治疗性上肢外骨骼神经控制的临床前框架。

Amy Blank, Marcia K O'Malley, Gerard E Francisco, Jose L Contreras-Vidal
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引用次数: 13

摘要

在本文中,我们总结了一种新的机器人康复方法,该方法利用了患者意图和损伤实时评估的好处。具体来说,上肢,物理人机界面(MAHI EXO-II机器人外骨骼)与非侵入性脑机接口(BMI)相结合,将患者纳入控制回路,从而使治疗“活跃”,并使患者参与康复任务中广泛的损伤严重程度。机器人对运动损伤的测量来自MAHI EXO-II和BMI的实时传感器数据。这些措施可以通过与广泛使用的临床措施的相关性来验证,并用于驱动适应个体能力的患者特异性治疗课程,MAHI EXO-II提供适当的帮助或挑战参与者,以最大限度地提高康复效果。这种机器人康复的方法向bmi和智能外骨骼的无缝集成迈出了一步,从而创造出可以监控大脑活动和运动并与之交互的系统。这样的系统将能够更集中地研究设备和康复策略开发中的各种问题,包括解释来自各种来源的测量数据,探索机器人康复过程中有关大规模脑功能的假设,以及优化设备设计和训练计划,以恢复中风后的上肢功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pre-Clinical Framework for Neural Control of a Therapeutic Upper-Limb Exoskeleton.

In this paper, we summarize a novel approach to robotic rehabilitation that capitalizes on the benefits of patient intent and real-time assessment of impairment. Specifically, an upper-limb, physical human-robot interface (the MAHI EXO-II robotic exoskeleton) is augmented with a non-invasive brain-machine interface (BMI) to include the patient in the control loop, thereby making the therapy 'active' and engaging patients across a broad spectrum of impairment severity in the rehabilitation tasks. Robotic measures of motor impairment are derived from real-time sensor data from the MAHI EXO-II and the BMI. These measures can be validated through correlation with widely used clinical measures and used to drive patient-specific therapy sessions adapted to the capabilities of the individual, with the MAHI EXO-II providing assistance or challenging the participant as appropriate to maximize rehabilitation outcomes. This approach to robotic rehabilitation takes a step towards the seamless integration of BMIs and intelligent exoskeletons to create systems that can monitor and interface with brain activity and movement. Such systems will enable more focused study of various issues in development of devices and rehabilitation strategies, including interpretation of measurement data from a variety of sources, exploration of hypotheses regarding large scale brain function during robotic rehabilitation, and optimization of device design and training programs for restoring upper limb function after stroke.

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