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一种基于致动器力轮廓匹配来估计在被动步态矫形器中行走时主动参与程度的方法。

A method of estimating the degree of active participation during stepping in a driven gait orthosis based on actuator force profile matching.

作者信息

Banz Raphael, Bolliger Marc, Muller Stefan, Santelli Claudio, Riener Robert

机构信息

Spinal Cord Injury Center, Balgrist University Hospital, Zurich, Switzerland.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2009 Feb;17(1):15-22. doi: 10.1109/TNSRE.2008.2008281.

Abstract

Visual biofeedback with information about the patients' degree of activity is a valuable adjunct to robot-assisted gait training as means of increasing the motivation and participation of the patients during highly repetitive training sessions. In the driven gait orthosis (DGO) Lokomat, an estimation of the patient's activity level was based on man-machine interaction forces as measured at the hip and knee actuators of the exoskeletal device. In an early approach, theoretical assumptions about the expected man-machine interaction forces, due to the varying behavior of the patients, were formulated for the calculation of quantitative biofeedback. In contrast to this theory-based approach, we have developed a novel method where the biofeedback calculations were based on measured reference man-machine interaction force profiles of healthy subjects when walking with different degrees of activity. To account for intrasubject and intersubject variability, reference force profiles were processed in a model to generate multiple force profiles describing each activity state. To estimate the activity of a subject walking in the DGO, the man-machine interaction force profile was measured, matched to each of the generated force profiles, and the best fitting profile of the different activity states was identified by the smallest Euclidian distance, respectively. By calculating the difference between these Euclidian distances, a quantitative estimate of the patient's degree of activity was obtained. The novel method was evaluated and compared to the conventional approach in a study with 18 healthy subjects. This comparison showed that the novel method was more reliable in detecting different activity states and is, therefore, a promising approach for future biofeedback systems.

摘要

提供有关患者活动程度信息的视觉生物反馈,作为一种在高度重复训练过程中提高患者积极性和参与度的手段,是机器人辅助步态训练的一项有价值的辅助措施。在驱动式步态矫形器(DGO)Lokomat中,患者活动水平的估计基于在外部骨骼装置的髋部和膝部致动器处测量的人机交互力。在早期的方法中,针对患者行为的变化,制定了关于预期人机交互力的理论假设,用于计算定量生物反馈。与这种基于理论的方法不同,我们开发了一种新方法,其中生物反馈计算基于健康受试者在不同活动程度下行走时测量的参考人机交互力曲线。为了考虑个体内和个体间的变异性,参考力曲线在一个模型中进行处理,以生成描述每个活动状态的多个力曲线。为了估计在DGO中行走的受试者的活动,测量人机交互力曲线,将其与每个生成的力曲线进行匹配,并分别通过最小欧几里得距离识别不同活动状态的最佳拟合曲线。通过计算这些欧几里得距离之间的差异,获得了患者活动程度的定量估计。在一项针对18名健康受试者的研究中,对这种新方法进行了评估,并与传统方法进行了比较。这种比较表明,新方法在检测不同活动状态方面更可靠,因此是未来生物反馈系统的一种有前途的方法。

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