Heart Abnormality Classification by Phonocardiogram Analysis Using Fusion in Feature and Decision Levels

Hossein Rahmati, H. Ghassemian, M. Imani
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Abstract

Useful information about the act of the heart valves can be provided by the audio signal. This leads to a fast, inexpensive and non-invasive heart diagnosis. Due to human auscultator limitation and like of stationary of phonocardiogram signals (PCG), diagnosing through the heard sounds by a stethoscope needs a lot of experiences. Therefore, an automatic system to classify biomedical signal PCG is required. ECG signal is required to accurately segment the heart sound signal. But, acquiring ECG is generally expensive and time consuming. This study proposes a segmentation free system to classify the PCG signals. For extraction of appropriate features from the PCG signals, various methods such as non-uniform filter banks based on maximum entropy, wavelet transform (WT), Mel Frequency Cepstral Coefficient (MFCC) and fractal features are used. Features are given to three classifiers: ML (Maximum Likelihood), KNN (K-Nearest Neighbor) and SVM (Support Vector Machine). The Dempster-Shafer decision Fusion rule is utilized for final decision making. The experiments were performed on PhysioNet/Computing data sets to evaluate the performance of various methods. Sensitivity, Specificity and kappa coefficients were obtained from all six data sets. It is found that the proposed method has a better performance compared to other methods.
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基于特征水平和决策水平融合的心音图分析的心脏异常分类
音频信号可以提供有关心脏瓣膜活动的有用信息。这导致了快速、廉价和无创的心脏诊断。由于人类听诊器的局限性和心音信号的静止性,听诊器通过听音进行诊断需要大量的经验。因此,需要一个生物医学信号PCG自动分类系统。心电信号需要准确分割心音信号。但是,获取心电图通常是昂贵和耗时的。本文提出了一种无分割的PCG信号分类系统。为了从PCG信号中提取合适的特征,使用了各种方法,如基于最大熵的非均匀滤波器组、小波变换(WT)、Mel频率倒谱系数(MFCC)和分形特征。特征给出了三个分类器:ML(最大似然),KNN (k -近邻)和SVM(支持向量机)。采用Dempster-Shafer决策融合规则进行最终决策。实验在PhysioNet/Computing数据集上进行,以评估各种方法的性能。从所有6个数据集获得敏感性、特异性和kappa系数。与其他方法相比,该方法具有更好的性能。
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