4.6 Article

Physics-Informed Neural Networks for Cardiac Activation Mapping

期刊

FRONTIERS IN PHYSICS
卷 8, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fphy.2020.00042

关键词

machine learning; cardiac electrophysiology; Eikonal equation; electro-anatomic mapping; atrial fibrillation; physics-informed neural networks; uncertainty quantification; active learning

资金

  1. School of Engineering Postdoctoral Fellowship from Pontificia Universidad Catolica de Chile
  2. FONDECYT [3190355]
  3. US Department of Energy under the Advanced Scientific Computing Research [DE-SC0019116]
  4. Defense Advanced Research Projects Agency [HR00111890034]
  5. Millenium Science Initiative of the Ministry of Economy, Development and Tourism of Chile, grant Nucleus for Cardiovascular Magnetic Resonance
  6. U.S. Department of Energy (DOE) [DE-SC0019116] Funding Source: U.S. Department of Energy (DOE)

向作者/读者索取更多资源

A critical procedure in diagnosing atrial fibrillation is the creation of electro-anatomic activation maps. Current methods generate these mappings from interpolation using a few sparse data points recorded inside the atria; they neither include prior knowledge of the underlying physics nor uncertainty of these recordings. Here we propose a physics-informed neural network for cardiac activation mapping that accounts for the underlying wave propagation dynamics and we quantify the epistemic uncertainty associated with these predictions. These uncertainty estimates not only allow us to quantify the predictive error of the neural network, but also help to reduce it by judiciously selecting new informative measurement locations via active learning. We illustrate the potential of our approach using a synthetic benchmark problem and a personalized electrophysiology model of the left atrium. We show that our new method outperforms linear interpolation and Gaussian process regression for the benchmark problem and linear interpolation at clinical densities for the left atrium. In both cases, the active learning algorithm achieves lower error levels than random allocation. Our findings open the door toward physics-based electro-anatomic mapping with the ultimate goals to reduce procedural time and improve diagnostic predictability for patients affected by atrial fibrillation. Open source code is available at https://github.com/fsahli/EikonalNet.

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