Back to Search Start Over

Inverse Mechano-Electrical Reconstruction of Cardiac Excitation Wave Patterns from Mechanical Deformation using Deep Learning

Authors :
Christoph, Jan
Lebert, Jan
Source :
Chaos: An Interdisciplinary Journal of Nonlinear Science 30, 121107 (2020)
Publication Year :
2020

Abstract

The inverse mechano-electrical problem in cardiac electrophysiology is the attempt to reconstruct electrical excitation or action potential wave patterns from the heart's mechanical deformation that occurs in response to electrical excitation. Because heart muscle cells contract upon electrical excitation due to the excitation-contraction coupling mechanism, the resulting deformation of the heart should reflect macroscopic action potential wave phenomena. However, whether the relationship between macroscopic electrical and mechanical phenomena is well-defined and furthermore unique enough to be utilized for an inverse imaging technique, in which mechanical activation mapping is used as a surrogate for electrical mapping, has yet to be determined. Here, we provide a numerical proof-of-principle that deep learning can be used to solve the inverse mechano-electrical problem in phenomenological two- and three-dimensional computer simulations of the contracting heart wall, or in elastic excitable media, with muscle fiber anisotropy. We trained a convolutional autoencoder neural network to learn the complex relationship between electrical excitation, active stress, and tissue deformation during both focal or reentrant chaotic wave activity, and consequently used the network to succesfully estimate or reconstruct electrical excitation wave patterns from mechanical deformation in sheets and bulk-shaped tissues, even in the presence of noise and at low spatial resolutions. We demonstrate that even complicated three-dimensional electrical excitation wave phenomena, such as scroll waves and their vortex filaments, can be computed with very high reconstruction accuracies of about 95% from mechanical deformation using autoencoder neural networks, and we provide a comparison with results that were obtained previously with a physics- or knowledge-based approach.<br />Comment: original revision from November 2020

Details

Database :
arXiv
Journal :
Chaos: An Interdisciplinary Journal of Nonlinear Science 30, 121107 (2020)
Publication Type :
Report
Accession number :
edsarx.2008.01640
Document Type :
Working Paper
Full Text :
https://doi.org/10.1063/5.0023751