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Ambiguity domain-based identification of altered gait pattern in ALS disorder

机译:基于歧义域的ALS障碍者步态改变的识别

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摘要

The onset of a neurological disorder, such as amyotrophic lateral sclerosis (ALS), is so subtle that the symptoms are often overlooked, thereby ruling out the option of early detection of the abnormality. In the case of ALS, over 75% of the affected individuals often experience awkwardness when using their limbs, which alters their gait, i.e. stride and swing intervals. The aim of this work is to suitably represent the non-stationary characteristics of gait (fluctuations in stride and swing intervals) in order to facilitate discrimination between normal and ALS subjects. We define a simple-yet-representative feature vector space by exploiting the ambiguity domain (AD) to achieve efficient classification between healthy and pathological gait stride interval. The stride-to-stride fluctuations and the swing intervals of 16 healthy control and 13 ALS-affected subjects were analyzed. Three features that are representative of the gait signal characteristics were extracted from the AD-space and are fed to linear discriminant analysis and neural network classifiers, respectively. Overall, maximum accuracies of 89.2% (LDA) and 100% (NN) were obtained in classifying the ALS gait.
机译:神经系统疾病(如肌萎缩性侧索硬化症(ALS))的发作是如此微妙,以至于常常忽略这些症状,从而排除了及早发现异常的可能性。对于ALS,超过75%的受影响个体在使用其四肢时经常会感到笨拙,这会改变他们的步态,即步幅和摆动间隔。这项工作的目的是适当地表示步态的非平稳特征(步幅和摆动间隔的波动),以便于区分正常和ALS受试者。我们通过利用歧义域(AD)来定义健康步态步态和病理步态步幅间隔之间的有效分类,定义了一个简单但具有代表性的特征向量空间。分析了16名健康对照者和13名ALS感染者的步幅波动和摆动间隔。从AD空间中提取了代表步态信号特征的三个特征,并将其分别输入线性判别分析和神经网络分类器。总体而言,在对ALS步态进行分类时,获得的最大准确度为89.2%(LDA)和100%(NN)。

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  • 来源
    《Journal of neural engineering 》 |2012年第4期| p.046004.1-046004.12| 共12页
  • 作者单位

    Department of Electrical and Computer Engineering, Ryerson University, Toronto, Canada;

    Department of Electrical and Computer Engineering, Ryerson University, Toronto, Canada;

    Department of Electrical and Computer Engineering, Ryerson University, Toronto, Canada;

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