首页> 外文会议>2011 IEEE 19th Signal Processing and Communications Applications Conference >Clustering of arrhythmic ECG beats using morphological properties and windowed raw ECG data
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Clustering of arrhythmic ECG beats using morphological properties and windowed raw ECG data

机译:心律失常心电图节律的聚类使用形态学特性和窗口化的原始心电图数据

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In this study, six types of arrhythmia beats observed in ECG signals have been analysed by using clustering methods. A set of morphological properties and windowed raw ECG data are used as feature vectors in clustering algorithms. Purpose of the analysis is to see if the examined arrhytmia types form natural groups in the feature spaces. The performances of the clustering algorithms are tested by different distance metrics and algorithms. The results are examined based on the average sensitivity, specificity, selectivity and accuracy of the classifier. The results show that k-means clustering technique with the distance parameter set at cosine values by using the windowed raw data features give better results. Results also show that analyzed arrythmia types do not form distinct clusters in examined feature spaces. On the other hand, in some cases very high specificity results are observed for some arrythmia types. That means suggested features could be quite useful in elimination processes in hierarchic classifiers.
机译:在这项研究中,已经通过使用聚类方法分析了在ECG信号中观察到的六种类型的心律不齐。一组形态学特性和原始ECG窗口数据在聚类算法中用作特征向量。分析的目的是查看所检查的心律失常类型是否在特征空间中形成自然组。聚类算法的性能通过不同的距离度量和算法进行测试。基于分类器的平均敏感性,特异性,选择性和准确性检查结果。结果表明,通过使用开窗原始数据特征,将距离参数设置为余弦值的k-means聚类技术可获得更好的结果。结果还表明,分析的心律失常类型在检查的特征空间中未形成明显的簇。另一方面,在某些情况下,对于某些心律失常类型观察到非常高的特异性结果。这意味着建议的功能在分层分类器的消除过程中可能非常有用。

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