Vatsaraj Ishan, Mohsen Yazan, Grüne Lukas, Steffens Lucas, Loeffler Shane, Horlitz Marc, Stöckigt Florian, Trayanova Natalia
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA; Alliance for Cardiovascular Diagnostic and Treatment Innovation, Johns Hopkins University, Baltimore, MD, USA.
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA; Alliance for Cardiovascular Diagnostic and Treatment Innovation, Johns Hopkins University, Baltimore, MD, USA; Department of Cardiology, Faculty of Health, School of Medicine, University Witten/Herdecke, Witten, Germany; Krankenhaus Porz am Rhein, Department of Cardiology, Electrophysiology and Rhythmology, Cologne, Germany.
J Electrocardiol. 2025 Mar-Apr;89:153862. doi: 10.1016/j.jelectrocard.2024.153862. Epub 2024 Dec 25.
Atrial fibrillation (AF), a common arrhythmia, is linked with atrial electrical and structural changes, notably low voltage areas (LVAs) which are associated with poor ablation outcomes and increased thromboembolic risk. This study aims to evaluate the efficacy of a deep learning model applied to 12‑lead ECGs for non-invasively predicting the presence of LVAs, potentially guiding pre-ablation strategies and improving patient outcomes.
A retrospective analysis was conducted on 204 AF patients, who underwent catheter ablation. Pre-procedural sinus rhythm ECGs and electroanatomical maps (EAM) were utilized alongside demographic data to train a deep learning model combining Long Short-Term Memory networks and Convolutional Neural Networks with a cross-attention layer. Model performance was evaluated using a 5-fold cross-validation strategy.
The model effectively identified the presence of LVA on the examined atrial walls, achieving accuracies of 78 % for both the anterior and posterior walls, and 82 % for the LA roof. Moreover, it accurately predicted the global left atrial (LA) average voltage <0.7 mV, with an accuracy of 88 %.
The study showcases the potential of deep learning applied to 12‑lead ECGs to effectively predict regional LVAs and global LA voltage in AF patients non-invasively. This model offers a promising tool for the pre-ablation assessment of atrial substrate, facilitating personalized therapeutic strategies and potentially enhancing ablation success rates.
心房颤动(AF)是一种常见的心律失常,与心房电和结构变化有关,特别是低电压区域(LVAs),其与消融效果不佳和血栓栓塞风险增加相关。本研究旨在评估应用于12导联心电图的深度学习模型对LVAs存在进行无创预测的有效性,潜在地指导消融前策略并改善患者预后。
对204例接受导管消融的AF患者进行回顾性分析。术前窦性心律心电图和电解剖图(EAM)与人口统计学数据一起用于训练一个结合长短期记忆网络、卷积神经网络和交叉注意力层的深度学习模型。使用5折交叉验证策略评估模型性能。
该模型有效地识别了所检查心房壁上LVA的存在,前壁和后壁的准确率均为78%,左心房顶部的准确率为82%。此外,它准确地预测了左心房(LA)整体平均电压<0.7mV,准确率为88%。
该研究展示了将深度学习应用于12导联心电图以无创地有效预测AF患者局部LVAs和左心房整体电压的潜力。该模型为心房基质的消融前评估提供了一个有前景的工具,有助于制定个性化治疗策略并可能提高消融成功率。