首页> 外文会议>2013 IEEE 13th International Conference on Rehabilitation Robotics >Robotic-locomotor training as a tool to reduce neuromuscular abnormality in spinal cord injury: The application of system identification and advanced longitudinal modeling
【24h】

Robotic-locomotor training as a tool to reduce neuromuscular abnormality in spinal cord injury: The application of system identification and advanced longitudinal modeling

机译:机器人运动训练作为减少脊髓损伤中神经肌肉异常的工具:系统识别和高级纵向建模的应用

获取原文
获取原文并翻译 | 示例

摘要

In this study, the effect of the LOKOMAT, a robotic-assisted locomotor training system, on the reduction of neuromuscular abnormalities associated with spasticity was examined, for the first time in the spinal cord injury (SCI) population. Twenty-three individuals with chronic incomplete SCI received 1-hour training sessions in the LOKOMAT three times per week, with up to 45 minutes of training per session; matched control group received no intervention. The neuromuscular properties of the spastic ankle were then evaluated prior to training and after 1, 2, and 4 weeks of training. A parallel-cascade system identification technique was used to determine the reflex and intrinsic stiffness of the ankle joint as a function of ankle position at each time point. The slope of the stiffness vs. joint angle curve, i.e. the modulation of stiffness with joint position, was then calculated and tracked over the four-week period. Growth Mixture Modeling (GMM), an advanced statistical method, was then used to classify subjects into subgroups based on similar trends in recovery pattern of slope over time, and Random Coefficient Regression (RCR) was used to model the recovery patterns within each subgroup. All groups showed significant reductions in both reflex and intrinsic slope over time, but subjects in classes with higher baseline values of the slope showed larger improvements over the four weeks of training. These findings suggest that LOKOMAT training may also be useful for reducing the abnormal modulation of neuromuscular properties that arises as secondary effects after SCI. This can advise clinicians as to which patients can benefit the most from LOKOMAT training prior to beginning the training. Further, this study shows that system identification and GMM/RCR can serve as powerful tools to quantify and track spasticity over time in the SCI population.
机译:在这项研究中,首次在脊髓损伤(SCI)人群中研究了机器人辅助运动训练系统LOKOMAT对减少与痉挛相关的神经肌肉异常的作用。慢性不完全SCI的23个人每周在LOKOMAT中接受1个小时的培训,每次培训3次,每次培训最多45分钟。匹配的对照组没有干预。然后在训练前和训练后1、2和4周评估痉挛性踝的神经肌肉特性。并行级联系统识别技术用于确定踝关节在每个时间点的反射和固有刚度与踝位置的关系。然后在四个星期内计算并跟踪刚度对关节角度曲线的斜率,即刚度对关节位置的调节。然后,基于先进的统计方法生长混合模型(GMM),根据相似的坡度随时间变化的恢复趋势将受试者分类为亚组,并使用随机系数回归(RCR)对每个亚组内的恢复模式进行建模。所有组的反射率和内在斜率均随时间显着降低,但在较高的斜率基线值的班级中,受试者在训练的四个星期中显示出较大的改善。这些发现表明,LOKOMAT训练对于减少SCI后作为继发效应而引起的神经肌肉特性的异常调节也可能有用。这可以向临床医生建议在开始培训之前哪些患者可以从LOKOMAT培训中受益最大。此外,这项研究表明,系统识别和GMM / RCR可以作为强大的工具来量化和跟踪SCI人群随时间的痉挛。

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