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Bayesian Spatio-Temporal Approach for EEG Source Reconstruction: Conciliating ECD and Distributed Models
- Source :
- IEEE Transactions on Biomedical Engineering, IEEE Transactions on Biomedical Engineering, Institute of Electrical and Electronics Engineers, 2006, 53 (3), pp.503-16, IEEE Transactions on Biomedical Engineering, 2006, 53 (3), pp.503-16
- Publication Year :
- 2006
- Publisher :
- Institute of Electrical and Electronics Engineers (IEEE), 2006.
-
Abstract
- Characterizing the cortical activity sources of electroencephalography (EEG)/magnetoencephalography data is a critical issue since it requires solving an ill-posed inverse problem that does not admit a unique solution. Two main different and complementary source models have emerged: equivalent current dipoles (ECD) and distributed linear (DL) models. While ECD models remain highly popular since they provide an easy way to interpret the solutions, DL models (also referred to as imaging techniques) are known to be more realistic and flexible. In this paper, we show how those two representations of the brain electromagnetic activity can be cast into a common general framework yielding an optimal description and estimation of the EEG sources. From this extended source mixing model, we derive a hybrid approach whose key aspect is the separation between temporal and spatial characteristics of brain activity, which allows to dramatically reduce the number of DL model parameters. Furthermore, the spatial profile of the sources, as a temporal invariant map, is estimated using the entire time window data, allowing to significantly enhance the information available about the spatial aspect of the EEG inverse problem. A Bayesian framework is introduced to incorporate distinct temporal and spatial constraints on the solution and to estimate both parameters and hyperparameters of the model. Using simulated EEG data, the proposed inverse approach is evaluated and compared with standard distributed methods using both classical criteria and ROC curves.
- Subjects :
- Computer science
02 engineering and technology
Electroencephalography
computer.software_genre
Brain mapping
Electrocardiography
0302 clinical medicine
Diagnosis, Computer-Assisted
Invariant (mathematics)
Evoked Potentials
MESH: Brain Mapping
Hyperparameter
Brain Mapping
medicine.diagnostic_test
Signal reconstruction
Brain
Inverse problem
MESH: Reproducibility of Results
MESH: Evoked Potentials
Positron emission tomography
[SDV.IB]Life Sciences [q-bio]/Bioengineering
Algorithms
MESH: Bayes Theorem
Models, Neurological
0206 medical engineering
Bayesian probability
Biomedical Engineering
MESH: Algorithms
Iterative reconstruction
Bayesian inference
Machine learning
Sensitivity and Specificity
MESH: Brain
03 medical and health sciences
MESH: Computer Simulation
MESH: Models, Neurological
medicine
Humans
Computer Simulation
[SDV.IB] Life Sciences [q-bio]/Bioengineering
MESH: Humans
Models, Statistical
business.industry
MESH: Diagnosis, Computer-Assisted
Reproducibility of Results
Bayes Theorem
Pattern recognition
Magnetoencephalography
020601 biomedical engineering
Independent component analysis
MESH: Sensitivity and Specificity
MESH: Electrocardiography
Dipole
Artificial intelligence
business
computer
MESH: Models, Statistical
030217 neurology & neurosurgery
Subjects
Details
- ISSN :
- 00189294
- Volume :
- 53
- Database :
- OpenAIRE
- Journal :
- IEEE Transactions on Biomedical Engineering
- Accession number :
- edsair.doi.dedup.....564b04e42404a1714c69a953d8ce8bb0
- Full Text :
- https://doi.org/10.1109/tbme.2005.869791