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Neuromuscular disease detection by neural networks and fuzzy entropy on time-frequency analysis of electromyography signals

机译:神经网络和模糊熵对肌电信号时频分析的神经肌肉疾病检测

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摘要

Analysis of electromyography (EMG) signals is a necessary step in the diagnosis of neuromuscular diseases. Automatic classification systems can assist specialists and optimize the diagnostic process by applying time-frequency analysis, fuzzy entropy, and neural networks to EMG signals in order to identify the presence of characteristics of a specific disorder, such as myopathy and amyotrophic lateral sclerosis. The performance of a decision support system depends on three important issues: the correct estimation of features from the EMG signal, the proper criteria for relevance analysis, and the learning process of the classification algorithm. In this paper, Discrete Wavelet Transform and Fuzzy Entropy are used to extract and select features from EMG signals, whereas Artificial Neural Networks are used to give the recognition result. The database used in this study is available for public use in EMGLAB, which is a website for sharing data, software, and information related to EMG decomposition. Results using the combination of these techniques show an accuracy around 98% for identifying EMG signals from three classes: healthy, patients with myopathy, or evidence of amyotrophic lateral sclerosis.
机译:肌电图(EMG)信号分析是诊断神经肌肉疾病的必要步骤。自动分类系统可以通过对EMG信号进行时频分析,模糊熵和神经网络来帮助专家,并优化诊断过程,以识别特定疾病(例如肌病和肌萎缩性侧索硬化)的特征。决策支持系统的性能取决于三个重要问题:从EMG信号正确估计特征,相关性分析的适当标准以及分类算法的学习过程。本文采用离散小波变换和模糊熵从肌电信号中提取和选择特征,而人工神经网络则给出识别结果。该研究中使用的数据库可在EMGLAB中公开使用,该数据库是一个共享数据,软件和与EMG分解有关的信息的网站。结合使用这些技术的结果显示,从三类健康,肌病患者或肌萎缩性侧索硬化的证据中识别肌电信号的准确性约为98%。

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