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Cardiac arrhythmia classification using the phase space sorted by Poincare sections

机译:使用Poincare Sections排序的相空间的心脏心律失常分类

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摘要

Abstract Many methods for automatic heartbeat classification have been applied and reported in literature, but methods, which used the basin geometry of quasi-periodic oscillations of electrocardiogram (ECG) signal in the phase space for classifying cardiac arrhythmias, frequently extracted a limited amount of information of this geometry. Therefore, in this study, we proposed a novel technique based on Poincare section to quantify the basin of quasi-periodic oscillations, which can fill the mentioned gap to some extent. For this purpose, we first reconstructed the two-dimensional phase space of ECG signal. Then, we sorted this space using the Poincare sections in different angles. Finally, we evaluated the geometric features extracted from the sorted spaces of five heartbeat groups recommend by the association for the advancement of medical instrumentation (AAMI) by using the sequential forward selection (SFS) algorithm. The results of this algorithm indicated that a combination of nine features extracted from the sorted phase space along with per and post instantaneous heart rate could significantly separate the five heartbeat groups (99.23% and 96.07% for training and testing sets, respectively). Comparing these results with the results of earlier work also indicated that our proposed method had a figure of merit (FOM) about 32.12%. Therefore, this new technique not only can quantify the basin geometry of quasi-periodic oscillations of ECG signal in the phase space, but also its output can improve the performance of detection systems developed for the cardiac arrhythmias, especially in the five heartbeat groups recommend by the AAMI.
机译:摘要在文献中应用了许多自动心跳分类方法,但在文献中报告了方法,但是使用用于分类心律失常的相位空间中的通心图(ECG)信号的盆地几何形状的方法,经常提取有限量的信息这个几何形状。因此,在这项研究中,我们提出了一种基于Poincare截面的新型技术,以量化准周期性振荡的盆地,这可以在一定程度上填补所提到的差距。为此,我们首先重建了ECG信号的二维相空间。然后,我们使用不同角度的Poincare Sections对此空间进行了分类。最后,我们评估了通过使用顺序前进选择(SFS)算法的医疗仪表(AAMI)的进步,从五个心跳组的分拣空间中提取的几何特征。该算法的结果表明,从分类的相空间提取的九个特征以及每次和瞬时心率的组合可以显着分离五个心跳组(99.23%和96.07%,分别用于训练和测试集)。将这些结果与早期工作的结果进行比较,也表明我们的提出方法具有约32.12%的优点(FOM)。因此,这种新技术不仅可以量化阶段空间中的ECG信号的准周期性振荡的盆地几何形状,而且其输出也可以提高为心律失常开发的检测系统的性能,特别是在五个心跳组推荐的aami。

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