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Taking a Lesson From Patients' Recovery Strategies to Optimize Training During Robot-Aided Rehabilitation

机译:从患者的康复策略中吸取经验教训,以优化机器人辅助康复期间的训练

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摘要

In robot-assisted neurorehabilitation, matching the task difficulty level to the patient's needs and abilities, both initially and as the relearning process progresses, can enhance the effectiveness of training and improve patients' motivation and outcome. This study presents a Progressive Task Regulation algorithm implemented in a robot for upper limb rehabilitation. It evaluates the patient's performance during training through the computation of robot-measured parameters, and automatically changes the features of the reaching movements, adapting the difficulty level of the motor task to the patient's abilities. In particular, it can select different types of assistance (time-triggered, activity-triggered, and negative assistance) and implement varied therapy practice to promote generalization processes. The algorithm was tuned by assessing the performance data obtained in 22 chronic stroke patients who underwent robotic rehabilitation, in which the difficulty level of the task was manually adjusted by the therapist. Thus, we could verify the patient's recovery strategies and implement task transition rules to match both the patient's and therapist's behavior. In addition, the algorithm was tested in a sample of five chronic stroke patients. The findings show good agreement with the therapist decisions so indicating that it could be useful for the implementation of training protocols allowing individualized and gradual treatment of upper limb disabilities in patients after stroke. The application of this algorithm during robot-assisted therapy should allow an easier management of the different motor tasks administered during training, thereby facilitating the therapist's activity in the treatment of different pathologic conditions of the neuromuscular system.
机译:在机器人辅助的神经康复中,将任务难度级别与患者的需求和能力相匹配,无论是最初还是随着再学习过程的进行,都可以提高培训的有效性并改善患者的动力和结果。这项研究提出了在上肢康复机器人中实现的渐进式任务调节算法。它通过计算机器人测量的参数来评估患者在训练过程中的表现,并自动更改伸手动作的特征,使运动任务的难易程度适应患者的能力。特别是,它可以选择不同类型的协助(时间触发,活动触发和负面协助),并实施各种疗法以促进推广过程。通过评估22名接受机器人康复的慢性卒中患者的表现数据,对算法进行了调整,其中治疗师手动调整了任务的难度。因此,我们可以验证患者的康复策略并实施任务转换规则,以匹配患者和治疗师的行为。此外,该算法在5名慢性卒中患者的样本中进行了测试。研究结果表明与治疗师的决定高度吻合,因此表明它可用于实施允许个体化和逐步治疗中风后上肢残疾的训练方案。该算法在机器人辅助治疗中的应用应允许更轻松地管理训练过程中执行的不同运动任务,从而促进治疗师在神经肌肉系统不同病理状况的治疗中的活动。

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