首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Combined wavelet transformation and radial basis neural networks for classifying life-threatening cardiac arrhythmias.
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Combined wavelet transformation and radial basis neural networks for classifying life-threatening cardiac arrhythmias.

机译:结合小波变换和径向基神经网络对威胁生命的心律不齐进行分类。

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摘要

Automatic detection and classification of arrhythmias based on ECG signals are important to cardiac-disease diagnostics. The ability of the ECG classifier to identify arrhythmias accurately is based on the development of robust techniques for both feature extraction and classification. A classifier is developed based on using wavelet transforms for extracting features and then using a radial basis function neural network (RBFNN) to classify the arrhythmia. Six energy descriptors are derived from the wavelet coefficients over a single-beat interval from the ECG signal. Nine different continuous and discrete wavelet transforms are considered for obtaining the feature vector. An RBFNN adapted to detect and classify life-threatening arrhythmias is then used to classify the feature vector. Classification results are based on 159 arrhythmia files obtained from three different sources. Classification results indicate the potential for wavelet based energy descriptors to distinguish the main features of the signal and thereby enhance the classification scheme. The RBFNN classifier appears to be well suited to classifying the arrhythmia, owing to the feature vectors' linear inseparability and tendency to cluster. Utilising the Daubechies wavelet transform, an overall correct classification of 97.5% is obtained, with 100% correct classification for both ventricular fibrillation and ventricular tachycardia.
机译:基于ECG信号的心律失常自动检测和分类对心脏疾病的诊断很重要。 ECG分类器准确识别心律不齐的能力基于功能强大的特征提取和分类技术的发展。基于小波变换提取特征,然后使用径向基函数神经网络(RBFNN)对心律失常进行分类,从而开发出一种分类器。从心电图信号的单个心跳间隔中的小波系数中得出六个能量描述符。考虑九个不同的连续和离散小波变换以获得特征向量。然后将适用于检测和分类威胁生命的心律不齐的RBFNN用于分类特征向量。分类结果基于从三种不同来源获得的159个心律失常文件。分类结果表明,基于小波的能量描述符可以区分信号的主要特征,从而增强分类方案。由于特征向量的线性不可分性和聚集趋势,RBFNN分类器似乎非常适合对心律失常进行分类。利用Daubechies小波变换,可获得97.5%的总体正确分类,而对于室颤和室性心动过速的分类正确率为100%。

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