Model-Based Optimization for the Personalization of Robot-Assisted Gait Training

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Andreas Christou;Daniel F. N. Gordon;Theodoros Stouraitis;Juan C. Moreno;Sethu Vijayakumar
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引用次数: 0

Abstract

Personalised rehabilitation can be key to promoting gait independence and quality of life. Robots can enhance therapy by systematically delivering support in gait training, but often use one-size-fits-all control methods, which can be suboptimal. Here, we describe a model-based optimisation method for designing and fine-tuning personalised robotic controllers. As a case study, we formulate the objective of providing assistance as needed as an optimisation problem, and we demonstrate how musculoskeletal modelling can be used to develop personalised interventions. Eighteen healthy participants (age $ = 26~\pm ~4$ ) were recruited and the personalised control parameters for each were obtained to provide assistance as needed during a unilateral tracking task. A comparison was carried out between the personalised controller and the non-personalised controller. In simulation, a significant improvement was predicted when the personalised parameters were used. Experimentally, responses varied: six subjects showed significant improvements with the personalised parameters, eight subjects showed no obvious change, while four subjects performed worse. High interpersonal and intra-personal variability was observed with both controllers. This study highlights the importance of personalised control in robot-assisted gait training, and the need for a better estimation of human-robot interaction and human behaviour to realise the benefits of model-based optimisation.
基于模型的机器人辅助步态训练个性化优化
个性化康复是促进步态独立和生活质量的关键。机器人可以通过系统地在步态训练中提供支持来加强治疗,但通常使用一刀切的控制方法,这可能不是最优的。在这里,我们描述了一种基于模型的优化方法,用于设计和微调个性化机器人控制器。作为一个案例研究,我们制定了提供所需援助的目标作为优化问题,我们展示了如何使用肌肉骨骼建模来开发个性化干预措施。招募了18名健康参与者(年龄为26~ 4),并获得了每个人的个性化控制参数,以便在单侧跟踪任务中提供必要的帮助。在个性化控制器和非个性化控制器之间进行了比较。在模拟中,当使用个性化参数时,预测会有显着的改善。实验中,反应各不相同:6名受试者在个性化参数方面表现出显著改善,8名受试者没有明显变化,而4名受试者表现更差。在两个控制者身上观察到高度的人际和个人变异性。这项研究强调了个性化控制在机器人辅助步态训练中的重要性,以及更好地估计人机交互和人类行为的必要性,以实现基于模型的优化的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.80
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