Literature DB >> 24999036

Does motion-related brain functional connectivity reflect both artifacts and genuine neural activity?

Jesus Pujol1, Dídac Macià2, Laura Blanco-Hinojo3, Gerard Martínez-Vilavella2, Jordi Sunyer4, Rafael de la Torre5, Assumpta Caixàs6, Rocío Martín-Santos7, Joan Deus8, Ben J Harrison9.   

Abstract

Imaging research on functional connectivity is uniquely contributing to characterize the functional organization of the human brain. Functional connectivity measurements, however, may be significantly influenced by head motion that occurs during image acquisition. The identification of how motion influences such measurements is therefore highly relevant to the interpretation of a study's results. We have mapped the effect of head motion on functional connectivity in six different populations representing a wide range of potential influences of motion on functional connectivity. Group-level voxel-wise maps of the correlation between a summary head motion measurement and functional connectivity degree were estimated in 80 young adults, 71 children, 53 older adults, 20 patients with Down syndrome, 24 with Prader-Willi syndrome and 20 with Williams syndrome. In highly compliant young adults, motion correlated with functional connectivity measurements showing a system-specific anatomy involving the sensorimotor cortex, visual areas and default mode network. Further characterization was strongly indicative of these changes expressing genuine neural activity related to motion, as opposed to pure motion artifact. In the populations with larger head motion, results were more indicative of widespread artifacts, but showing notably distinct spatial distribution patterns. Group-level regression of motion effects was efficient in removing both generalized changes and changes putatively related to neural activity. Overall, this study endorses a relatively simple approach for mapping distinct effects of head motion on functional connectivity. Importantly, our findings support the intriguing hypothesis that a component of motion-related changes may reflect system-specific neural activity.
Copyright © 2014 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Brain networks; Default mode network; Head motion; Resting-state; Sensorimotor cortex; fMRI

Mesh:

Year:  2014        PMID: 24999036     DOI: 10.1016/j.neuroimage.2014.06.065

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  25 in total

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