Classification of Normal and Abnormal Heart Sounds Using Empirical Mode Decomposition and First Order Statistic

Hilman Fauzi, Achmad Rizal, Mazaya 'Aqila, Alvin Oktarianto, Ziani Said
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引用次数: 1

Abstract

Analysis of heart sound signals for automatic segmentation and classification has revealed in recent decades that it has the potential to detect pathology accurately in clinical applications. Various audio signal processing techniques have been used to reduce the subjectivity of heart sound analysis. This study aims to classify normal and abnormal heart sound signals. The feature extraction process was optimized by EMD and calculated using five first-order statistical parameters: mean, variance, kurtosis, skewness, and entropy. The classification system is optimized with a mutual information algorithm to select traits that can significantly improve system performance. In addition, the selection of the optimal system configuration also includes the k-fold cross-validation and kNN methods with k values ​​and the proper distance type. Based on the test results, the highest accuracy of 98.2% was obtained when the value of k = 1 and the type of cosine distance on kNN with a five-fold cross-validation system evaluation model.
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利用经验模态分解和一阶统计量分类正常与异常心音
近几十年来,心音信号的自动分割和分类分析在临床应用中具有准确检测病理的潜力。各种音频信号处理技术被用来降低心音分析的主观性。本研究旨在对正常和异常心音信号进行分类。采用EMD对特征提取过程进行优化,并利用均值、方差、峰度、偏度和熵五个一阶统计参数进行计算。采用互信息算法对分类系统进行优化,选择能够显著提高系统性能的特征。此外,最优系统配置的选择还包括k-fold交叉验证和k值和适当距离类型的kNN方法。实验结果表明,采用五重交叉验证系统评价模型,当k = 1且kNN上的余弦距离类型时,准确率最高,达到98.2%。
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