Omission of temporal nuisance regressors from dual regression can improve accuracy of fMRI functional connectivity maps
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Martin J McKeown | Matthew J Hoptman | Faith M Gunning | Robert E Kelly | George S Alexopoulos | M. McKeown | M. Hoptman | G. Alexopoulos | F. Gunning | Robert E Kelly
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