首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Using Functional Electrical Stimulation Mediated by Iterative Learning Control and Robotics to Improve Arm Movement for People With Multiple Sclerosis
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Using Functional Electrical Stimulation Mediated by Iterative Learning Control and Robotics to Improve Arm Movement for People With Multiple Sclerosis

机译:使用迭代学习控制和机器人技术介导的功能性电刺激改善多发性硬化症患者的手臂运动

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Few interventions address multiple sclerosis (MS) arm dysfunction but robotics and functional electrical stimulation (FES) appear promising. This paper investigates the feasibility of combining FES with passive robotic support during virtual reality (VR) training tasks to improve upper limb function in people with multiple sclerosis (pwMS). The system assists patients in following a specified trajectory path, employing an advanced model-based paradigm termed iterative learning control (ILC) to adjust the FES to improve accuracy and maximise voluntary effort. Reaching tasks were repeated six times with ILC learning the optimum control action from previous attempts. A convenience sample of five pwMS was recruited from local MS societies, and the intervention comprised 18 one-hour training sessions over 10 weeks. The accuracy of tracking performance without FES and the amount of FES delivered during training were analyzed using regression analysis. Clinical functioning of the arm was documented before and after treatment with standard tests. Statistically significant results following training included: improved accuracy of tracking performance both when assisted and unassisted by FES; reduction in maximum amount of FES needed to assist tracking; and less impairment in the proximal arm that was trained. The system was well tolerated by all participants with no increase in muscle fatigue reported. This study confirms the feasibility of FES combined with passive robot assistance as a potentially effective intervention to improve arm movement and control in pwMS and provides the basis for a follow-up study.
机译:很少有干预措施可以解决多发性硬化症(MS)手臂功能障碍,但是机器人技术和功能性电刺激(FES)似乎很有希望。本文研究了在虚拟现实(VR)训练任务中将FES与被动机器人支持相结合以改善多发性硬化症(pwMS)人的上肢功能的可行性。该系统采用称为迭代学习控制(ILC)的基于模型的高级范例来帮助患者遵循指定的轨迹路径,以调整FES以提高准确性并最大程度地提高自愿性。 ILC通过先前的尝试学习了最佳控制措施,重复了六次到达任务。从当地MS协会招募了5个pwMS的便利样本,该干预措施包括10周内的18次一小时培训课程。使用回归分析来分析没有FES的跟踪性能的准确性以及训练期间传递的FES的数量。使用标准测试在治疗前后记录了手臂的临床功能。训练后具有统计意义的显着结果包括:在FES的协助和不协助下,跟踪性能的准确性得到了提高;减少协助跟踪所需的最大FES数量;并减少了受过训练的近端手臂的损伤。该系统对所有参与者均具有良好的耐受性,且肌肉疲劳没有增加。这项研究证实了FES与被动机器人协助相结合作为改善pwMS中手臂运动和控制的潜在有效干预措施的可行性,并为后续研究提供了基础。

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