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A Deep Convolutional Neural Network Classification of Heart Sounds using Fractional Fourier Transform

机译:利用分数傅里叶变换的心脏声音深度卷积神经网络分类

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A computer-aided auscultation system can help in the initial diagnosis of heart diseases. In this work, we propose a binary classification system that uses fractional Fourier transform based Mel-frequency spectral coefficients (FrFT-MFSC) and a 1D deep convolutional neural network. FrFt-MFSC is used to convert the phonocardiogram (PCG) into heat maps using four fractional orders (0.9, 0.95, 1.0, 1.10). We verify the performance of our proposed system using a publicly available data set that was provided by 2016 Physionet/Computing in Cardiology Challenge. Ten-fold cross-validation and holdout test methods are used to evaluate the performance of the system. Classifier performance for various features using different fractional orders is also studied. The 10-fold cross-validation provides a good performance and balanced specificity and sensitivity of 0.97 and 0.95 respectively despite using imbalance data set. The proposed system performance is superior to all the current state-of-the art binary human PCG classification systems.
机译:计算机辅助听诊系统可以帮助初始诊断心脏病。在这项工作中,我们提出了一种二进制分类系统,该系统使用基于分数的傅里叶变换的熔体频谱系数(FRFT-MFSC)和1D深卷积神经网络。 FRFT-MFSC用于使用四个分数订单(0.9,0.95,1.0,110)将PhoneCarioGram(PCG)转换为热图。我们使用2016年在心脏病学挑战中提供的公开可用的数据集来验证我们提出的系统的表现。十倍的交叉验证和阻止测试方法用于评估系统的性能。还研究了使用不同分数订单的各种功能的分类器性能。尽管使用不平衡数据集,但10倍交叉验证可分别为0.97和0.95提供良好的性能和平衡特异性和灵敏度。所提出的系统性能优于所有当前的最先进的二进制人PCG分类系统。

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