Learning atrial fiber orientations and conductivity tensors from intracardiac maps using physics-informed neural networks.

Thomas Grandits, Simone Pezzuto, Francisco Sahli Costabal, Paris Perdikaris, Thomas Pock, Gernot Plank, Rolf Krause
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引用次数: 14

Abstract

Electroanatomical maps are a key tool in the diagnosis and treatment of atrial fibrillation. Current approaches focus on the activation times recorded. However, more information can be extracted from the available data. The fibers in cardiac tissue conduct the electrical wave faster, and their direction could be inferred from activation times. In this work, we employ a recently developed approach, called physics informed neural networks, to learn the fiber orientations from electroanatomical maps, taking into account the physics of the electrical wave propagation. In particular, we train the neural network to weakly satisfy the anisotropic eikonal equation and to predict the measured activation times. We use a local basis for the anisotropic conductivity tensor, which encodes the fiber orientation. The methodology is tested both in a synthetic example and for patient data. Our approach shows good agreement in both cases and it outperforms a state of the art method in the patient data. The results show a first step towards learning the fiber orientations from electroanatomical maps with physics-informed neural networks.

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使用物理信息神经网络从心内图学习心房纤维取向和电导率张量。
电解剖图是房颤诊断和治疗的重要工具。当前的方法侧重于记录的激活时间。但是,可以从现有数据中提取更多信息。心脏组织中的纤维传导电波的速度更快,其方向可以从激活时间推断出来。在这项工作中,我们采用了一种最近开发的方法,称为物理通知神经网络,从电解剖图中学习纤维方向,同时考虑到电波传播的物理特性。特别是,我们训练神经网络弱满足各向异性方程,并预测测量的激活时间。我们对各向异性电导率张量使用局部基来编码光纤的方向。该方法在一个综合示例和患者数据中进行了测试。我们的方法在两种情况下都表现出良好的一致性,并且在患者数据中优于最先进的方法。研究结果表明,利用物理信息神经网络从电解剖图中学习纤维方向迈出了第一步。
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