Abstract

The estimation of EEG generating sources constitutes an Inverse Problem (IP) in Neuroscience. This is an ill-posed problem due to the non-uniqueness of the solution and regularization or prior information is needed to undertake Electrophysiology Source Imaging. Structured Sparsity priors can be attained through combinations of (L1 norm-based) and (L2 norm-based) constraints such as the Elastic Net (ENET) and Elitist Lasso (ELASSO) models. The former model is used to find solutions with a small number of smooth nonzero patches, while the latter imposes different degrees of sparsity simultaneously along different dimensions of the spatio-temporal matrix solutions. Both models have been addressed within the penalized regression approach, where the regularization parameters are selected heuristically, leading usually to non-optimal and computationally expensive solutions. The existing Bayesian formulation of ENET allows hyperparameter learning, but using the computationally intensive Monte Carlo/Expectation Maximization methods, which makes impractical its application to the EEG IP. While the ELASSO have not been considered before into the Bayesian context. In this work, we attempt to solve the EEG IP using a Bayesian framework for ENET and ELASSO models. We propose a Structured Sparse Bayesian Learning algorithm based on combining the Empirical Bayes and the iterative coordinate descent procedures to estimate both the parameters and hyperparameters. Using realistic simulations and avoiding the inverse crime we illustrate that our methods are able to recover complicated source setups more accurately and with a more robust estimation of the hyperparameters and behavior under different sparsity scenarios than classical LORETA, ENET and LASSO Fusion solutions. We also solve the EEG IP using data from a visual attention experiment, finding more interpretable neurophysiological patterns with our methods. The Matlab codes used in this work, including Simulations, Methods, Quality Measures and Visualization Routines are freely available in a public website.

Highlights

  • Electrophysiological Source Imaging (ESI) constitutes a relatively inexpensive and non-invasive approach to study neural activity with a high temporal resolution

  • In this work we introduced a Bayesian formulation of Structured Sparsity regularization models combining L1/L2 norm constraints, for solving the EEG Inverse Problem (IP)

  • We developed Elastic Net (ENET) and Elitist Lasso (ELASSO) models that have been previously addressed with the classical statistical framework, which presents practical limitations for selecting optimal values for one or more regularization parameters that are critical for correctly estimate solutions

Read more

Summary

Introduction

Electrophysiological Source Imaging (ESI) constitutes a relatively inexpensive and non-invasive approach to study neural activity with a high temporal resolution. ESI is a classic example of an Inverse Problem (usually referred to as EEG IP), given the little amount of data available as compared to the large number of parameters needed to model the spatially distributed whole brain activity this problem is ill-posed in the Hadamard sense (Hadamard, 1923). Its mathematical properties are in the first place determined by the forward model, i.e., the equation relating the electrical potential measured at the scalp (V) and the originating Primary Current Density (PCD) J created by the electrical activity of large neuronal masses in every time t, which is a Type I Fredholm Integral Equation1:. V (re, t) = K (re, r) ·J (r, t) dr (1) Model.

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.