Task-driven ICA feature generation for accurate and interpretable prediction using fMRI
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Mark W. Woolrich | Stephen M. Smith | Clare E. Mackay | Matthew A. Howard | Eugene P. Duff | Aaron J. Trachtenberg | Frederick Wilson | M. Woolrich | E. Duff | Stephen M. Smith | C. Mackay | M. Howard | F. Wilson
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