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Physics-based Deep Spatio-temporal Metamodeling for Cardiac Electrical Conduction Simulation

机译:基于物理的心脏导电仿真深度时空元模拟

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Modeling and simulation have been widely used in both cardiac research and clinical study to investigate cardiac disease mechanism and develop new treatment design. Electrical conduction among cardiac tissue is commonly modeled with a partial differential equation, i.e., reaction-diffusion equation, where the reaction term describes cellular excitation and diffusion term describes electrical propagation. Cellular excitation can be modeled by either detailed human cellular models or simplified models such as the FitzHugh-Nagumo model; electrical propagation can be simulated using either biodomain or mono-domain tissue model. However, existing cardiac models have a great level of complexity, and the simulation is often time-consuming. This paper develops a new spatiotemporal model as a surrogate model of the timeconsuming cardiac model. Specifically, we propose to investigate the auto-regressive convolutional neural network (AR-CNN) and convolutional long short-term memory (Conv-LSTM) to model the spatial and temporal structure for the metamodeling. Model predictions are compared to the one-dimensional simulation data to validate the prediction accuracy. The metamodel can accurately capture the properties of the individual cardiac cell, as well as the electrical wave morphology in cardiac fiber at different simulation scenarios, which demonstrates its superior performance in modeling and the long-term prediction.
机译:心脏病研究和临床研究的建模和仿真已被广泛应用于探讨心脏病机制,开发新型治疗设计。心脏组织之间的电导通常用部分微分方程,即反应扩散方程进行建模,其中反应术语描述蜂窝激发和扩散术语描述电传播。细胞激励可以通过详细的人类蜂窝模型或简化模型如Fitzhugh-Nagumo模型进行建模;可以使用生物瘤或单结构域组织模型来模拟电传播。然而,现有的心脏模型具有巨大的复杂性,并且模拟通常是耗时的。本文开发了一种新的时空模型作为时序心脏模型的代理模型。具体而言,我们建议研究自动回归卷积神经网络(AR-CNN)和卷积的长短期存储器(CONC-LSTM)以模拟元素的空间和时间结构。将模型预测与一维模拟数据进行比较以验证预测精度。元模型可以准确地捕获各种心脏细胞的性质,以及在不同模拟场景下心脏纤维的电波形态,这证明了其在建模和长期预测方面的卓越性能。

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