Deep learning-based reduced order models in cardiac electrophysiology
- URL: http://arxiv.org/abs/2006.03040v1
- Date: Tue, 2 Jun 2020 23:05:03 GMT
- Title: Deep learning-based reduced order models in cardiac electrophysiology
- Authors: Stefania Fresca, Andrea Manzoni, Luca Ded\`e, Alfio Quarteroni
- Abstract summary: We propose a new, nonlinear approach which exploits deep learning (DL) algorithms to obtain accurate and efficient reduced order models (ROMs)
Our DL approach combines deep feedforward neural networks (NNs) and convolutional autoencoders (AEs)
We show that the proposed DL-ROM framework can efficiently provide solutions to parametrized electrophysiology problems, thus enabling multi-scenario analysis in pathological cases.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 primarily due to
the low regularity of the solution manifold (with respect to the problem
parameters) as well as to the nonlinear nature of the input-output maps that we
intend to reconstruct numerically. To overcome this difficulty, in this paper
we propose a new, nonlinear approach which exploits deep learning (DL)
algorithms to obtain accurate and efficient ROMs, whose dimensionality matches
the number of system parameters. Our DL approach combines deep feedforward
neural networks (NNs) and convolutional autoencoders (AEs). We show that the
proposed DL-ROM framework can efficiently provide solutions to parametrized
electrophysiology problems, thus enabling multi-scenario analysis in
pathological cases. We investigate three challenging test cases in cardiac
electrophysiology and prove that DL-ROM outperforms classical projection-based
ROMs.
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