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首页> 外文期刊>Journal of supercomputing >RenyiBS: Renyi entropy basis selection from wavelet packet decomposition tree for phonocardiogram classification
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RenyiBS: Renyi entropy basis selection from wavelet packet decomposition tree for phonocardiogram classification

机译:Renyibs:Renyi熵从小波包分解树中选择对PhonicardocoGram分类的基础

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Wavelet packet transform (WPT) is a powerful mathematical tool for analyzing nonlinear biomedical signals, such as phonocardiogram (PCG). WPT decomposes a PCG signal into a full binary tree of details and approximation coefficients. Appropriate nodes of the tree could be selected as a basis for generating features. Motivated by this, we propose the Renyi entropy basis selection (RenyiBS) method. In RenyiBS method, we use the Renyi entropy as an information measure to choose the best basis of the wavelet packet tree of PCG signals for feature selection and classification. The Renyi entropy estimates the spectral complexity of a signal, which is vital for characterizing nonlinear signals such as PCGs. After selecting the best basis, we define features on the coefficients of the selected nodes. Then, we classify PCGs using the support vector machine (SVM) classifier. In the simulation, we examine a set of 820 heart sound cycles, including normal heart sounds and three types of heart murmurs. The three murmurs examined include aortic regurgitation, mitral regurgitation, and aortic stenosis. We achieved the promising result of 99.74% accuracy, confirming the ability of Renyi entropy to select an appropriate basis of the wavelet packet tree and extracting the nonlinear behavior of particular heart sounds. Besides, the superiority of our proposed information measure in comparison with other information measures reported before is shown.
机译:小波分组变换(WPT)是一种强大的数学工具,用于分析非线性生物医学信号,例如PhonicardocoGram(PCG)。 WPT将PCG信号分解为细节和近似系数的完整二叉树。可以选择适当的树节点作为生成特征的基础。有动力,我们提出了仁义熵基选择(renyibs)方法。在Renyibs方法中,我们使用瑞尼熵作为信息措施来选择PCG信号的最佳PCG信号的最佳基础,用于特征选择和分类。 renyi熵估计信号的光谱复杂性,这对于表征诸如PCG的非线性信号至关重要。选择最佳基础后,我们定义所选节点的系数上的功能。然后,我们使用支持向量机(SVM)分类器来分类PCG。在模拟中,我们检查了一套820个心声周期,包括普通心声和三种类型的心脏杂音。检查的三个杂音包括主动脉反冲,二尖瓣反流和主动脉狭窄。我们实现了99.74%的准确性的有希望的结果,确认了仁义熵选择了小波包树的适当基础,并提取特定心脏声音的非线性行为。此外,与之前报道的其他信息措施相比,我们提出的信息措施的优势。

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