Jimenez-Perez Guillermo, Acosta Juan, Bocanegra-Pérez Álvaro J, Arana-Rueda Eduardo, Frutos-López Manuel, Sánchez-Brotons Juan A, Llamas-López Helena, Di Massa Pezzutti Rodrigo, González de la Portilla Concha Carmen, Camara Oscar, Pedrote Alonso
PhySense Research Group, BCN MedTech, Universitat Pompeu Fabra, Barcelona, Spain.
Arrhythmia Unit, Department of Cardiology at Virgen Del Rocío University Hospital, Sevilla, Spain.
Front Physiol. 2024 May 7;15:1331852. doi: 10.3389/fphys.2024.1331852. eCollection 2024.
Cardiac arrhythmias cause depolarization waves to conduct unevenly on the myocardial surface, potentially delaying local components with respect to a previous beat when stimulated at faster frequencies. Despite the diagnostic value of localizing the distinct local electrocardiogram (EGM) components for identifying regions with decrement-evoked potentials (DEEPs), current software solutions do not perform automatic signal quantification. Electrophysiologists must manually measure distances on the EGM signals to assess the existence of DEEPs during pacing or extra-stimuli protocols. In this work, we present a deep learning (DL)-based algorithm to identify decrement in atrial components (measured in the coronary sinus) with respect to their ventricular counterparts from EGM signals, for disambiguating between accessory pathways (APs) and atrioventricular re-entrant tachycardias (AVRTs). Several U-Net and W-Net neural networks with different configurations were trained on a private dataset of signals from the coronary sinus (312 EGM recordings from 77 patients who underwent AP or AVRT ablation). A second, separate dataset was annotated for clinical validation, with clinical labels associated to EGM fragments in which decremental conduction was elucidated. To alleviate data scarcity, a synthetic data augmentation method was developed for generating EGM recordings. Moreover, two novel loss functions were developed to minimize false negatives and delineation errors. Finally, the addition of self-attention mechanisms and their effect on model performance was explored. The best performing model was a W-Net model with 6 levels, optimized solely with the Dice loss. The model obtained precisions of 91.28%, 77.78% and of 100.0%, and recalls of 94.86%, 95.25% and 100.0% for localizing local field, far field activations, and extra-stimuli, respectively. The clinical validation model demonstrated good overall agreement with respect to the evaluation of decremental properties. When compared to the criteria of electrophysiologists, the automatic exclusion step reached a sensitivity of 87.06% and a specificity of 97.03%. Out of the non-excluded signals, a sensitivity of 96.77% and a specificity of 95.24% was obtained for classifying them into decremental and non-decremental potentials. Current results show great promise while being, to the best of our knowledge, the first tool in the literature allowing the delineation of all local components present in an EGM recording. This is of capital importance at advancing processing for cardiac electrophysiological procedures and reducing intervention times, as many diagnosis procedures are performed by comparing segments or late potentials in subsequent cardiac cycles.
心律失常会导致去极化波在心肌表面不均匀传导,当以更快频率刺激时,相对于前一次搏动,可能会延迟局部成分。尽管定位不同的局部心电图(EGM)成分对于识别具有递减诱发电位(DEEPs)的区域具有诊断价值,但目前的软件解决方案无法进行自动信号量化。电生理学家必须手动测量EGM信号上的距离,以评估在起搏或额外刺激方案期间DEEPs的存在。在这项工作中,我们提出了一种基于深度学习(DL)的算法,用于从EGM信号中识别冠状窦中测量的心房成分相对于心室对应成分的递减情况,以区分旁路(APs)和房室折返性心动过速(AVRTs)。在来自冠状窦的信号的私有数据集(77例接受AP或AVRT消融的患者的312份EGM记录)上训练了几种具有不同配置的U-Net和W-Net神经网络。第二个单独的数据集用于临床验证,带有与阐明递减传导的EGM片段相关的临床标签。为了缓解数据稀缺问题,开发了一种合成数据增强方法来生成EGM记录。此外,还开发了两种新的损失函数,以最小化假阴性和描绘误差。最后,探索了自注意力机制的添加及其对模型性能的影响。性能最佳的模型是一个具有6层的W-Net模型,仅用Dice损失进行了优化。该模型在定位局部场、远场激活和额外刺激时,精度分别为91.28%、77.78%和100.0%,召回率分别为94.86%、95.25%和100.0%。临床验证模型在递减特性评估方面显示出良好的总体一致性。与电生理学家的标准相比,自动排除步骤的灵敏度达到87.06%,特异性达到97.03%。在未排除的信号中,将它们分类为递减和非递减电位的灵敏度为96.77%,特异性为95.24%。目前的结果显示出巨大的前景,据我们所知,这是文献中第一个能够描绘EGM记录中所有局部成分的工具。这对于推进心脏电生理程序的处理和减少干预时间至关重要,因为许多诊断程序是通过比较后续心动周期中的节段或晚期电位来进行的。