基于循环神经网络和体表电位的无创心房颤动驱动定位

"Miriam Gutiérrez Fernández-Calvillo, Miguel Ángel Cámara-Vázquez, I. Hernández-Romero, Maria de la Salud Guillem Sánchez", Andreu M. Climent, Ó. Barquero-Pérez
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引用次数: 0

摘要

消融是控制心房颤动(AF)的主要治疗方法。然而,心房颤动发生和维持的潜在机制仍然未知,这是一个重大挑战。心电图成像(ECGI)已经提出了解决这一问题,但它是一个不适定的问题,并提出了一些局限性。许多深度学习方法已被提出用于自动对焦表征,但很少提供涉及自动对焦驱动程序位置的解决方案。在这项工作中,我们提出使用身体表面电位(BSPs)和CNN-LSTM与注意层网络作为监督分类问题来寻找AF驱动程序的位置。自动驾驶的正确率为94.42%,科恩Kappa平均值为0.87。因此,所提出的模型可以作为非侵入性方法,为识别AF驱动位置提供有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Invasive Atrial Fibrillation Driver Localization Using Recurrent Neural Networks and Body Surface Potentials
Ablation is the main therapy to control Atrial Fibrillation (AF). However, the underlying mechanism for AF initiation and maintenance remains mostly unknown and represent a major challenge. ECG Imaging (ECGI) has been presented to address this issue, but it is an ill-posed problem and presents several limitations. Many Deep Learning methods have been proposed for AF characterization, but few provide a solution involving the location of the AF driver. In this work, we propose finding the location of AF drivers using Body Surface Potentials (BSPs) and CNN-LSTM with an attention layer networks as a supervised classification problem. The AF driver was correctly located the 94.42% of the time with an average Cohen's Kappa of 0.87. Hence, the proposed model could provide an effective solution for identifying AF driver location for ablation procedures as a non-invasive approach.
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