Automatic Classification of Periodic Heart Sounds Using Convolutional Neural Network

Jia Xin Low, K. W. Choo
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引用次数: 3

Abstract

This paper presents an automatic normal and abnormal heart sound classification model developed based on deep learning algorithm. MITHSDB heart sounds datasets obtained from the 2016 PhysioNet/Computing in Cardiology Challenge database were used in this research with the assumption that the electrocardiograms (ECG) were recorded simultaneously with the heart sounds (phonocardiogram, PCG). The PCG time series are segmented per heart beat, and each sub-segment is converted to form a square intensity matrix, and classified using convolutional neural network (CNN) models. This approach removes the need to provide classification features for the supervised machine learning algorithm. Instead, the features are determined automatically through training, from the time series provided. The result proves that the prediction model is able to provide reasonable and comparable classification accuracy despite simple implementation. This approach can be used for real-time classification of heart sounds in Internet of Medical Things (IoMT), e.g. remote monitoring applications of PCG signal.
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基于卷积神经网络的周期性心音自动分类
提出了一种基于深度学习算法的心音正常与异常自动分类模型。本研究使用MITHSDB心音数据集,数据集来自2016年PhysioNet/Computing in Cardiology Challenge数据库,假设心电图(ECG)与心音(PCG)同时记录。将PCG时间序列按每次心跳进行分割,并将每个子片段转换成一个平方强度矩阵,使用卷积神经网络(CNN)模型进行分类。这种方法消除了为监督机器学习算法提供分类特征的需要。相反,这些特征是通过训练从提供的时间序列中自动确定的。结果表明,该预测模型实现简单,分类精度合理,具有可比性。该方法可用于医疗物联网(IoMT)中心音的实时分类,如PCG信号的远程监测应用。
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