A Neural Latent Dynamics Approach for Solving Inverse Problems in Cardiac Electrophysiology

Keywords

Computational learning
Computational Medicine for the Cardiocirculatory System
Health Analytics
Living Systems and Precision Medicine
Code:
37/2026
Title:
A Neural Latent Dynamics Approach for Solving Inverse Problems in Cardiac Electrophysiology
Date:
Thursday 7th May 2026
Author(s):
Centofanti, E.; Ziarelli, G.; Scacchi, S.; Pavarino, L.F.
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Abstract:
Solving inverse problems in cardiac electrophysiology consists in the recovery of physiological parameters from surface electrocardiogram (ECG) measurements, a task which is often computationally unfeasible due to the severe ill-posedness and the prohibitive computational complexity of PDE-constrained optimization. In this work, we introduce a data-driven framework leveraging Latent Dynamics Networks (LDNets) to construct efficient surrogate models of the forward operator. By mapping low-dimensional parameters, representing ectopic activation sites or ischemic region descriptors, to the ECG signals via latent dynamics governed by neural ordinary differential equations, our approach circumvents the computational burden of evaluating high-fidelity cardiac models during iterative parameter estimation. The surrogate is trained offline on high-fidelity data, enabling rapid and robust inversion. We validate the proposed framework through rigorous numerical experiments with synthetic data across both 2d and 3d geometries. Results show that the LDNet-based surrogate achieves precise reconstruction of cardiac parameters while drastically reducing computational overhead, thereby enabling near real-time clinical applications.