Bidomain Sample Entropy to Predict Termination of Atrial Arrhythmias

R. Alcaraz, J. J. Rieta
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引用次数: 7

Abstract

Atrial fibrillation (AF) is the most common cardiac arrhythmia. Therefore, the ability to predict if an AF episode terminates spontaneously or not is a challenging clinical problem. This work presents a robust AF prediction methodology carried out by estimating by applied sample entropy (SampEn) the atrial activity (AA) organization increase prior to AF termination. This regularity variation appears as a consequence of the decrease in the number of reentries into the atrial tissue. AA was obtained from surface ECG recordings using an average QRST template cancellation technique. Wavelet transform (WT) was used in a bidomain way (time and frequency) in order to improve organization estimation. Thereafter, a more robust and reliable classification process for terminating and non-terminating AF episodes was developed making use of two different wavefet decomposition strategies. Finally, the atrial activity organization both in time and wavelet domains (bidomain) was estimated. Trougth the application of this strategy 96% of the terminating and non-terminating analyzed AF episodes were correctly classified.
双域样本熵预测心房心律失常终止
心房颤动(AF)是最常见的心律失常。因此,预测AF发作是否自行结束的能力是一个具有挑战性的临床问题。这项工作提出了一种稳健的房颤预测方法,通过应用样本熵(SampEn)估计房颤终止前心房活动(AA)组织的增加。这种规律性变化是心房组织再入次数减少的结果。利用平均QRST模板对消技术从体表心电图记录中获得AA。在时域和频域上采用小波变换来改进组织估计。此后,利用两种不同的小波分解策略,开发了一种更鲁棒和可靠的AF终止和非终止发作分类过程。最后对心房活动在时间和小波域(biddomain)上的组织进行估计。通过该策略的应用,96%的终止性和非终止性AF发作被正确分类。
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