A linear model-based simulation tool for estimating number of trials needed for upper limb stroke recovery in a given rehabilitation session

B.E. Faremi, K.P. Ayodele, A.M. Jubril, A.A. Fakunle, M.O.B. Olaogun, M.B. Fawale, M.A. Komolafe
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引用次数: 0

Abstract

Traditional methods for assessing upper-limb functional outcomes in stroke patients often fail to estimate the number of trials required to achieve performance stability of a chosen kinematic metric. Limited non-model-based studies have attempted to tackle this issue. To bridge this gap, this study utilized an iterative learning algorithm (ILA) in MATLAB, employing linear models to represent the muscle dynamics and forearm extension of impaired patients. The reference task space trajectory was set as a straight-line point-point trajectory within a range of 0 - 0.2828m. By using the root mean square error (RMSE) as a metric for evaluating kinematic accuracy, a maximum kinematic deviation error of 0.01m was imposed with respect to the trajectory by the (ILA). Results indicate that over 16 trials, performance stability was obtained with improvement in deviation error from 0.0168m in the first trial to 0.0060 at sixteen trials. The result obtained is in line with similar non-model studies and our findings inform the potential of ILAs with linear models for estimation of trial numbers required to attain performance stability of a selected kinematic metric (i.e., kinematic accuracy).
一个基于线性模型的仿真工具,用于估计在给定的康复过程中上肢卒中恢复所需的试验数量
评估脑卒中患者上肢功能结果的传统方法往往无法估计达到所选运动学指标性能稳定性所需的试验数量。有限的非基于模型的研究试图解决这个问题。为了弥补这一空白,本研究利用MATLAB中的迭代学习算法(ILA),采用线性模型来表示受损患者的肌肉动力学和前臂伸展。参考任务空间轨迹设置为0 - 0.2828m范围内的直线点-点轨迹。采用均方根误差(RMSE)作为评价运动精度的度量,对运动轨迹施加的最大运动偏差误差为0.01m。结果表明,经过16次试验,获得了性能稳定性,偏差误差从第一次试验的0.0168m提高到16次试验的0.0060。获得的结果与类似的非模型研究一致,我们的研究结果表明,ILAs具有线性模型的潜力,用于估计获得所选运动度量(即运动精度)的性能稳定性所需的试验数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.10
自引率
0.00%
发文量
126
审稿时长
11 weeks
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