by Means of Collaborative Robots
Robotics can play a significant role in the rehabilitation of patients with spasticity by improving their early diagnosis and reducing the costs associated with care. Spasticity is a muscle control disorder characterized by an increase in muscle tone with exaggerated stretch reflexes, as one component of the upper motor neuron syndrome. Furthermore, spasticity is present in other pathologies, such as cerebral palsy, spina bifida, brain stroke among others. This video shows the ongoing research on developing a platform for the modelling and the assessment of spasticity using collaborative robots as clinical tool. Our aim is to develop methods for non-invasive biomechanical modelling of upper limbs joints using 7-DOF Rosen Kinematics [1], mixed with a non-linear state of Hills force-velocity relation [2], improved by introducing new parameters such as rigidity, viscoelasticity, extensibility and thixotropy. After a learning phase performed by the therapist, the robot replicates the trajectories required to perform the assessment. The video also describes the detailed analysis of passive movement response (force/torque and position/velocity)of the limb. These parameters will be used to determine the degree of spasticity of patients in a fast and objective manner, while simultaneously developing new clinical scales, such as a modified version of Ashworth [3].
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