Hotchkiss Brain Institute (HBI), Cumming School of Medicine, University of Calgary, Calgary, Canada.
Faculty of Sustainable Engineering Design, University of Prince Edward Island, Charlottetown, Canada.
PLoS One. 2023 Oct 11;18(10):e0292627. doi: 10.1371/journal.pone.0292627. eCollection 2023.
Rehabilitation therapy plays an essential role in assisting people with stroke regain arm function. Upper extremity robot therapy offers a number of advantages over manual therapies, but can suffer from slacking behavior, where the user lets the robot guide their movements even when they are capable of doing so by themselves, representing a major barrier to reaching the full potential of robot-assist rehabilitation. This is a pilot clinical study that investigates the use of an electromyography-based adaptive assist-as-needed controller to avoid slacking behavior during robotic rehabilitation for people with stroke. The study involved a convenience sample of five individuals with chronic stroke who underwent a robot therapy program utilizing horizontal arm tasks. The Fugl-Meyer assessment (FM) was used to document motor impairment status at baseline. Velocity, time, and position were quantified as performance parameters during the training. Arm and shoulder surface electromyography (EMG) and electroencephalography (EEG) were used to assess the controller's performance. The cross-sectional results showed strong second-order relationships between FM score and outcome measures, where performance metrics (path length and accuracy) were sensitive to change in participants with lower functional status. In comparison, speed, EMG and EEG metrics were more sensitive to change in participants with higher functional status. EEG signal amplitude increased when the robot suggested that the robot was inducing a challenge during the training tasks. This study highlights the importance of multi-sensor integration to monitor and improve upper-extremity robotic therapy.
康复治疗在帮助中风患者恢复手臂功能方面起着至关重要的作用。上肢机器人疗法相对于手动疗法具有许多优势,但可能存在松弛行为,即患者在能够自行完成动作时,让机器人引导他们的动作,这是达到机器人辅助康复的全部潜力的主要障碍。这是一项初步的临床研究,旨在调查使用基于肌电图的自适应按需辅助控制器来避免中风患者机器人康复期间的松弛行为。该研究涉及 5 名慢性中风患者的便利样本,他们接受了利用水平手臂任务的机器人治疗计划。Fugl-Meyer 评估(FM)用于记录基线时的运动损伤状况。速度、时间和位置作为训练期间的性能参数进行量化。手臂和肩部表面肌电图(EMG)和脑电图(EEG)用于评估控制器的性能。横截面结果显示,FM 评分与结果测量之间存在强烈的二阶关系,其中在功能状态较低的参与者中,性能指标(路径长度和准确性)对变化敏感。相比之下,在功能状态较高的参与者中,速度、EMG 和 EEG 指标对变化更敏感。当机器人在训练任务中提示机器人正在引起挑战时,脑电图信号幅度增加。这项研究强调了多传感器集成的重要性,以监测和改善上肢机器人治疗。