Automatic analysis and classification of surface electromyography.

F. Abou-Chadi, A. Nashar, M. Saad
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引用次数: 11

Abstract

In this paper, parametric modeling of surface electromyography (EMG) algorithms that facilitates automatic SEMG feature extraction and artificial neural networks (ANN) are combined for providing an integrated system for the automatic analysis and diagnosis of myopathic disorders. Three paradigms of ANN were investigated: the multilayer backpropagation algorithm, the self-organizing feature map algorithm and a probabilistic neural network model. The performance of the three classifiers was compared with that of the old Fisher linear discriminant (FLD) classifiers. The results have shown that the three ANN models give higher performance. The percentage of correct classification reaches 90%. Poorer diagnostic performance was obtained from the FLD classifier. The system presented here indicates that surface EMG, when properly processed, can be used to provide the physician with a diagnostic assist device.
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表面肌电图的自动分析与分类。
本文将促进自动肌电特征提取的表面肌电(EMG)算法的参数化建模与人工神经网络(ANN)相结合,为肌病的自动分析和诊断提供了一个集成系统。研究了人工神经网络的三种范式:多层反向传播算法、自组织特征映射算法和概率神经网络模型。将这三种分类器的性能与旧的Fisher线性判别(FLD)分类器进行了比较。结果表明,这三种人工神经网络模型具有较高的性能。分类正确率达到90%。FLD分类器的诊断性能较差。这里介绍的系统表明,表面肌电图,如果处理得当,可以为医生提供诊断辅助设备。
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