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Computerized Diagnosis of the Prolapsed Mitral Valve Using Heart Sound Signal

机译:使用心声信号的脱垂二尖瓣的计算机化诊断

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Cardiovascular diseases (CVDs) are one of the leading causes of death each year. Early diagnosis of CVDs can help to control and prevent the complication of heart diseases. Although auscultation is one of the conventional methods of CVDs diagnosis, it is not accurate enough because of the human hearing restrictions and nonstationary nature of the heart sounds. Because the heart sound or phonocardiogram (PCG) signal contains heart functional information, it can be employed to diagnose various types of CVDs. The goal of this study is to detect Mitral valve Prolapse (PMV) using PCGs. To reach the goal, first, the PCGs were denoised using the Chebyshev filter along with the Wavelet Transform (WT). Then, using the Shannon Energy Envelope (SEE) along with adaptive thresholding, the denoised PCGs were divided into the cardiac cycles. Fractional Fourier Transform (FrFT) was performed to extract the desired features in the time-frequency space. Based on the Mahalanobis distance criterion, the optimal features were selected. The results of the proposed algorithm on the 15 prolapsed and 5 non-prolapsed patients show 95.65% accuracy using the SVM classifier.
机译:心血管疾病(CVDS)是每年死亡的主要原因之一。早期诊断CVDS可以帮助控制和预防心脏病的并发症。虽然听诊是CVDS诊断的传统方法之一,但由于人的听力限制和心脏声音的非持平性质,它不够准确。因为心声或音乐仪(PCG)信号包含心功能信息,所以可以采用它来诊断各种类型的CVD。本研究的目标是使用PCG检测二尖瓣脱垂(PMV)。为了达到目标,首先,使用Chebyshev滤波器以及小波变换(WT)来划分PCG。然后,使用Shannon能量包络(参见)以及自适应阈值处理,将去噪的PCG分为心脏循环。执行分数傅里叶变换(FRFT)以提取时频空间中所需的特征。基于Mahalanobis距离标准,选择了最佳特征。在15次脱发和5名非脱发患者中提出的算法的结果显示了使用SVM分类器的95.65%的精度。

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