Automatic Quality Electrogram Assessment Improves Reentrant Activity Identification in Atrial Fibrillation

Alejandro Costoya-Sánchez, A. Climent, I. Hernández-Romero, A. Liberos, F. Fernández‐Avilés, S. Narayan, F. Atienza, M. Guillem, M. Rodrigo
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Abstract

Location of reentrant electrical activity responsible for driving atrial fibrillation (AF) is key to ablative therapies. The aim of this work is to study the effect of the quality of the electrograms (EGMs) used for 3D phase analysis on reentrant activity identification, as well as to develop an algorithm capable of automatically identifying low- quality signals.EGMs signals from 259 episodes obtained from 29 AF patients were recorded using 64-electrode basket catheters. Low-quality EGMs were manually identified. Reentrant activity was identified in 3D phase maps and provided an area under the ROC curve (AUC) of 0.69 when compared to a 2D activation-based method. Reentries located in regions with poor-quality EGMs were then removed, increasing the AUC to 0.80. The EGM classification algorithm showed a similar performance both for low-quality EGM identification (sensitivity 0.91 and specificity 0.80) and for reentrant activity location with 3D phase analysis (AUC 0.80).Discard of reentrant activity identified in regions where EGMs showed low quality significantly improved the specificity of the 3D phase analysis. Besides, EGMs classification according to their quality proved to be possible using time and spectral domain parameters.
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自动质量电图评估提高心房颤动再入活动识别
驱动心房颤动(AF)的可重入性电活动的位置是消融治疗的关键。这项工作的目的是研究用于3D相位分析的电图(EGMs)质量对重入活动识别的影响,以及开发一种能够自动识别低质量信号的算法。使用64电极篮式导管记录29例房颤患者259次发作的EGMs信号。手工识别低质量的egm。与基于2D激活的方法相比,在3D相图中确定了可重入活动,并提供了0.69的ROC曲线下面积(AUC)。然后删除egm质量较差区域的重表,使AUC增加到0.80。EGM分类算法在鉴别低质量EGM(敏感性0.91,特异性0.80)和3D相分析的重入活性定位(AUC 0.80)方面表现相似。在egm显示低质量的区域中发现的可重入活性的丢弃显著提高了3D相分析的特异性。此外,利用时域和谱域参数对egm进行质量分类也是可行的。
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