Full-field surrogate modeling of cardiac electrophysiology encoding geometric variability

Journal Article (2026)
Author(s)

Elena Sabdy Martinez (Stanford University)

Beatrice Moscoloni (TU Delft - Medical Instruments & Bio-Inspired Technology, Universiteit Gent)

Matteo Salvador (Pasteur Labs, Stanford University)

Fanwei Kong (Stanford University)

Mathias Peirlinck (TU Delft - Medical Instruments & Bio-Inspired Technology)

Alison Lesley Marsden (Stanford University)

Research Group
Medical Instruments & Bio-Inspired Technology
DOI related publication
https://doi.org/10.1016/j.cma.2025.118444
More Info
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Publication Year
2026
Language
English
Research Group
Medical Instruments & Bio-Inspired Technology
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository 'You share, we take care!' - Taverne project https://www.openaccess.nl/en/publishing/publisher-deals Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public.@en
Volume number
448
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Abstract

Combining physics-based modeling with data-driven methods is critical to enabling the translation of computational methods to clinical use in cardiology. The use of rigorous differential equations combined with machine learning tools allows for model personalization with uncertainty quantification in time frames compatible with clinical practice. However, accurate and efficient surrogate models of cardiac function, built from physics-based numerical simulation, are still mostly geometry-specific and require retraining for different patients and pathological conditions. We propose a novel computational pipeline to embed cardiac anatomies into full-field surrogate models. We generate a dataset of electrophysiology simulations using an accurate multi-scale mathematical model coupling partial and ordinary differential equations. We adopt Branched Latent Neural Maps (BLNMs) as a computationally efficient scientific machine learning method to encode activation maps extracted from physics-based numerical simulations into a neural network. Leveraging large deformation diffeomorphic metric mappings, we build a biventricular anatomical atlas and parametrize the anatomical variability of a small and challenging cohort of 13 pediatric patients affected by Tetralogy of Fallot. We propose a novel z-score sampling approach based on statistical shape modeling to generate a new synthetic cohort of 52 biventricular geometries that are compatible with the original geometrical variability. This synthetic cohort acts as the training set for BLNMs. Our surrogate model demonstrates robustness and great generalization across the complex original patient cohort, achieving an average adimensional mean squared error of 0.0034. The Python implementation of our BLNM model is publicly available under MIT License at https://github.com/StanfordCBCL/BLNM.

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