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Non-invasive diagnosis methods of coronary disease based on wavelet denoising and sound analyzing

机译:基于小波去噪和声音分析的冠状动脉疾病的非侵入性诊断方法

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The heart sound is the characteristic signal of cardiovascular health status. The objective of this project is to explore the correlation between Wavelet Transform and noise performance of heart sound and the adaptability of classifying heart sound using bispectrum estimation. Since the wavelet has multi-scale and multi-resolution characteristics, in this paper, the heart sound signal with different frequency ranges is decomposed through wavelet and displayed on different scales of the resolving wavelet result. According to distribution features of frequency of heart sound signals, the interference components in heart sound signal can be eliminated by selecting reconstruction coefficients. Comparing de-noising effects of four wavelets which are haar, db6, sym8 and coif6, the db6 wavelet has achieved an optimal denoising effect to heart sound signals. The de-noising result of contrasting different layers in the db6 wavelet shows that decomposing with five layers in db6 provide the optimal performance. In practice, the db6 wavelet also shows commendable denoising effects when applying to 51 clinical heart signals. Furthermore, through the clinic analyses of 29 normal signals from healthy people and 22 abnormal heart signals from coronary heart disease patients, this method can fairly distinguish abnormal signals from normal signals by applying bispectrum estimation to denoised signals via ARMA coefficients model.
机译:心脏声音是心血管健康状况的特征信号。该项目的目的是探讨小波变换与心脏声音噪声性能之间的相关性以及使用BISPectrum估计对心音进行分类的适应性。由于小波具有多尺度和多分辨率特性,因此,具有不同频率范围的心声信号通过小波分解并显示在解析小波结果的不同尺度上。根据心声信号频率的分配特征,通过选择重建系数可以消除心音信号中的干扰分量。比较四个小波的去噪效果,该小波,DB6,SYM8和COIF6,DB6小波对心脏声音信号实现了最佳的去噪效果。 DB6小波中对比不同层的去噪结果表明,DB6中的五层分解提供最佳性能。在实践中,DB6小波在施加到51个临床心脏信号时也显示出称赞的去噪效果。此外,通过冠心病患者的健康人和22个正常心脏信号的29个正常信号的临床分析,通过ARMA系数模型将BISPectrum估计施加BISPectrum估计来公平地区分来自正常信号的异常信号。

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