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Heart Abnormality Classification Using Phonocardiogram (PCG) Signals

机译:心脏异常分类使用Phonicardocogram(PCG)信号

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Heart abnormality or disease is one of the leading causes of mortality worldwide. Sound signal produced by the mechanical activity of heart, known as phono-cardiogram (PCG), provides useful information about the heart's health. To increase discriminability among PCG signals of different normal and abnormal persons, an appropriate combination of signal features and classifiers is important. The segmentation of PCG signal, which requires corresponding ECG signal, is typically used for better prediction. But using ECG is generally expensive and time consuming. 781039In this paper, we therefore propose a segmentation free method to extract information from PCG signal. The signal is first preprocessed for DC removal and to limit the frequency to the required range. Four features (i.e. WPS, PS, FD, and SF) and four classifiers (i.e. LDA, ESVM, DT, and KNN) are then considered for the classification of heart murmur sound from PCG signals. A preliminary experiment with 56 signals showed the highest classification accuracy of 82.6%, obtained by simple statistical feature (SF) with ESVM classifier. On average, the best performing classifier was ESVM (accuracy: 77.17%), while the best feature was PS (accuracy: 75%). In addition, the PS feature showed stable and consistent performance irrespective of the classifiers used. Results also indicate the importance of combining multiple features and classifiers for better accuracy and reliability.
机译:心脏异常或疾病是全世界死亡率的主要原因之一。由心脏机械活动产生的声音信号,称为Phono-Carciogram(PCG),提供有关心脏健康的有用信息。为了提高不同正常和异常的PCG信号之间的可怜,信号特征和分类器的适当组合很重要。需要相应的ECG信号的PCG信号的分割通常用于更好的预测。但是使用心电图通常是昂贵且耗时的。 781039在本文中,我们提出了一种分割方法,用于从PCG信号中提取信息。首先将信号预处理用于DC移除并将频率限制为所需范围。然后考虑四个特征(即WPS,PS,FD和SF)和四个分类器(即LDA,ESVM,DT和KNN),用于从PCG信号进行心脏杂音声音的分类。具有56个信号的初步实验显示出最高分类精度为82.6%,通过简单的统计特征(SF)与ESVM分类器获得。平均而言,最好的执行分类器是ESVM(准确性:77.17%),而最佳功能是PS(准确性:75%)。此外,不论使用的分类器如何,PS特征显示出稳定且一致的性能。结果还表明,结合多种功能和分类器以获得更好的准确性和可靠性的重要性。

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