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Analyzing spatial characters of the ECG signal via complex network method

机译:复杂网络法分析心电信号的空间特征

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In recent years, various nonlinear time series analysis methodologies have been applied to study cardiac arrhythmias electrocardiograph (ECG) signals. They exhibit competitive advantages in comparison with the conventional linear methods but most of them heavily rely on the phase space reconstruction. In this paper the arrhythmias electrocardiograph (ECG) signals is investigated from the perspective of networks so as to find another effective approach independent of the phase space reconstruction to deeply discover some unknown information underlying the signals. The ECG signal is thereby transformed to a network topology, where its R-R cycles are regarded as nodes in the network, and link weights between two nodes are determined by Euclidean distance of corresponding two cycles. We then employ the network statistical criteria to discover the distinction among different cardiac rhythms. We validate this idea with atrial fibrillation (AF) and normal sinus rhythm (NSR) ECG signals. The results demonstrate that the differences between them can be well revealed from this novel perspective. The described method provides an insight into cardiac arrhythmias studies.
机译:近年来,各种非线性时间序列分析方法已用于研究心律失常心电图仪(ECG)信号。与传统的线性方法相比,它们具有竞争优势,但大多数方法都严重依赖于相空间重构。本文从网络的角度研究了心律失常心电图(ECG)信号,从而找到了一种独立于相空间重构的有效方法,以深入发现信号背后的一些未知信息。 ECG信号由此转换为网络拓扑,在该拓扑中,其R-R周期被视为网络中的节点,两个节点之间的链路权重由相应两个周期的欧几里德距离确定。然后,我们采用网络统计标准来发现不同心律之间的区别。我们通过房颤(AF)和正常窦性心律(NSR)ECG信号验证了这一想法。结果表明,从这种新颖的观点可以很好地揭示它们之间的差异。所描述的方法提供了对心律不齐研究的见识。

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