MED-PHCVIVBIO-PHSep 22, 2021

Rotor Localization and Phase Mapping of Cardiac Excitation Waves using Deep Neural Networks

arXiv:2109.10472v220 citations
Originality Synthesis-oriented
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This work addresses the problem of improving cardiac mapping for diagnosing heart rhythm disorders, though it appears incremental as it applies existing deep learning methods to a specific domain.

The researchers tackled the challenge of accurately visualizing cardiac excitation waves from noisy or sparse mapping data by using deep neural networks to compute phase maps and detect phase singularities, achieving successful predictions across different species and from simulated to experimental data.

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 videos of ventricular fibrillation, as well as in very noisy, low-resolution and extremely sparse simulated data of reentrant wave chaos mimicking catheter mapping data. The deep learning approach learns to directly associate phase maps and the positions of phase singularities with short spatio-temporal sequences of electrical data. We tested several neural network architectures, based on a convolutional neural network with an encoding and decoding structure, to predict phase maps or rotor core positions either directly or indirectly via the prediction of phase maps and a subsequent classical calculation of phase singularities. Predictions can be performed across different data, with models being trained on one species and then successfully applied to another, or being trained solely on simulated data and then applied to experimental data. Future uses may include the analysis of optical mapping studies in basic cardiovascular research, as well as the mapping of atrial fibrillation in the clinical setting.

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