4.5 Article

Neural network connectivity in ADHD children: an independent component and functional connectivity analysis of resting state fMRI data.

Journal

BRAIN IMAGING AND BEHAVIOR
Volume 15, Issue 1, Pages 157-165

Publisher

SPRINGER
DOI: 10.1007/s11682-019-00242-0

Keywords

ADHD; Resting state fMRI; Independent component analysis; Functional connectivity; Default mode network; Dorsal anterior cingulate

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This study utilized rsfMRI to investigate the functional connectivity in children with ADHD, revealing stronger and more dispersed connectivity within the DMN and other neural networks in comparison to typically developing children.
Resting-state functional magnetic resonance imaging (rsfMRI) is a novel approach that has the potential to examine abnormalities in the default mode network (DMN) component. Two different approaches were used in the present study to characterize the functional connectivities of various DMN components in 16 non-medicated ADHD and a similar number of TD (typically developing) children. rsfMRI data were analysed using independent component analysis (ICA) and region-of-interest (ROI) seed to voxel correlation analysis. ICA results indicated a strong coherence of the left dorsal anterior cingular cortex (dACC) with the DMN components in children with ADHD. In addition, seed-to-voxel functional connectivity analysis using the left dorsal anterior cingulate as a seed region suggested higher temporal coherence with other neural networks upon comparison with TD children. These results imply children with ADHD exhibit a higher dispersed resting state connectivity pattern in DMN and other networks.

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