Muffoletto Marica, Qureshi Ahmed, Zeidan Aya, Muizniece Laila, Fu Xiao, Zhao Jichao, Roy Aditi, Bates Paul A, Aslanidi Oleg
School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom.
Biomolecular Modelling Laboratory, The Francis Crick Institute, London, United Kingdom.
Front Physiol. 2021 May 26;12:674106. doi: 10.3389/fphys.2021.674106. eCollection 2021.
Atrial fibrillation (AF) is a common cardiac arrhythmia that affects 1% of the population worldwide and is associated with high levels of morbidity and mortality. Catheter ablation (CA) has become one of the first line treatments for AF, but its success rates are suboptimal, especially in the case of persistent AF. Computational approaches have shown promise in predicting the CA strategy using simulations of atrial models, as well as applying deep learning to atrial images. We propose a novel approach that combines image-based computational modelling of the atria with deep learning classifiers trained on patient-specific atrial models, which can be used to assist in CA therapy selection. Therefore, we trained a deep convolutional neural network (CNN) using a combination of (i) 122 atrial tissue images obtained by unfolding patient LGE-MRI datasets, (ii) 157 additional synthetic images derived from the patient data to enhance the training dataset, and (iii) the outcomes of 558 CA simulations to terminate several AF scenarios in the corresponding image-based atrial models. Four CNN classifiers were trained on this patient-specific dataset balanced using several techniques to predict three common CA strategies from the patient atrial images: pulmonary vein isolation (PVI), rotor-based ablation (Rotor) and fibrosis-based ablation (Fibro). The training accuracy for these classifiers ranged from 96.22 to 97.69%, while the validation accuracy was from 78.68 to 86.50%. After training, the classifiers were applied to predict CA strategies for an unseen holdout test set of atrial images, and the results were compared to outcomes of the respective image-based simulations. The highest success rate was observed in the correct prediction of the Rotor and Fibro strategies (100%), whereas the PVI class was predicted in 33.33% of the cases. In conclusion, this study provides a proof-of-concept that deep neural networks can learn from patient-specific MRI datasets and image-derived models of AF, providing a novel technology to assist in tailoring CA therapy to a patient.
心房颤动(AF)是一种常见的心律失常,全球1%的人口受其影响,且与高发病率和死亡率相关。导管消融(CA)已成为AF的一线治疗方法之一,但其成功率并不理想,尤其是在持续性AF的情况下。计算方法在使用心房模型模拟预测CA策略以及将深度学习应用于心房图像方面已显示出前景。我们提出了一种新颖的方法,将基于图像的心房计算建模与在患者特异性心房模型上训练的深度学习分类器相结合,可用于辅助CA治疗选择。因此,我们使用以下组合训练了一个深度卷积神经网络(CNN):(i)通过展开患者的延迟增强磁共振成像(LGE-MRI)数据集获得的122幅心房组织图像;(ii)从患者数据中衍生的157幅额外合成图像以增强训练数据集;(iii)558次CA模拟的结果,用于在相应的基于图像的心房模型中终止几种AF情况。在这个使用多种技术平衡构建的患者特异性数据集上训练了四个CNN分类器,以从患者心房图像中预测三种常见的CA策略:肺静脉隔离(PVI)、基于转子的消融(Rotor)和基于纤维化的消融(Fibro)。这些分类器的训练准确率在96.22%至97.69%之间,而验证准确率在78.68%至86.50%之间。训练后,将分类器应用于预测一组未见的心房图像保留测试集的CA策略,并将结果与相应的基于图像的模拟结果进行比较。在正确预测Rotor和Fibro策略方面观察到最高成功率(100%),而PVI类别在33.33%的病例中被预测。总之,本研究提供了一个概念验证,即深度神经网络可以从患者特异性MRI数据集和AF的图像衍生模型中学习,提供一种新技术来辅助为患者量身定制CA治疗。