A comprehensive assessment of regional variation in the impact of head micromovements on functional connectomics
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R. Cameron Craddock | Michael P. Milham | Brian Cheung | Clare Kelly | Xi-Nian Zuo | Chao-Gan Yan | Adriana Di Martino | Stan Colcombe | Qingyang Li | F. Xavier Castellanos | Stanley J. Colcombe | Chaogan Yan | C. Kelly | F. Castellanos | M. Milham | Qingyang Li | X. Zuo | A. di Martino | S. Colcombe | R. Craddock | Brian Cheung | A. Martino | F. Castellanos | Stan Colcombe
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