Influence of Arm Weight Support on a Robotic Assessment of Upper Limb Function

C. Kanzler, Sofia Martinez Gomez, Mike D. Rinderknecht, R. Gassert, O. Lambercy
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引用次数: 7

Abstract

Quantifying upper limb impairment post-stroke is of essential importance to monitor motor recovery or to evaluate different therapeutic approaches. Instrumented assessments of upper limb function, such as the Virtual Peg Insertion Test (VPIT), often emulate a daily life manipulation activity that requires the subject to actively lift the arm against gravity, which can be challenging for severely impaired patients with arm weakness. With the aim of making the VPIT accessible to patients with severe arm weakness, we conducted a pilot study to analyze the feasability of combining this assessment with an arm weight support (AWS) device in 16 healthy subjects. Subjects performed the VPIT protocol without AWS device and with three different levels of weight support. Usability of combining the VPIT and the AWS device was high in healthy Subjects: The VPIT could be successfully completed without collisions with the AWS device, the duration to set up the AWS device was on average 1.5min, and subjects reported high levels of comfort while experiencing AWS. Metrics representing arm function were mostly not significantly influenced by the presence of the AWS device despite a decrease of 6.2% in movement smoothness, whereas grasping control was not significantly affected at all. The AWS level did not alter motor performance, even though subjects reported a decrease in perceived arm control with an increased AWS level. The high usability of combining the VPIT with an AWS device might enable the assessment of severely impaired patients in clinical practice. However, the influence of the AWS on outcome measures of the VPIT must be taken into account to make assessment results interpretable in the context of daily life reaching and manipulation situations without AWS.
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臂重支撑对机器人上肢功能评估的影响
量化中风后上肢损伤对监测运动恢复或评估不同的治疗方法至关重要。上肢功能的仪器评估,如虚拟Peg插入测试(VPIT),通常模拟日常生活操作活动,需要受试者主动抬起手臂对抗重力,这对于手臂无力的严重受损患者来说是具有挑战性的。为了使严重手臂无力的患者能够使用VPIT,我们在16名健康受试者中进行了一项试点研究,以分析将该评估与手臂重量支持(AWS)装置相结合的可行性。受试者在没有AWS设备和三种不同水平的体重支持的情况下执行VPIT协议。健康受试者将VPIT与AWS设备结合使用的可用性较高:VPIT可以在不与AWS设备发生碰撞的情况下成功完成,设置AWS设备的时间平均为1.5分钟,受试者报告在体验AWS时高度舒适。尽管运动平滑度降低了6.2%,但使用AWS设备后,代表手臂功能的指标大多没有受到显著影响,而抓取控制则完全没有受到显著影响。AWS水平并没有改变运动表现,尽管受试者报告随着AWS水平的升高,感知到的手臂控制能力下降。VPIT与AWS设备结合的高可用性可能使临床实践中对严重受损患者的评估成为可能。然而,必须考虑到AWS对VPIT结果测量的影响,以使评估结果在没有AWS的日常生活接触和操作情况下具有可解释性。
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