# American Institute of Mathematical Sciences

2001, 2001(Special): 349-356. doi: 10.3934/proc.2001.2001.349

## A method, with applications, for analyzing co-registered EEG and MRI data

 1 Department of Mathematics, University of Louisiana at Lafayette, United States 2 Center for Advanced Computer Studies, University of Louisiana at Lafayette, United States, United States

Published  November 2013

Citation: Robert D. Sidman, Marie Erie, Henry Chu. A method, with applications, for analyzing co-registered EEG and MRI data. Conference Publications, 2001, 2001 (Special) : 349-356. doi: 10.3934/proc.2001.2001.349
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