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A new fractal-based kinetic index to characterize gait deficits with application in stroke survivor functional mobility assessment

机译:一种新的基于分形的动力学指标来表征步态缺陷,并应用于卒中幸存者功能迁移评估

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This paper proposes a new Kinetic Index (K.I.) to characterize the gait deficits in stroke survivors. The index is derived from the fractal properties of surface electromyography (sEMG) signals. The objectives of proposing this K.I. are (i) to find the correlation between sEMG fractal properties with TUG test; (ii) to classify stroke survivors into different homogeneous subgroups based on K.I., and (iii) to compare the classification results based on published methods. To achieve these objectives, 30 stroke survivors with different levels of gait impairments were recruited to perform TUG. sEMG signals from Tibialis Anterior (TA) and Gastrocnemius Lateral (GL) were acquired in a 5-meter walk test. Sliding window Higuchi fractal dimension algorithm was applied to sEMG of these TA and GL muscles to determine the fractal properties. Hierarchical cluster analysis was used to classify stroke survivors into different subgroups with (i) conventional multiple category of gait parameters (Approach 1), and (ii) single input by using the proposed K.I. value (Approach 2). Besides that, classification based on stroke survivors TUG score was also applied. Results showed that K.I. has strong correlation with the TUG score. A higher value in K.I. associates with higher TUG score. This suggests K.I. could quantify gait deficits and detect risk of fall in this population. The classification results from the Approach 1 were similar to previous published studies. The gait parameters from Approach 2 showed similar gait patterns to Approach 1. Meanwhile, gait results from classification based on TUG score yielded heterogeneous subgroups. These results suggested that K.I. was able to assess gait severity among stroke survivors and was more efficient (it requires a single input parameter only) to classify stroke survivors into homogeneous subgroups. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的动力学指数(K.I.)来表征中风幸存者的步态缺陷。该指数源自表面肌电图(sEMG)信号的分形特性。提出本知识指标的目的(i)通过TUG检验找到sEMG分形特性之间的相关性; (ii)根据K.I.将中风幸存者分为不同的同质亚组,以及(iii)根据公开的方法比较分类结果。为了实现这些目标,招募了30名具有不同步态障碍水平的中风幸存者进行TUG。在5米的步行测试中获取了来自胫骨前(TA)和腓肠肌外侧(GL)的sEMG信号。将滑动窗口Higuchi分形维算法应用于这些TA和GL肌肉的sEMG,以确定分形特性。使用层次聚类分析将中风幸存者分类为不同的亚组,(i)传统的多个步态参数类别(方法1),和(ii)通过使用拟议的K.I.值(方法2)。除此之外,还应用了基于中风幸存者TUG评分的分类。结果表明与TUG评分有很强的相关性。 K.I.的更高价值与较高的TUG分数相关。这表明K.I.可以量化步态缺陷并检测该人群跌倒的风险。方法1的分类结果与以前发表的研究相似。方法2的步态参数显示出与方法1类似的步态模式。同时,基于TUG评分进行分类的步态结果产生了异类亚组。这些结果表明K.I.能够评估中风幸存者的步态严重程度,并且将中风幸存者分类为同质亚组的效率更高(仅需要单个输入参数)。 (C)2018 Elsevier Ltd.保留所有权利。

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