Abstract
EEG Source localization is a critical tool in neuroscience, with applications ranging from epilepsy diagnosis to cognitive research. It involves solving an ill-posed inverse problem that lacks a unique solution unless constrained by prior knowledge. The Bayesian framework enables the incorporation of such knowledge, typically encoded through prior models. Various algorithms have been proposed for source localization, and they differ significantly in how prior knowledge is incorporated. Some approaches rely on anatomical or functional constraints, while others use statistical distributions or sampling-based techniques. In this landscape, the Standardized Kalman Filter (SKF) represents a dynamic Bayesian approach that integrates temporal modeling with a Gaussian prior structure. It addresses the depth bias, a common limitation in source localization, through a post-hoc standardization step that equalizes sensitivity across cortical depths and makes deep activity detection feasible. This study focuses on the development and optimization of Gaussian prior models within the SKF framework for simultaneous cortical and sub-cortical activity detection. Synthetic data similar to the P20/N20 component of the Somatosensory Evoked Potentials (SEP) was used to identify effective prior parameter configurations for reconstructing both deep and superficial sources under different noise levels. We also investigated the role of RTS smoothing in enhancing source separability. Our results indicate that raising the standardization exponent to 1.25, along with smoothing, significantly improves depth localization accuracy at low noise levels. By contributing to the relatively underexplored area of prior development in dynamic Bayesian frameworks, this work supports the viability of distributional estimation methods and provides a basis for future research into more flexible and adaptive prior structures for source localization.
| Original language | English |
|---|---|
| Article number | 110233 |
| Journal | Biomedical Signal Processing and Control |
| Volume | 121 |
| Early online date | 11 Apr 2026 |
| DOIs | |
| Publication status | E-pub ahead of print - 11 Apr 2026 |
Data Availability Statement
No data was used for the research described in the article.Acknowledgements
This study was supported by the Research Council of Finland (RCF) through the Center of Excellence in Inverse modeling and Imaging 2018–2025 (353089) and the Flagship of Advanced Mathematics for Sensing, Imaging and modeling (FAME) (359185), Doctoral Education Pilot on Advanced Mathematics for Modeling, Sensing, and Imaging (DREAM), Ministry of Education and Culture, Finland, VN/3137/2024. The work of J. Lahtinen was supported by the Jenny and Antti Wihuri Foundation. For travel support, we are grateful to the joint DAAD/RCF researcher exchange project (RCF 367453), which has provided us the chance to visit Insitute for Biomagnetism and Biosignalanalysis (IBB), University of Münster, Münster, Germany. AK was supported by the institute for mathematical innovation, University of Bath, UK . AK and SP were also supported by project 359198.Keywords
- Electroencephalography (EEG)
- Inverse problem
- Kalman filter
- Source localization
- Standardization
ASJC Scopus subject areas
- Signal Processing
- Biomedical Engineering
- Health Informatics
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