Cirugeda-Roldán Eva María, Molina Picó Antonio, Novák Daniel, Cuesta-Frau David, Kremen Vaclav
Technological Institute of Informatics, Universitat Politècnica de València, Alcoi Campus, Plaza Ferrándiz y Carbonell 2, Alcoi, Spain.
Department of Cybernetics, Faculty of Electrical Engineering, Czech Technical University in Prague, Czech Republic.
Comput Math Methods Med. 2018 Jun 13;2018:1874651. doi: 10.1155/2018/1874651. eCollection 2018.
Most cardiac arrhythmias can be classified as atrial flutter, focal atrial tachycardia, or atrial fibrillation. They have been usually treated using drugs, but catheter ablation has proven more effective. This is an invasive method devised to destroy the heart tissue that disturbs correct heart rhythm. In order to accurately localise the focus of this disturbance, the acquisition and processing of atrial electrograms form the usual mapping technique. They can be single potentials, double potentials, or complex fractionated atrial electrogram (CFAE) potentials, and last ones are the most effective targets for ablation. The electrophysiological substrate is then localised by a suitable signal processing method. Sample Entropy is a statistic scarcely applied to electrograms but can arguably become a powerful tool to analyse these time series, supported by its results in other similar biomedical applications. However, the lack of an analysis of its dependence on the perturbations usually found in electrogram data, such as missing samples or spikes, is even more marked. This paper applied SampEn to the segmentation between non-CFAE and CFAE records and assessed its class segmentation power loss at different levels of these perturbations. The results confirmed that SampEn was able to significantly distinguish between non-CFAE and CFAE records, even under very unfavourable conditions, such as 50% of missing data or 10% of spikes.
大多数心律失常可分为心房扑动、局灶性房性心动过速或心房颤动。它们通常使用药物治疗,但导管消融已被证明更有效。这是一种旨在破坏干扰正确心律的心脏组织的侵入性方法。为了准确地定位这种干扰的病灶,心房电图的采集和处理构成了常用的标测技术。它们可以是单电位、双电位或复杂碎裂心房电图(CFAE)电位,而最后一种是消融的最有效靶点。然后通过合适的信号处理方法定位电生理基质。样本熵是一种很少应用于心电图的统计量,但在其他类似生物医学应用的结果支持下,可以说是分析这些时间序列的有力工具。然而,对其对通常在电图数据中发现的干扰(如缺失样本或尖峰)的依赖性缺乏分析更为明显。本文将样本熵应用于非CFAE和CFAE记录之间的分割,并评估了在这些干扰的不同水平下其分类分割能力的损失。结果证实,即使在非常不利的条件下,如50%的数据缺失或10%的尖峰,样本熵也能够显著区分非CFAE和CFAE记录。