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Physics-informed graph neural networks for flow field estimation in carotid arteries.

February 7, 2026pubmed logopapers

Authors

Suk J,Alblas D,Hutten BA,Wiegman A,Brune C,van Ooij P,Wolterink JM

Affiliations (7)

  • University of Twente, Enschede, Netherlands. Electronic address: [email protected].
  • University of Twente, Enschede, Netherlands. Electronic address: [email protected].
  • Amsterdam University Medical Center, Amsterdam, Netherlands; Research Institute Amsterdam Cardiovascular Sciences, Diabetes & Metabolism, Amsterdam, Netherlands. Electronic address: [email protected].
  • Amsterdam University Medical Center, Amsterdam, Netherlands; Research Institute Amsterdam Cardiovascular Sciences, Diabetes & Metabolism, Amsterdam, Netherlands. Electronic address: [email protected].
  • University of Twente, Enschede, Netherlands. Electronic address: [email protected].
  • Amsterdam University Medical Center, Amsterdam, Netherlands. Electronic address: [email protected].
  • University of Twente, Enschede, Netherlands. Electronic address: [email protected].

Abstract

Hemodynamic quantities are valuable biomedical risk factors for cardiovascular pathology such as atherosclerosis. Non-invasive, in-vivo measurement of these quantities can only be performed using a select number of modalities that are not widely available, such as 4D flow magnetic resonance imaging (MRI). In this work, we create a surrogate model for hemodynamic flow field estimation, powered by machine learning. We train graph neural networks that include priors about the underlying symmetries and physics, limiting the amount of data required for training. This allows us to train the model using moderately-sized, in-vivo 4D flow MRI datasets, instead of large in-silico datasets obtained by computational fluid dynamics (CFD), as is the current standard. We create an efficient, equivariant neural network by combining the popular PointNet++ architecture with group-steerable layers. To incorporate the physics-informed priors, we derive an efficient discretisation scheme for the involved differential operators. We perform extensive experiments in carotid arteries and show that our model can accurately estimate low-noise hemodynamic flow fields in the carotid artery. Moreover, we show how the learned relation between geometry and hemodynamic quantities transfers to 3D vascular models obtained using a different imaging modality than the training data. This shows that physics-informed graph neural networks can be trained using 4D flow MRI data to estimate blood flow in unseen carotid artery geometries.

Topics

Neural Networks, ComputerCarotid ArteriesMagnetic Resonance ImagingMagnetic Resonance AngiographyJournal Article

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