Ghrissi Amina, Almonfrey Douglas, de Almeida Rafael Costa, Squara Fabien, Montagnat Johan, Zarzoso Vicente
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:406-409. doi: 10.1109/EMBC44109.2020.9176400.
Catheter ablation is increasingly used to treat atrial fibrillation (AF), the most common sustained cardiac arrhythmia encountered in clinical practice. A recent breakthrough finding in AF ablation consists in identifying ablation sites based on their spatiotemporal dispersion (STD). STD stands for a delay of the cardiac activation observed in intracardiac electrograms (EGMs) across contiguous leads. In practice, interventional cardiologists localize STD sites visually using the PentaRay multipolar mapping catheter. This work aims at automatically characterizing STD by classifying EGM data into STD vs. non STD groups using machine learning (ML) techniques. A dataset of 23082 multichannel EGM recordings acquired by the PentaRay coming from 16 persistent AF patients is included in this study. A major problem hampering the classification performance lies in the highly imbalanced dataset ratio. We suggest to tackle data imbalance using adapted data augmentation techniques including 1) undersampling 2) oversampling 3) lead shift 4) time reversing and 5) time shift. These tools are designed to preserve the integrity of the cardiac data and are validated by a partner cardiologist. They provide enhancement in classification performance in terms of sensitivity, which increases from 50% to 80% while maintaining accuracy and AUC around 90% with oversampling. Bootstrapping is applied to check the variability of the trained classifiers.Clinical relevance-The machine learning techniques developed in this contribution are expected to aid cardiologists in performing patient-tailored catheter ablation procedures for treating persistent AF.
导管消融越来越多地用于治疗心房颤动(AF),这是临床实践中最常见的持续性心律失常。房颤消融的一项最新突破性发现在于根据时空离散度(STD)来确定消融部位。STD表示在连续导联的心内电图(EGM)中观察到的心脏激动延迟。在实践中,介入心脏病专家使用PentaRay多极标测导管直观地定位STD部位。这项工作旨在通过使用机器学习(ML)技术将EGM数据分类为STD组和非STD组来自动表征STD。本研究纳入了一个由PentaRay采集的来自16名持续性房颤患者的23082个多通道EGM记录的数据集。妨碍分类性能的一个主要问题在于数据集比例严重失衡。我们建议使用适应性数据增强技术来解决数据不平衡问题,包括1)欠采样2)过采样3)导联移位4)时间反转和5)时间偏移。这些工具旨在保持心脏数据的完整性,并由合作的心脏病专家进行了验证。通过过采样,它们在敏感性方面提高了分类性能,敏感性从50%提高到80%,同时保持准确性和AUC在90%左右。应用自助法来检查训练后分类器的可变性。临床相关性——本研究中开发的机器学习技术有望帮助心脏病专家进行针对患者的导管消融手术,以治疗持续性房颤。