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Refined analysis of heart sound based on Hilbert-Huang transform

机译:基于希尔伯特-黄变换的心音精细分析

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Heart sound signal, which reflects the conditions of human heart, has more advantages than ECG in some ways. Nowadays, the computer-aided diagnosis of heart sounds becomes available. In this research, telemedical auscultation and computer-aided diagnosis of heart sounds are combined. This paper analyzed heart sounds based on Hilbert-Huang transform from the time domain and frequency domain, then extracts a series of parameters which are useful for computer-aided diagnosis. Firstly, heart sounds are preprocessed by wavelet transform and Huang-transform technologies. Wavelet threshold denoising can effectively remove the noise of heart sounds, while Huang transform can extract a series of intrinsic mode functions, and choose the appropriate intrinsic modal functions, which can effectively remove the low-frequency noise of signal. This paper also extracts the envelopes of heart sounds based on Hilbert transform. The heart sounds are segmented effectively by Hilbert envelops, thus time domain features of the heart sound can be extracted more accurately. Finally, pathologic heart sounds were analyzed by using Hilbert-Huang transform. Heart sounds are collected in Shengjing Hospital of Chinese Medical University with the designed telemedicine consulting system for auscultation. Heart sounds of patients with acute myocardial infarction (AMI), and those of patients with coronary artery disease (CAD) are collected. The Hilbert-Huang transform theory, instantaneous frequency, Hilbert spectrum and its extracted boundary spectrum were used in this paper. Due to the good time-frequency resolution of Hilbert-Huang transform, five characteristic parameters are defined. Through comparative analysis of the three classes' heart sounds, the results demonstrated that the five features can differentiate the three classes effectively at the accuracy of 80%.
机译:反映人的心脏状况的心音信号在某些方面比ECG更具优势。如今,可以使用计算机辅助的心音诊断。在这项研究中,结合了远程医疗听诊和计算机辅助心音诊断。本文从时域和频域对基于Hilbert-Huang变换的心音进行了分析,然后提取了一系列可用于计算机辅助诊断的参数。首先,通过小波变换和黄变换技术对心音进行预处理。小波阈值去噪可以有效去除心音噪声,而黄变换可以提取一系列固有模式函数,并选择合适的固有模态函数,可以有效去除信号的低频噪声。本文还基于希尔伯特变换提取了心音的包络。希尔伯特信封有效地分割了心音,因此可以更准确地提取心音的时域特征。最后,通过希尔伯特-黄变换对病理性心音进行了分析。通过设计的用于听诊的远程医疗咨询系统,在中国医科大学附属盛京医院采集心音。收集急性心肌梗死(AMI)患者和冠心病(CAD)患者的心音。本文采用希尔伯特-黄变换理论,瞬时频率,希尔伯特谱及其提取的边界谱。由于Hilbert-Huang变换具有良好的时频分辨率,因此定义了五个特征参数。通过对三类心音的比较分析,结果表明这五种特征可以有效区分三类,准确率达到80%。

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