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Quantitative Evaluation of Stroke Patients' Wrist Paralysis by Estimation of Kinematic Coefficients and Machine Learning

机译:通过运动系数和机器学习估计脑卒中患者手腕瘫痪的定量评估

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摘要

The increasing population of stroke survivors naturally produces needs for more effective rehabilitation systems for both patients and therapists. Robotic therapies are widely studied and practiced in various fields since they enable intense exercise as well as numerical evaluations. In this paper, along with the rehabilitation robot we developed, we propose a quantitative evaluation method for wrist paralysis in stroke patients using kinematic coefficients estimated from the joint model and machine learning. Through experiments on five hemiplegic patients, we observed the spring-damper characteristics of their paralyzed wrists and computed the coefficients that represent stiffness and viscosity. During wrist extension, a patient at Brunnstrom stage 3 showed a high average stiffness of 4.453 Nm/rad and viscosity of 4.533 Nms/rad toward the rest position, whereas a patient at Brunnstrom stage 4 showed smaller coefficients of 1.135 Nm/rad and -0.669 Nms/rad, respectively. We applied a support vector machine and a k-means method to the estimated stiffnesses and viscosities to classify the patients into three different clusters. The two coefficients not only helped discriminate patients in accordance with their Brunnstrom stage, but also revealed that patients at the same stage could be more finely categorized.
机译:增加卒中幸存者人口自然会为患者和治疗师提供更有效的康复系统。在各个领域中广泛研究和实践机器人疗法,因为它们使得剧烈运动和数值评估。在本文中,随着我们开发的康复机器人,我们提出了使用从联合模型和机器学习估计的运动系数的中风患者腕部瘫痪的定量评估方法。通过对五个偏瘫患者的实验,我们观察了瘫痪手腕的弹簧阻尼特性,并计算了代表刚度和粘度的系数。在腕部延伸期间,Brunnstrom阶段3的患者显示出4.453nm / rad的高平均刚度和朝向静止位置的4.533 nms / rad,而Brunnstrom阶段4的患者显示为1.135nm / rad的较小系数和-0.669 NMS / RAD分别。我们将支持向量机和K-Means方法应用于估计的刚度和粘度,以将患者分为三种不同的簇。两种系数不仅有助于根据他们的Brunnstrom阶段鉴别患者,而且还揭示了同一阶段的患者可以更精细分类。

著录项

  • 来源
    《Sensors and materials》 |2020年第3期|981-990|共10页
  • 作者单位

    School of Mechanical and Control Engineering Handong Global University 558 Handong-ro Heunghae-eup Buk-gu Pohang-si Gyeongsangbuk-do Republic of Korea;

    School of Mechanical and Control Engineering Handong Global University 558 Handong-ro Heunghae-eup Buk-gu Pohang-si Gyeongsangbuk-do Republic of Korea;

    School of Mechanical and Control Engineering Handong Global University 558 Handong-ro Heunghae-eup Buk-gu Pohang-si Gyeongsangbuk-do Republic of Korea;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    stroke; hemiplegia; rehabilitation; robotic therapy; machine learning;

    机译:中风;偏瘫;复原;机器人治疗;机器学习;

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