Identifying oscillatory brain networks with hidden Gaussian graphical spectral models of MEEG

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作者
Deirel Paz-Linares
Eduardo Gonzalez-Moreira
Ariosky Areces-Gonzalez
Ying Wang
Min Li
Eduardo Martinez-Montes
Jorge Bosch-Bayard
Maria L. Bringas-Vega
Mitchell Valdes-Sosa
Pedro A. Valdes-Sosa
机构
[1] University of Electronic Science and Technology of China,The Clinical Hospital of Chengdu Brain Science Institute, MOE Key Lab for Neuroinformation, School of Life Science and Technology
[2] Cuban Neuroscience Center,Department of Neuroinformatics
[3] Central University “Marta Abreu” of Las Villas,School of Electrical Engineering
[4] University of Pinar del Río “Hermanos Saiz Montes de Oca”,School of Technical Sciences
[5] McGill University,McGill Centre for Integrative Neurosciences MCIN, Ludmer Centre for Mental Health, Montreal Neurological Institute
[6] Nathan Kline Institute for Psychiatric Research,Center for Biomedical Imaging and Neuromodulation
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摘要
Identifying the functional networks underpinning indirectly observed processes poses an inverse problem for neurosciences or other fields. A solution of such inverse problems estimates as a first step the activity emerging within functional networks from EEG or MEG data. These EEG or MEG estimates are a direct reflection of functional brain network activity with a temporal resolution that no other in vivo neuroimage may provide. A second step estimating functional connectivity from such activity pseudodata unveil the oscillatory brain networks that strongly correlate with all cognition and behavior. Simulations of such MEG or EEG inverse problem also reveal estimation errors of the functional connectivity determined by any of the state-of-the-art inverse solutions. We disclose a significant cause of estimation errors originating from misspecification of the functional network model incorporated into either inverse solution steps. We introduce the Bayesian identification of a Hidden Gaussian Graphical Spectral (HIGGS) model specifying such oscillatory brain networks model. In human EEG alpha rhythm simulations, the estimation errors measured as ROC performance do not surpass 2% in our HIGGS inverse solution and reach 20% in state-of-the-art methods. Macaque simultaneous EEG/ECoG recordings provide experimental confirmation for our results with 1/3 times larger congruence according to Riemannian distances than state-of-the-art methods.
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