首页> 外文会议>International Symposium on Biological and Medical Data Analysis(ISBMDA 2004); 20041118-19; Barcelona(ES) >PCA Representation of ECG Signal as a Useful Tool for Detection of Premature Ventricular Beats in 3-Channel Holter Recording by Neural Network and Support Vector Machine Classifier
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PCA Representation of ECG Signal as a Useful Tool for Detection of Premature Ventricular Beats in 3-Channel Holter Recording by Neural Network and Support Vector Machine Classifier

机译:PCA表示的ECG信号是通过神经网络和支持向量机分类器检测3通道动态心电记录中室性早搏的有用工具

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摘要

In the paper classification method of compressed ECG signal was presented. Classification of single heartbeats was performed by neural networks and support vector machine. Parameterization of ECG signal was realized by principal component analysis (PCA). For every heartbeat only two descriptors have been used. The results of real Holter signal were presented in tables and as plots in planespherical coordinates. The efficiency of classification is near to 99%.
机译:提出了压缩心电信号的分类方法。通过神经网络和支持向量机对单个心跳进行分类。心电信号的参数化通过主成分分析(PCA)实现。对于每个心跳,仅使用了两个描述符。真实Holter信号的结果显示在表格中,并以平面球坐标表示。分类效率接近99%。

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