| Literature DB >> 29274105 |
Kaitlin Cassady1, Marit Ruitenberg2, Vincent Koppelmans2, Patricia Reuter-Lorenz1, Yiri De Dios3, Nichole Gadd3, Scott Wood4, Roy Riascos Castenada5, Igor Kofman3, Jacob Bloomberg4, Ajitkumar Mulavara3, Rachael Seidler1,2,6.
Abstract
In this study, we investigate whether individual variability in the rate of visuomotor adaptation and multiday savings is associated with differences in regional gray matter volume and resting-state functional connectivity. Thirty-four participants performed a manual adaptation task during two separate test sessions, on average 9 days apart. Functional connectivity strength between sensorimotor, dorsal cingulate, and temporoparietal regions of the brain was found to predict the rate of learning during the early phase of the adaptation task. In contrast, default mode network connectivity strength was found to predict both the rate of learning during the late adaptation phase and savings. As for structural predictors, greater gray matter volume in temporoparietal and occipital regions predicted faster early learning, whereas greater gray matter volume in superior posterior regions of the cerebellum predicted faster late learning. These findings suggest that the offline neural predictors of early adaptation may facilitate the cognitive aspects of sensorimotor adaptation, supported by the involvement of temporoparietal and cingulate networks. The offline neural predictors of late adaptation and savings, including the default mode network and the cerebellum, likely support the storage and modification of newly acquired sensorimotor representations.Entities:
Keywords: functional connectivity; gray matter volume; neural predictors; savings; sensorimotor adaptation
Mesh:
Year: 2017 PMID: 29274105 PMCID: PMC5847457 DOI: 10.1002/hbm.23924
Source DB: PubMed Journal: Hum Brain Mapp ISSN: 1065-9471 Impact factor: 5.038