Functional connectomics from resting-state fMRI
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Thomas E. Nichols | D. V. Essen | M. Woolrich | M. Jenkinson | D. Barch | C. Beckmann | K. Uğurbil | D. Vidaurre | M. Glasser | K. Miller | E. Robinson | Stephen M. Smith | G. Salimi-Khorshidi | D. C. Essen
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