Archive/A Preliminary Analysis of a Physics-Informed Neural Network for the Forward Problem in EEG
A Preliminary Analysis of a Physics-Informed Neural Network for the Forward Problem in EEG
Athanassios S. Fokas, Alireza Afzal Aghaei, Parham Hashemzadeh
9 juillet 2026
en

Abstract

The distributed inverse source problem in electroencephalography (EEG) requires the determination of a current-independent, geometry-dependent auxiliary function, which is defined by a Poisson partial differential equation (PDE), where its solution is referred to as the forward problem. In this study, we investigate the feasibility of employing a mesh-free Physics-Informed Neural Network (PINN) for obtaining this auxiliary function. The proposed architecture integrates Kolmogorov–Arnold Networks (KANs) into an extended PINN (XPINN) framework augmented with Multi-scale Fourier feature mappings to capture potential field discontinuities across piecewise-homogeneous tissue interfaces. The PINN loss functional incorporates the governing PDE, Neumann boundary conditions, flux continuity and reference data for specific neuronal source and electrode configurations. Numerical experiments on a three-layer spherical head model demonstrate that the XPIKAN surrogate achieves a relative L2 error below 1% on unseen sensor coordinates. Factorial sensitivity analyses confirm stable model generalization across varying source-sensor configurations without the need for dense volumetric meshes. As a result, XPIKAN provides a meshless, continuous, and differentiable solution that offers faster inference time compared to classical solvers like finite element or boundary element methods and enables exact gradient computation for inverse source localization.

IPC Classification

G06H04

Keywords

preliminaryanalysisphysics-informedneuralnetworkforwardproblembiomedinformaticsdistributedinversesourceelectroencephalographyrequiresdeterminationcurrent-independentgeometry-dependentauxiliaryfunctionwhichdefinedpoissonpartialdifferentialequation
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