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自动和个性化的治疗参数适应:无监督机器人辅助康复的初步评估。

Automatic and Personalized Adaptation of Therapy Parameters for Unsupervised Robot-Assisted Rehabilitation: a Pilot Evaluation.

出版信息

IEEE Int Conf Rehabil Robot. 2022 Jul;2022:1-6. doi: 10.1109/ICORR55369.2022.9896527.

Abstract

Growing evidence shows that increasing the dose of upper limb therapy after stroke might improve functional outcomes and unsupervised robot-assisted therapy may be a solution to achieve such an increase without adding workload on therapists. However, most of existing robotic devices still need frequent supervision by trained personnel and are currently not designed or ready for unsupervised use. One reason for this is that most rehabilitation devices are not capable of delivering and adapting personalized therapy without external intervention. Here we present a set of clinically-inspired algorithms that automatically adapt therapy parameters in a personalized way and guide the course of robot-assisted therapy sessions. We implemented these algorithms on a robotic device for hand rehabilitation and tested them in a pilot study with 5 subacute stroke subjects over 10 robot-assisted therapy sessions, some of which unsupervised. Results show that our algorithms could adapt the therapy difficulty throughout the whole study without requiring external intervention, maintaining performance around a predefined 70% target value (mean performance for all the subjects over all the sessions: 64.5%). Moreover, the algorithms could guide patients through the therapy sessions, minimizing the number of actions that subjects had to learn and perform. These results open the door to the use of robotic devices in an unsupervised setting to increase therapy dose after stroke.

摘要

越来越多的证据表明,增加中风后上肢治疗的剂量可能会改善功能预后,而无需增加治疗师的工作量,非监督机器人辅助治疗可能是实现这一目标的解决方案。然而,大多数现有的机器人设备仍然需要经过训练的人员的频繁监督,并且目前还没有为非监督使用而设计或准备。其中一个原因是,大多数康复设备没有能力在没有外部干预的情况下提供和适应个性化治疗。在这里,我们提出了一组临床启发的算法,这些算法可以自动以个性化的方式调整治疗参数,并指导机器人辅助治疗过程。我们在手部康复机器人设备上实现了这些算法,并在一项针对 5 名亚急性中风患者的初步研究中对其进行了测试,其中一些是无人监督的。结果表明,我们的算法可以在整个研究过程中无需外部干预就调整治疗难度,保持接近预先设定的 70%目标值(所有患者在所有治疗期间的平均表现:64.5%)。此外,这些算法可以引导患者完成治疗过程,最大限度地减少患者需要学习和执行的操作数量。这些结果为在中风后无人监督的情况下使用机器人设备增加治疗剂量开辟了道路。

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