TL;DR
This paper demonstrates that deep learning can accurately reconstruct electrical excitation patterns in the heart from mechanical deformation data in simulations, offering a new approach for inverse cardiac imaging.
Contribution
It introduces a convolutional autoencoder neural network that successfully infers electrical wave patterns from mechanical deformation in 2D and 3D heart models, including complex phenomena like scroll waves.
Findings
Achieved about 95% accuracy in reconstructing electrical waves.
Successfully applied to complex 3D scroll wave phenomena.
Outperformed previous physics-based methods.
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…
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