Bayesian EEG source localization using a structured sparsity prior

被引:33
作者
Costa, Facundo [1 ]
Batatia, Hadj [1 ]
Oberlin, Thomas [1 ]
D'Giano, Carlos [2 ]
Tourneret, Jean-Yves [1 ]
机构
[1] Univ Toulouse, INP ENSEEIHT, 2 Rue Charles Camichel,BP 7122, F-31071 Toulouse 7, France
[2] FLENI Hosp, Buenos Aires, DF, Argentina
关键词
EEG; MCMC; Inverse problem; Source localization; Structured-sparsity; Hierarchical Bayesian model; L-20 norm regularization; Medical imaging; INVERSE PROBLEM; MONTE-CARLO; MAGNETOENCEPHALOGRAPHY; MODELS; MEG;
D O I
10.1016/j.neuroimage.2016.08.064
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
This paper deals with EEG source localization. The aim is to perform spatially coherent focal localization and recover temporal EEG waveforms, which can be useful in certain clinical applications. A new hierarchical Bayesian model is proposed with a multivariate Bernoulli Laplacian structured sparsity prior for brain activity. This distribution approximates a mixed l(20) pseudo norm regularization in a Bayesian framework. A partially collapsed Gibbs sampler is proposed to draw samples asymptotically distributed according to the posterior of the proposed Bayesian model. The generated samples are used to estimate the brain activity and the model hyperparameters jointly in an unsupervised framework. Two different kinds of Metropolis-Hastings moves are introduced to accelerate the convergence of the Gibbs sampler. The first move is based on multiple dipole shifts within each MCMC chain, whereas the second exploits proposals associated with different MCMC chains. Experiments with focal synthetic data shows that the proposed algorithm is more robust and has a higher recovery rate than the weighted L-21 mixed norm regularization. Using real data, the proposed algorithm finds sources that are spatially coherent with state of the art methods, namely a multiple sparse prior approach and the Champagne algorithm. In addition, the method estimates waveforms showing peaks at meaningful timestamps. This information can be valuable for activity spread characterization. (C) 2016 Elsevier Inc. All rights reserved.
引用
收藏
页码:142 / 152
页数:11
相关论文
共 48 条
[1]  
[Anonymous], 1995, BAYESIAN DATA ANAL, DOI [DOI 10.1201/9780429258411, 10.1201/9780429258411]
[2]  
[Anonymous], 2006, Journal of the Royal Statistical Society, Series B
[3]  
[Anonymous], 2013, FRONTIERS NEUROSCI, DOI DOI 10.3389/FNINS.2013.00267
[4]  
[Anonymous], 1966, Soviet Mathematics Doklady
[5]   Revised terminology and concepts for organization of seizures and epilepsies: Report of the ILAE Commission on Classification and Terminology, 2005-2009 [J].
Berg, Anne T. ;
Berkovic, Samuel F. ;
Brodie, Martin J. ;
Buchhalter, Jeffrey ;
Cross, J. Helen ;
Boas, Walter van Emde ;
Engel, Jerome ;
French, Jacqueline ;
Glauser, Tracy A. ;
Mathern, Gary W. ;
Moshe, Solomon L. ;
Nordli, Douglas ;
Plouin, Perrine ;
Scheffer, Ingrid E. .
EPILEPSIA, 2010, 51 (04) :676-685
[6]  
Bourguignon S, 2005, PROC IEEE 13THWORKSH, P811
[7]   The restricted isometry property and its implications for compressed sensing [J].
Candes, Emmanuel J. .
COMPTES RENDUS MATHEMATIQUE, 2008, 346 (9-10) :589-592
[8]  
Casella G., 1999, Monte Carlo statistical methods
[9]   Solving the EEG inverse problem based on space-time-frequency structured sparsity constraints [J].
Castano-Candamil, Sebastian ;
Hoehne, Johannes ;
Martinez-Vargas, Juan-David ;
An, Xing-Wei ;
Castellanos-Dominguez, German ;
Haufe, Stefan .
NEUROIMAGE, 2015, 118 :598-612
[10]  
Chen X., 2013, P IEEE INT C AC SPEE