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Accurate Classification of Heart Sound Signals for Cardiovascular Disease Diagnosis by Wavelet Analysis and Convolutional Neural Network: Preliminary Results

机译:通过小波分析和卷积神经网络准确地分类心血管疾病诊断的心声信号:初步结果

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Heart sound (HS) signals contain valuable diagnostic information for detection of heart abnormalities. The early detection of heart abnormalities plays an important role in reducing the mortality rate caused by heart diseases. Auscultation, the process of listening to heart sounds, is the first diagnostic method of heart diseases. This process is highly dependent on the physician expertise, making the diagnosis more of a subjective issue. There is ongoing research to automate heart sound diagnosis. Advances in machine learning have provided an easier, cheaper and objective diagnosis of diseases. Algorithms developed for heart sound classifications rely on several features and the accuracy of a model depends on the feature vector. The advent of deep learning (DL) provides a possible solution to overcome the overwhelming and time-consuming step of feature extraction. Convolutional neural networks (CNN), popular deep network architectures, offer high classification accuracies for 2D images and 1D time series. This study proposes an efficient and highly accurate method for heart sound signal classification. The continuous wavelet transform method is employed to obtain scalogram images. The 2D scalogram images are fed to a deep CNN classifier. Using the heart sound dataset consisting of 4 abnormal and 1 normal heart sound subsets, this study investigates both binary classification and multi-class classification. The proposed classification method outperformed the state-of-the-art methods in the literature.
机译:心声(HS)信号包含有价值的诊断信息,用于检测心脏异常。心脏异常的早期发现在降低心脏病引起的死亡率方面发挥着重要作用。听诊,听起来心音的过程,是第一种心脏病的诊断方法。这个过程高度依赖于医师专业知识,使诊断更多的主观问题。正在进行的研究自动化心声诊断。机器学习的进步提供了更容易,更便宜,疾病客观的诊断。为心声分类开发的算法依赖于若干特征,模型的准确性取决于特征向量。深度学习(DL)的出现提供了克服特征提取的压倒性和耗时步骤的可能解决方案。卷积神经网络(CNN),流行的深网络架构,为2D图像和1D时间序列提供高分类精度。本研究提出了一种高效且高度准确的心态信号分类方法。使用连续小波变换方法来获得缩放图像。 2D缩放图像被馈送到深层CNN分类器。本研究采用由4个异常和1个正常心脏声音子集组成的心声数据集调查二进制分类和多级分类。所提出的分类方法优于文献中的最先进的方法。

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