首页> 外文期刊>Journal of NeuroEngineering Rehabilitation >Assessment-driven selection and adaptation of exercise difficulty in robot-assisted therapy: a pilot study with a hand rehabilitation robot
【24h】

Assessment-driven selection and adaptation of exercise difficulty in robot-assisted therapy: a pilot study with a hand rehabilitation robot

机译:评估驱动的选择和适应机器人辅助治疗中的运动难度:手部康复机器人的初步研究

获取原文
           

摘要

Background Selecting and maintaining an engaging and challenging training difficulty level in robot-assisted stroke rehabilitation remains an open challenge. Despite the ability of robotic systems to provide objective and accurate measures of function and performance, the selection and adaptation of exercise difficulty levels is typically left to the experience of the supervising therapist. Methods We introduce a patient-tailored and adaptive robot-assisted therapy concept to optimally challenge patients from the very first session and throughout therapy progress. The concept is evaluated within a four-week pilot study in six subacute stroke patients performing robot-assisted rehabilitation of hand function. Robotic assessments of both motor and sensory impairments of hand function conducted prior to the therapy are used to adjust exercise parameters and customize difficulty levels. During therapy progression, an automated routine adapts difficulty levels from session to session to maintain patients’ performance around a target level of 70%, to optimally balance motivation and challenge. Results Robotic assessments suggested large differences in patients’ sensorimotor abilities that are not captured by clinical assessments. Exercise customization based on these assessments resulted in an average initial exercise performance around 70% (62% ± 20%, mean ± std), which was maintained throughout the course of the therapy (64% ± 21%). Patients showed reduction in both motor and sensory impairments compared to baseline as measured by clinical and robotic assessments. The progress in difficulty levels correlated with improvements in a clinical impairment scale (Fugl-Meyer Assessment) (r s = 0.70), suggesting that the proposed therapy was effective at reducing sensorimotor impairment. Conclusions Initial robotic assessments combined with progressive difficulty adaptation have the potential to automatically tailor robot-assisted rehabilitation to the individual patient. This results in optimal challenge and engagement of the patient, may facilitate sensorimotor recovery after neurological injury, and has implications for unsupervised robot-assisted therapy in the clinic and home environment. Trial registration: ClinicalTrials.gov, NCT02096445
机译:背景技术在机器人辅助的中风康复中,选择并保持一个引人入胜且具有挑战性的训练难度水平仍然是一个开放的挑战。尽管机器人系统具有提供客观,准确的功能和性能指标的能力,但运动难度级别的选择和调整通常由监督治疗师来决定。方法我们引入患者量身定制的自适应机器人辅助治疗概念,从一开始就贯穿整个治疗过程,以最佳方式挑战患者。在为期四周的初步研究中,对六名亚急性卒中患者进行了机器人辅助手功能康复,对这一概念进行了评估。在治疗之前对手功能的运动和感觉障碍进行机器人评估,可用于调整运动参数和自定义难度级别。在治疗进展过程中,自动例行程序会在每次会议期间调整难度级别,以将患者的表现保持在目标水平70%左右,以最佳地平衡动力和挑战。结果机器人评估表明,患者的感觉运动能力差异很大,临床评估并未发现这些差异。根据这些评估进行的运动定制可以使平均初始运动表现达到70%(62%±20%,均值±std),并且在整个治疗过程中都保持这一水平(64%±21%)。通过临床和机器人评估,与基线相比,患者表现出运动和感觉障碍的减少。难度水平的提高与临床障碍量表的改善相关(Fugl-Meyer评估)(r s = 0.70),表明所提出的疗法可有效减少感觉运动障碍。结论最初的机器人评估与渐进式难度适应相结合,有可能自动为每个患者量身定制机器人辅助的康复治疗。这导致患者的最佳挑战和参与度,可以促进神经系统损伤后的感觉运动恢复,并且对临床和家庭环境中无人监督的机器人辅助治疗有影响。试用注册:ClinicalTrials.gov,NCT02096445

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号