从心电图中寻找维持心房颤动的转子区域的机器学习

G. Luongo, L. Azzolin, M. Rivolta, T. Almeida, J. P. Martínez, D. Soriano, O. Dössel, R. Sassi, P. Laguna, A. Loewe
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引用次数: 4

摘要

心房颤动(AF)是由于心房电活动紊乱而引起的最常见的不规则心律,通常由称为转子的旋转驱动器维持。房颤驱动因素的非侵入性定位可以改善个性化消融策略,建议在驱动因素位于其他心房区域的情况下,隔离肺静脉(PV)或更复杂的PV外消融手术。我们使用机器学习方法来表征和区分模拟的单个稳定转子(1R)位置:pv,左心房(LA)不包括pv和右心房(RA),仅利用非侵入性信号(即12导联心电图)。模拟1R次持续房颤。从信号中提取了128个特征。采用贪婪前向算法选择最优的特征集,并利用交叉验证技术将特征集送入决策树分类器。所有测试的特征都显示出显著的区分力,特别是基于递归量化分析的特征(单特征分类准确率高达80.9%)。决策树分类器在模拟数据上具有18个特征,测试准确率达到89.4%,RA、LA和PV类的灵敏度分别为93.0%、82.4%和83.3%。我们的研究结果表明,机器学习方法可以使用12导联心电图识别1R维持AF的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning to Find Areas of Rotors Sustaining Atrial Fibrillation From the ECG
Atrial fibrillation (AF) is the most frequent irregular heart rhythm due to disorganized atrial electrical activity, often sustained by rotational drivers called rotors. The non-invasive localization of AF drivers can lead to improved personalized ablation strategy, suggesting pulmonary vein (PV) isolation or more complex extra-PV ablation procedures in case the driver is on other atrial regions. We used a Machine Learning approach to characterize and discriminate simulated single stable rotors (1R) location: PVs, left atrium (LA) excluding the PVs, and right atrium (RA), utilizing solely non-invasive signals (i.e., the 12-lead ECG). 1R episodes sustaining AF were simulated. 128 features were extracted from the signals. Greedy forward algorithm was implemented to select the best feature set which was fed to a decision tree classifier with hold-out cross-validation technique. All tested features showed significant discriminatory power, especially those based on recurrence quantification analysis (up to 80.9% accuracy with single feature classification). The decision tree classifier achieved 89.4% test accuracy with 18 features on simulated data, with sensitivities of 93.0%, 82.4%, and 83.3% for RA, LA, and PV classes, respectively. Our results show that a machine learning approach can potentially identify the location of 1R sustaining AF using the 12-lead ECG.
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