Rotor Localization and Phase Mapping of Cardiac Excitation Waves using Deep Neural Networks
Jan Lebert, Namita Ravi, Flavio Fenton, Jan Christoph

TL;DR
This paper demonstrates that deep neural networks can accurately compute phase maps and detect phase singularities in cardiac electrical activity data, improving visualization of arrhythmogenic wave phenomena despite noise and sparse measurements.
Contribution
The study introduces a deep learning approach for phase mapping and rotor detection in cardiac electrophysiology, capable of handling noisy, sparse, and cross-species data, advancing cardiac mapping techniques.
Findings
Deep learning accurately predicts phase maps and rotor cores.
Models trained on simulated data transfer well to experimental data.
Neural networks outperform traditional methods in noisy, sparse conditions.
Abstract
The analysis of electrical impulse phenomena in cardiac muscle tissue is important for the diagnosis of heart rhythm disorders and other cardiac pathophysiology. Cardiac mapping techniques acquire local temporal measurements and combine them to visualize the spread of electrophysiological wave phenomena across the heart surface. However, low spatial resolution, sparse measurement locations, noise and other artifacts make it challenging to accurately visualize spatio-temporal activity. For instance, electro-anatomical catheter mapping is severely limited by the sparsity of the measurements, and optical mapping is prone to noise and motion artifacts. In the past, several approaches have been proposed to obtain more reliable maps from noisy or sparse mapping data. Here, we demonstrate that deep learning can be used to compute phase maps and detect phase singularities in optical mapping…
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