Conditionally Exponential Prior in Focal Near- and Far-Field EEG Source Localization via Randomized Multiresolution Scanning (RAMUS)
Joonas Lahtinen, Alexandra Koulouri, Atena Rezaei, Sampsa Pursiainen

TL;DR
This paper introduces a hierarchical conditionally exponential prior (CEP) for EEG source localization, enhancing focality and depth recovery by combining RAMUS sampling and physiological priors, outperforming existing methods in accuracy and robustness.
Contribution
The paper proposes a novel hierarchical exponential prior (CEP) for EEG source localization, generalizing Gaussian priors to improve focality and depth recovery in non-invasive brain activity reconstruction.
Findings
CEP combined with RAMUS achieves high focality and depth recovery.
The hybrid CEP-RAMUS method is robust to noise.
Performance compares favorably with SESAME in simulations.
Abstract
In this paper, we focus on the inverse problem of reconstructing distributional brain activity with cortical and weakly detectable deep components in non-invasive Electroencephalography. In particular, we aim to generalize the previously extensively used conditionally Gaussian prior (CGP) formalism to achieve distributional reconstructions with higher focality. For this purpose, we introduce as a hierarchical prior, a general exponential distribution, refered to as conditionally exponential prior (CEP). The first-degree CEP corresponds to focality enforcing Laplace prior that suffers from strong depth bias making the deep activity unrecoverable. We sample over multiple resolution levels via RAMUS to reduce this bias as it is known to depend on the resolution of the source space. Moreover, we introduce a procedure based on the physiological a priori knowledge of the brain activity to…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Functional Brain Connectivity Studies · Sparse and Compressive Sensing Techniques
