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Beat to Beat Classification of Long Electrocardiograms Using Entropies and Hierarchical Clustering

机译:使用熵和分层聚类法对长型心电图进行逐跳分类

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This paper introduces an entropy based method for beat to beat classification of long electrocardiograms (ECGs). A state vector is reconstructed using Taken''s delay coordinates method and Shannon entropies are calculated for each beat to form feature vectors. Hierarchical clustering is applied to these vectors to classify the beats. The algorithm was used for detection of atrial premature beats and ventricular premature beats in long electrocardiograms
机译:本文介绍了一种基于熵的长心电图(ECG)逐拍分类方法。使用Taken的延迟坐标方法重建状态向量,并为每个拍子计算Shannon熵以形成特征向量。将层次聚类应用于这些向量以对节拍进行分类。该算法用于检测长心电图中的房性早搏和室性早搏

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