TL;DR
This paper introduces a deep learning-based reduced order modeling framework for cardiac electrophysiology, enabling efficient multi-scenario analysis of complex nonlinear systems that traditional methods struggle to reduce.
Contribution
The paper presents a novel nonlinear deep learning approach combining neural networks and autoencoders to create reduced order models for cardiac electrophysiology, overcoming limitations of classical methods.
Findings
DL-ROM outperforms classical projection-based ROMs in test cases.
The framework efficiently solves parametrized electrophysiology problems.
Enables multi-scenario analysis in pathological cardiac cases.
Abstract
Predicting the electrical behavior of the heart, from the cellular scale to the tissue level, relies on the formulation and numerical approximation of coupled nonlinear dynamical systems. These systems describe the cardiac action potential, that is the polarization/depolarization cycle occurring at every heart beat that models the time evolution of the electrical potential across the cell membrane, as well as a set of ionic variables. Multiple solutions of these systems, corresponding to different model inputs, are required to evaluate outputs of clinical interest, such as activation maps and action potential duration. More importantly, these models feature coherent structures that propagate over time, such as wavefronts. These systems can hardly be reduced to lower dimensional problems by conventional reduced order models (ROMs) such as, e.g., the reduced basis (RB) method. This is…
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