Fast and reliable reduced-order models for cardiac electrophysiology

Q1 Mathematics
Sridhar Chellappa, Barış Cansız, Lihong Feng, Peter Benner, Michael Kaliske
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引用次数: 0

Abstract

Mathematical models of the human heart increasingly play a vital role in understanding the working mechanisms of the heart, both under healthy functioning and during disease. The ultimate aim is to aid medical practitioners diagnose and treat the many ailments affecting the heart. Towards this, modeling cardiac electrophysiology is crucial as the heart's electrical activity underlies the contraction mechanism and the resulting pumping action. Apart from modeling attempts, the pursuit of efficient, reliable, and fast solution algorithms has been of great importance in this context. The governing equations and the constitutive laws describing the electrical activity in the heart are coupled, nonlinear, and involve a fast moving wave front, which is generally solved by the finite element method. The numerical treatment of this complex system as part of a virtual heart model is challenging due to the necessity of fine spatial and temporal resolution of the domain. Therefore, efficient surrogate models are needed to predict the electrical activity in the heart under varying parameters and inputs much faster than the finely resolved models. In this work, we develop an adaptive, projection-based reduced-order surrogate model for cardiac electrophysiology. We introduce an a posteriori error estimator that can accurately and efficiently quantify the accuracy of the surrogate model. Using the error estimator, we systematically update our surrogate model through a greedy search of the parameter space. Furthermore, using the error estimator, the parameter search space is dynamically updated such that the most relevant samples get chosen at every iteration. The proposed adaptive surrogate model is tested on three benchmark models to illustrate its efficiency, accuracy, and ability of generalization.

Abstract Image

快速可靠的心脏电生理降阶模型
人类心脏的数学模型在理解心脏的工作机制方面发挥着越来越重要的作用,无论是在健康功能下还是在疾病期间。最终目的是帮助医生诊断和治疗影响心脏的许多疾病。为此,心脏电生理学建模是至关重要的,因为心脏的电活动是收缩机制和由此产生的泵送作用的基础。除了建模尝试之外,追求高效、可靠和快速的求解算法在这种情况下非常重要。描述心脏电活动的控制方程和本构律是耦合的、非线性的,并且涉及一个快速移动的波前,通常用有限元法求解。由于需要精细的空间和时间分辨率,将这种复杂系统作为虚拟心脏模型的一部分进行数值处理是具有挑战性的。因此,需要有效的替代模型来预测不同参数和输入下的心脏电活动,比精细分解的模型快得多。在这项工作中,我们开发了一个自适应的,基于投影的心脏电生理降阶代理模型。我们引入了一个后验误差估计器,可以准确有效地量化代理模型的准确性。利用误差估计器,通过贪心搜索参数空间,系统地更新代理模型。此外,利用误差估计器对参数搜索空间进行动态更新,使每次迭代都能选择最相关的样本。在三个基准模型上对所提出的自适应代理模型进行了测试,以说明其效率、准确性和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
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