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Cardiac Arrhythmia Classification Using Hjorth Descriptors

机译:使用Hjorth描述符进行心律失常分类

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The aim of this proposed study is to investigate the discriminant power of Hjorth Descriptor in classification of three categorized groups of subjects' ECG measurement, which are Normal Sinus Rhythm (NSR), Atrial Fibrillation (AF) and Congestive Heart Failure (CHF). This feature has been previously employed to measure the healthiness in persons via their ECG recordings. The algorithm was designed and implemented to extract the Hjorth features and evaluate the performance of classification made on those features by comparing all classifications made among those three databases. Each categorized group included thirty subjects evenly and only three complete QRS complexes of each record in our databases were selected, segmented and extracted for their Hjorth descriptor estimators. In this work three different classifiers were selected, which are Least-Squares (LS), Maximum likelihood (ML) and Support Vector Machine (SVM) for performance evaluation and accuracy comparison. The experimental results from our study showed that the most effective classifier was found to be ML with a mean accuracy of 84.89%, SE of 88.82% and SP of 99.75%, as compared to LS which was found to be the second effective classifier with 88.22% accuracy, and finally SVM with 76.94%. These findings suggested that the promisingly dominant ECG based Hjorth descriptor is capable of class separation among cardiac arrhythmia patient groups.
机译:该提出的研究的目的是研究HJORTH描述符在三个分类的受试者心电图测量组分类中的判别力,这是正常的窦性节律(NSR),心房颤动(AF)和充血性心力衰竭(CHF)。此前,此功能以前用于通过其ECG录制来衡量人员的健康状况。设计和实施该算法以提取HJORTH功能,并通过比较这三个数据库中所做的所有分类来评估对这些功能的分类的性能。每个分类的组都包括三十个科目均匀,只为其数据库中的每个记录中的三个完整的QRS复合体进行了选择,分段并提取它们的Hjorth描述符估算。在这项工作中,选择三种不同的分类器,其是用于性能评估和精度比较的最小二乘(LS),最大似然(ML)和支持向量机(SVM)。我们的研究的实验结果表明,与LS相比,均具有88.82%,SE的平均精度为84.82%,SE的平均精度为88.82%,SE为88.22精度%,最后SVM,76.94%。这些研究结果表明,具有众所有主导的ECG基于的Hjort描述符能够在心律失常患者组中进行阶级分离。

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