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Wavelet Packet Entropy for Heart Murmurs Classification

机译:小波包熵在心脏杂音分类中的应用

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摘要

Heart murmurs are the first signs of cardiac valve disorders. Several studies have been conducted in recent years to automatically differentiate normal heart sounds, from heart sounds with murmurs using various types of audio features. Entropy was successfully used as a feature to distinguish different heart sounds. In this paper, new entropy was introduced to analyze heart sounds and the feasibility of using this entropy in classification of five types of heart sounds and murmurs was shown. The entropy was previously introduced to analyze mammograms. Four common murmurs were considered including aortic regurgitation, mitral regurgitation, aortic stenosis, and mitral stenosis. Wavelet packet transform was employed for heart sound analysis, and the entropy was calculated for deriving feature vectors. Five types of classification were performed to evaluate the discriminatory power of the generated features. The best results were achieved by BayesNet with 96.94% accuracy. The promising results substantiate the effectiveness of the proposed wavelet packet entropy for heart sounds classification.
机译:心脏杂音是心脏瓣膜疾病的最初迹象。近年来,已经进行了多项研究,以使用各种类型的音频功能自动区分正常的心音和带有杂音的心音。熵已成功用作区分不同心音的功能。在本文中,引入了新的熵来分析心音,并显示了将该熵用于五种类型的心音和杂音分类的可行性。先前已引入熵来分析乳房X线照片。考虑了四种常见的杂音,包括主动脉瓣关闭不全,二尖瓣关闭不全,主动脉瓣狭窄和二尖瓣狭窄。小波包变换用于心音分析,并计算熵以导出特征向量。进行了五种分类,以评估所生成特征的区分能力。 BayesNet以96.94%的准确率获得了最佳结果。有希望的结果证实了所提出的小波包熵对于心音分类的有效性。

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