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Detection of Arrhythmic Cardiac Signals from ECG Recordings Using the Entropy–Complexity Plane

机译:使用熵复杂性平面检测来自ECG录制的心律失常心脏信号

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The aim of this work was to analyze in the Entropy–Complexity plane (HxC) time series coming from ECG, with the objective to discriminate recordings from two different groups of patients: normal sinus rhythm and cardiac arrhythmias. The HxC plane used in this study was constituted by Shannon’s Entropy as one of its axes, and the other was composed using statistical complexity. To compute the entropy, the probability distribution function (PDF) of the observed data was obtained using the methodology proposed by Bandt and Pompe (2002). The database used in the present study was the ECG recordings obtained from PhysioNet, 47 long-term signals of patients with diagnosed cardiac arrhythmias and 18 long-term signals from normal sinus rhythm patients were processed. Average values of statistical complexity and normalized Shannon entropy were calculated and analyzed in the HxC plane for each time series. The average values of complexity of ECG for patients with diagnosed arrhythmias were bigger than normal sinus rhythm group. On the other hand, the Shannon entropy average values for arrhythmias patients were lower than the normal sinus rhythm group. This characteristic made it possible to discriminate the position of both signals’ groups in the HxC plane. The results were analyzed through a multivariate statistical test hypothesis. The methodology proposed has a remarkable conceptual simplicity, and shows a promising efficiency in the detection of cardiovascular pathologies.
机译:这项工作的目的是分析来自心电图的熵复杂性飞机(HXC)时间序列,目的是歧视来自两组不同患者群体的录音:正常的窦性节奏和心脏心律失常。本研究中使用的HXC平面由Shannon的熵作为其轴之一构成,另一个由统计复杂性组成。为了计算熵,使用Bandt和Pompe(2002)提出的方法获得观察到的数据的概率分布函数(PDF)。本研究中使用的数据库是从物理体获得的ECG记录,47例心律失常患者的长期信号和来自正常窦性节律患者的18例的长期信号。计算和分析每个时间序列的HXC平面中的统计复杂性和标准化Shannon熵的平均值。诊断诊断心律失常患者的ECG复杂性的平均值大于正常的窦性心律组。另一方面,心律失常患者的Shannon熵平均值低于正常的窦性心律组。该特征使得可以区分HXC平面中的两个信号组的位置。通过多变量统计测试假设分析结果。所提出的方法具有显着的概念简单性,并且在检测心血管病理学方面表现出有希望的效率。

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