Unified Bayesian estimator of EEG reference at infinity: rREST
Shiang Hu, Dezhong Yao, Pedro A. Valdes-Sosa

TL;DR
This paper introduces a unified Bayesian framework for EEG referencing, combining average reference and REST into a single model, and demonstrates improved estimation accuracy through simulations and real EEG analysis.
Contribution
It formulates EEG reference estimation as a Bayesian inverse problem, unifying AR and REST, and develops regularized estimators with superior performance.
Findings
rREST achieves lowest potential estimation error in simulations
Real EEG analysis shows rREST outperforms traditional methods
Volume conductor models enhance REST and rREST performance
Abstract
The choice of reference for electroencephalogram (EEG) is a long-lasting unsolved issue resulting in inconsistent usages and endless debates. Currently, both average reference (AR) and reference electrode standardization technique (REST) are two primary, irreconcilable contenders. We propose a theoretical framework to resolve this issue by formulating both a) estimation of potentials at infinity, and, b) determination of the reference, as a unified Bayesian linear inverse problem. We find that AR and REST are very particular cases of this unified framework: AR results from biophysically non-informative prior; while REST utilizes the prior of EEG generative model. We develop the regularized versions of AR and REST, named rAR, and rREST, respectively. Both depend on a regularization parameter that is the noise to signal ratio. Traditional and new estimators are evaluated with this…
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