...
首页> 外文期刊>Journal of NeuroEngineering Rehabilitation >Online compensation detecting for real-time reduction of compensatory motions during reaching: a pilot study with stroke survivors
【24h】

Online compensation detecting for real-time reduction of compensatory motions during reaching: a pilot study with stroke survivors

机译:在线补偿检测到达期间补偿运动的实时减少:中风幸存者的试验研究

获取原文

摘要

Compensations are commonly observed in patients with stroke when they engage in reaching without supervision; these behaviors may be detrimental to long-term functional improvement. Automatic detection and reduction of compensation cab help patients perform tasks correctly and promote better upper extremity recovery. Our first objective is to verify the feasibility of detecting compensation online using machine learning methods and pressure distribution data. Second objective was to investigate whether compensations of stroke survivors can be reduced by audiovisual or force feedback. The third objective was to compare the effectiveness of audiovisual and force feedback in reducing compensation. Eight patients with stroke performed reaching tasks while pressure distribution data were recorded. Both the offline and online recognition accuracy were investigated to assess the feasibility of applying a support vector machine (SVM) based compensation detection system. During reduction of compensation, audiovisual feedback was delivered using virtual reality technology, and force feedback was delivered through a rehabilitation robot. Good classification performance was obtained in online compensation recognition, with an average F1-score of over 0.95. Based on accurate online detection, real-time feedback significantly decreased compensations of patients with stroke in comparison with no-feedback condition (p??0.001). Meanwhile, the difference between audiovisual and force feedback was also significant (p??0.001) and force feedback was more effective in reducing compensation in patients with stroke. Accurate online recognition validated the feasibility of monitoring compensations using machine learning algorithms and pressure distribution data. Reliable online detection also paved the way for reducing compensations by providing feedback to patients with stroke. Our findings suggested that real-time feedback could be an effective approach to reducing compensatory patterns and force feedback demonstrated a more enviable potential compared with audiovisual feedback.
机译:当他们在没有监督的情况下,患有中风的患者通常观察到补偿;这些行为可能对长期功能改进可能是有害的。补偿驾驶室的自动检测和减少帮助患者正确执行任务,促进更好的上肢恢复。我们的第一个目标是验证使用机器学习方法和压力分布数据在线检测补偿的可行性。第二个目的是调查卒中幸存者的补偿是否可以通过视听或强制反馈减少。第三个目标是比较视听和强制反馈在减少赔偿方面的有效性。八位中风患者在记录压力分布数据时达到任务。研究了离线和在线识别准确性,以评估应用基于支持向量机(SVM)的补偿检测系统的可行性。在减少赔偿期间,使用虚拟现实技术提供视听反馈,并通过康复机器人提供强制反馈。在线赔偿识别中获得了良好的分类性能,平均F1分数超过0.95。基于准确的在线检测,与无反馈条件相比,实时反馈显着降低卒中患者的补偿(P?<0.001)。同时,视听和力反馈之间的差异也很显着(P?<〜0.001),并且力反馈在减少卒中患者的补偿方面更有效。准确的在线识别验证了使用机器学习算法和压力分布数据监控补偿的可行性。可靠的在线检测还通过向中风患者提供反馈来铺平了降低补偿的方式。我们的研究结果表明,实时反馈可能是减少补偿模式的有效方法,而力量反馈与视听反馈相比,更具令人羡慕的潜力。

著录项

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