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An improved method to detect coronary artery disease using phonocardiogram signals in noisy environment

机译:一种在嘈杂环境中使用心电图信号检测冠状动脉疾病的改进方法

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Identification of coronary artery disease (CAD) from phonocardiogram (PCG) signal is a low signal to noise ratio (SNR) problem. This study proposes a PCG based CAD detection system robust against the environmental noise that does not require additional reference signals for noise acquisition and PCG segmentation. Here, the experiments are conducted on 40 CAD and 40 normal subjects. PCG signals are recorded from a multichannel data acquisition system from four auscultation sites on the left anterior chest. While heart sounds are propagated to different auscultation sites with a certain delay, the ambient noise appearing at microphone array are not mutually time-lagged. Thus, we propose to use the imaginary part of cross power spectral density (ICPSD) to capture the spectrum of heart sounds as it is unresponsive to zero time-lagged signals. Subband based spectral features obtained from ICPSD are classified in a machine learning framework. The performance of the system is studied in the presence of babble, vehicle and white noise in which useful information were extracted from both systolic and diastolic phases of cardiac cycle. The proposed method achieves accuracy, sensitivity and specificity of 74.98%, 76.50% and 73.46%, respectively in absence of ambient noise for k-fold (k = 5) cross-validation. The accuracy for 0 dB SNR in presence of white, babble and vehicle noise were 71.13%, 66.47% and 69.60%, respectively. The proposed method was found to be superior in CAD classification when compared with existing noise removal based approach. The present work shows the potential of developing a PCG-based multichannel CAD detection system as an affordable point of care device for real-life use, where a certain amount of ambient noise is expected. (C) 2020 Elsevier Ltd. All rights reserved.
机译:从心电图(PCG)信号识别冠状动脉疾病(CAD)是低信噪比(SNR)问题。这项研究提出了一种基于PCG的CAD检测系统,可抵抗环境噪声,该系统不需要额外的参考信号即可进行噪声采集和PCG分割。在这里,实验是针对40位CAD和40位正常人进行的。 PCG信号是通过多通道数据采集系统从左前胸部的四个听诊部位记录的。当心音以一定的延迟传播到不同的听诊位置时,出现在麦克风阵列上的环境噪声不会相互滞后。因此,我们建议使用交叉功率谱密度(ICPSD)的虚部来捕获心音频谱,因为它对零时滞信号无响应。从ICPSD获得的基于子带的频谱特征在机器学习框架中分类。在ba啪声,车辆噪声和白噪声的存在下研究了系统的性能,其中从心动周期的收缩期和舒张期中提取了有用的信息。所提出的方法在不存在k倍(k = 5)交叉验证的环境噪声的情况下,分别达到74.98%,76.50%和73.46%的准确性,敏感性和特异性。在存在白噪声,胡闹声和车辆噪声的情况下,0 dB SNR的准确度分别为71.13%,66.47%和69.60%。与现有的基于噪声消除的方法相比,发现该方法在CAD分类方面具有优势。当前的工作表明了开发基于PCG的多通道CAD检测系统作为在现实生活中可以负担得起的护理点设备的潜力,在这种情况下预期会有一定量的环境噪声。 (C)2020 Elsevier Ltd.保留所有权利。

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