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利用肌电信号互谱图像深度特征提取的神经肌肉疾病检测

Neuromuscular Disease Detection Employing Deep Feature Extraction from Cross Spectrum Images of Electromyography Signals.

作者信息

Samanta Kaniska, Roy Sayanjit Singha, Modak Sudip, Chatterjee Soumya, Bose Rohit

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:694-697. doi: 10.1109/EMBC44109.2020.9176464.

Abstract

In this paper, a deep learning framework for detection and classification of EMG signals for diagnosis of neuromuscular disorders is proposed employing cross wavelet transform. Cross wavelet transform which is a modification of continuous wavelet transform is an important tool to analyze any non-stationary signal in time scale and in time-frequency frame. To this end, EMG signals of healthy, myopathy and Amyotrophic lateral sclerosis disorders were procured from an online existing database. A healthy EMG signal was chosen as reference and cross wavelet transform of the rest of the healthy as well as the disease EMG signals was done with the reference. From the resulting cross wavelet spectrum images of EMG signals, a convolution neural network (CNN) based automated deep feature extraction technique was implemented. The extracted deep features were further subjected to feature ranking employing one way analysis of variance (ANOVA) test. The extracted deep features with high degree of statistical significance were fed to several benchmark machine learning classifiers for the purpose of discrimination of EMG signals. Two binary classification problems are addressed in this paper and it has been observed that the highest mean classification accuracy of 100% is achieved using the statistically significant extracted deep features. The proposed method can be implemented for real-time detection of neuromuscular disorders.

摘要

本文提出了一种基于交叉小波变换的深度学习框架,用于检测和分类肌电信号以诊断神经肌肉疾病。交叉小波变换是对连续小波变换的一种改进,是在时间尺度和时频框架内分析任何非平稳信号的重要工具。为此,从现有的在线数据库中获取了健康、肌病和肌萎缩侧索硬化症患者的肌电信号。选择一个健康的肌电信号作为参考,将其余健康以及患病肌电信号与该参考信号进行交叉小波变换。从得到的肌电信号交叉小波频谱图像中,实施了一种基于卷积神经网络(CNN)的自动深度特征提取技术。提取的深度特征进一步采用单因素方差分析(ANOVA)测试进行特征排序。具有高度统计显著性的提取深度特征被输入到几个基准机器学习分类器中,用于区分肌电信号。本文解决了两个二分类问题,并且观察到使用具有统计显著性的提取深度特征可实现高达100%的最高平均分类准确率。所提出的方法可用于神经肌肉疾病的实时检测。

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