The purpose of this project is to develop, implement, analyze and evaluate methodologies for estimating the location, extent, and dynamic behavior of cortical neuronal populations that give rise to event-related electroencephalographic (EEG) and magnetoencephalographic (MEG) (E/MEG) signals. During the lifetime of this project we have developed Bayesian cortical imaging methods and multipolar source localization methods, both of which are able to localize focal neuronal populations in cortex. We have also developed fast, accurate forward models based on boundary element methods (BEMs). These developments are embodied in an interactive software package, BrainStorm, which is now available to the research community. Evaluation of our methods and software has been based on theoretical and Monte Carlo studies, studies using a human-skull phantom developed under this project, and applications to event-related EIMEG data. A high-resolution cortical surface, and skull, scalp, and brain surfaces for BEM calculations, are found using a series of automated processing steps applied to anatomical MRIs which are embodied in a second software package BrainSuite. For the proposed project period we plan to continue our investigations of the theoretical basis of E/MEG source estimation with the goal of better understanding the potentials and limitations of the modality. Our theoretical investigations will lead to improvements in forward and inverse methods and, importantly, a better understanding of the uncertainties implicit in these estimates. In verse methods will be based on the use of regularized signal-subspace localization of multipolar sources that can represent distributed neuronal populations. Cortical images will be obtained by re-mapping multipolar sources to cortex. We will develop tools for estimating location uncertainty directly from the measured data and estimated sources. These methods will be based on the bootstrap method in statistics and use of plug-in approximations to the Cramer Rao lower bounds. The cortical remapping methods will optionally allow the use of fMRI activation sites as prior information on possible source locations. A novel method will be developed for selection of event-related components in raw data for use in cases where stimulus-locked averaging obscures sources with highly variable latency. Improved forward models will be based on finite element methods (FEMs) applied to accurately segmented MRIs of the subjects head. For subjects for whom MRIs are not available, we will develop a generic head model based on BEM or FEM applied to an averaged head warped to a series of digitized scalp landmarks. Evaluation will be based on continued theoretical, simulation, and phantom studies. These technical developments will be incorporated in our BrainStorm and BrainSuite software packages which we will continue to maintain and enhance over the life of the project. Limited human studies of motor function using fMRI, MEG and EEG are planned for this project; broader applications of these methods in functional mapping and epilepsy will be realized through use of our software by our collaborators and other registered users.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
5R01EB002010-11
Application #
6865397
Study Section
Special Emphasis Panel (ZRG1-DMG (32))
Program Officer
Mclaughlin, Alan Charles
Project Start
1994-12-01
Project End
2006-02-28
Budget Start
2005-03-01
Budget End
2006-02-28
Support Year
11
Fiscal Year
2005
Total Cost
$478,241
Indirect Cost
Name
University of Southern California
Department
Engineering (All Types)
Type
Schools of Engineering
DUNS #
072933393
City
Los Angeles
State
CA
Country
United States
Zip Code
90089
Coletti, Amanda M; Singh, Deepinder; Kumar, Saurabh et al. (2018) Characterization of the ventricular-subventricular stem cell niche during human brain development. Development 145:
Jin, Kazutaka; Alexopoulos, Andreas V; Mosher, John C et al. (2013) Implanted medical devices or other strong sources of interference are not barriers to magnetoencephalographic recordings in epilepsy patients. Clin Neurophysiol 124:1283-9
Pillai, Jay J; ZacĂ , Domenico (2012) Comparison of BOLD cerebrovascular reactivity mapping and DSC MR perfusion imaging for prediction of neurovascular uncoupling potential in brain tumors. Technol Cancer Res Treat 11:361-74
Kakisaka, Yosuke; Wang, Zhong I; Mosher, John C et al. (2012) Magnetoencephalography's higher sensitivity to epileptic spikes may elucidate the profile of electroencephalographically negative epileptic seizures. Epilepsy Behav 23:171-3
Chang, Yu-Teng; Leahy, Richard M; Pantazis, Dimitrios (2012) Modularity-based graph partitioning using conditional expected models. Phys Rev E Stat Nonlin Soft Matter Phys 85:016109
Kakisaka, Yosuke; Gupta, Ajay; Wang, Zhong I et al. (2011) Different cortical involvement pattern of generalized and localized spasms: a magnetoencephalography study. Epilepsy Behav 22:599-601
Simpson, Gregory V; Weber, Darren L; Dale, Corby L et al. (2011) Dynamic activation of frontal, parietal, and sensory regions underlying anticipatory visual spatial attention. J Neurosci 31:13880-9
Tadel, Francois; Baillet, Sylvain; Mosher, John C et al. (2011) Brainstorm: a user-friendly application for MEG/EEG analysis. Comput Intell Neurosci 2011:879716
Joshi, Anand A; Pantazis, Dimitrios; Li, Quanzheng et al. (2010) Sulcal set optimization for cortical surface registration. Neuroimage 50:950-9
Pantazis, Dimitrios; Joshi, Anand; Jiang, Jintao et al. (2010) Comparison of landmark-based and automatic methods for cortical surface registration. Neuroimage 49:2479-93

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