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Machine learning methods for locating re-entrant drivers from electrograms in a model of atrial fibrillation

机译:在心房颤动模型中从电描图中定位折返驱动器的机器学习方法

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Mapping resolution has recently been identified as a key limitation in successfully locating the drivers of atrial fibrillation (AF). Using a simple cellular automata model of AF, we demonstrate a method by which re-entrant drivers can be located quickly and accurately using a collection of indirect electrogram measurements. The method proposed employs simple, out-of-the-box machine learning algorithms to correlate characteristic electrogram gradients with the displacement of an electrogram recording from a re-entrant driver. Such a method is less sensitive to local fluctuations in electrical activity. As a result, the method successfully locates 95.4% of drivers in tissues containing a single driver, and 95.1% (92.6%) for the first (second) driver in tissues containing two drivers of AF. Additionally, we demonstrate how the technique can be applied to tissues with an arbitrary number of drivers. In its current form, the techniques presented are not refined enough for a clinical setting. However, the methods proposed offer a promising path for future investigations aimed at improving targeted ablation for AF.
机译:映射分辨率最近被确定为成功定位心房颤动(AF)驱动程序的关键限制。使用简单的AF自动元胞自动机模型,我们演示了一种方法,通过该方法可以使用间接电描记测量的集合快速而准确地定位折返驱动程序。提出的方法采用简单,开箱即用的机器学习算法,以将特征电图梯度与来自可重入驱动器的电图记录的位移相关联。这种方法对电活动的局部波动不太敏感。结果,该方法成功地将95.4%的驱动器定位在包含单个驱动器的组织中,并将95.1%(92.6%)定位于包含两个AF驱动器的组织中的第一个(第二个)驱动器。此外,我们演示了如何将该技术应用于具有任意数量的驱动器的组织。以目前的形式,提出的技术还不足以针对临床环境进行完善。然而,提出的方法为未来旨在改善房颤靶向消融的研究提供了一条有希望的途径。

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