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The development of an adaptive upper-limb stroke rehabilitation robotic system

机译:自适应上肢卒中康复机器人系统的开发

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Background Stroke is the primary cause of adult disability. To support this large population in recovery, robotic technologies are being developed to assist in the delivery of rehabilitation. This paper presents an automated system for a rehabilitation robotic device that guides stroke patients through an upper-limb reaching task. The system uses a decision theoretic model (a partially observable Markov decision process, or POMDP) as its primary engine for decision making. The POMDP allows the system to automatically modify exercise parameters to account for the specific needs and abilities of different individuals, and to use these parameters to take appropriate decisions about stroke rehabilitation exercises. Methods The performance of the system was evaluated by comparing the decisions made by the system with those of a human therapist. A single patient participant was paired up with a therapist participant for the duration of the study, for a total of six sessions. Each session was an hour long and occurred three times a week for two weeks. During each session, three steps were followed: (A) after the system made a decision, the therapist either agreed or disagreed with the decision made; (B) the researcher had the device execute the decision made by the therapist; (C) the patient then performed the reaching exercise. These parts were repeated in the order of A-B-C until the end of the session. Qualitative and quantitative question were asked at the end of each session and at the completion of the study for both participants. Results Overall, the therapist agreed with the system decisions approximately 65% of the time. In general, the therapist thought the system decisions were believable and could envision this system being used in both a clinical and home setting. The patient was satisfied with the system and would use this system as his/her primary method of rehabilitation. Conclusions The data collected in this study can only be used to provide insight into the performance of the system since the sample size was limited. The next stage for this project is to test the system with a larger sample size to obtain significant results.
机译:背景卒中是成人残疾的主要原因。为了支持大量人口的康复,正在开发机器人技术来协助进行康复。本文介绍了一种用于康复机器人设备的自动化系统,该系统可指导中风患者完成上肢伸直任务。该系统使用决策理论模型(部分可观察到的马尔可夫决策过程或POMDP)作为其决策的主要引擎。 POMDP允许系统自动修改运动参数以解决不同个人的特定需求和能力,并使用这些参数来做出有关中风康复运动的适当决策。方法通过比较系统与人类治疗师的决策来评估系统的性能。在研究期间,将一名患者参与者与一名治疗师参与者配对,总共进行了六个疗程。每次课程为时一个小时,一周两次,共三周。在每次会议期间,都遵循三个步骤:(A)在系统做出决定后,治疗师同意或不同意所做出的决定; (B)研究人员让设备执行治疗师的决定; (C)患者然后进行伸展运动。这些部分按照A-B-C的顺序重复进行,直到会议结束。在每节课结束时以及研究完成时,对两名参与者都提出了定性和定量的问题。结果总体而言,治疗师大约有65%的时间同意系统决策。通常,治疗师认为系统决策是可信的,并且可以预见该系统可用于临床和家庭环境。患者对该系统感到满意,并将将该系统用作他/她的主要康复方法。结论由于样本量有限,本研究中收集的数据只能用于提供对系统性能的洞察力。该项目的下一个阶段是使用更大的样本量测试系统,以获得显着的结果。

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