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Distinct neural signatures detected for ADHD subtypes after controlling for micro-movements in resting state functional connectivity MRI data.

Authors :
Fair, Damien A
Fair, Damien A
Nigg, Joel T
Iyer, Swathi
Bathula, Deepti
Mills, Kathryn L
Dosenbach, Nico UF
Schlaggar, Bradley L
Mennes, Maarten
Gutman, David
Bangaru, Saroja
Buitelaar, Jan K
Dickstein, Daniel P
Di Martino, Adriana
Kennedy, David N
Kelly, Clare
Luna, Beatriz
Schweitzer, Julie B
Velanova, Katerina
Wang, Yu-Feng
Mostofsky, Stewart
Castellanos, F Xavier
Milham, Michael P
Fair, Damien A
Fair, Damien A
Nigg, Joel T
Iyer, Swathi
Bathula, Deepti
Mills, Kathryn L
Dosenbach, Nico UF
Schlaggar, Bradley L
Mennes, Maarten
Gutman, David
Bangaru, Saroja
Buitelaar, Jan K
Dickstein, Daniel P
Di Martino, Adriana
Kennedy, David N
Kelly, Clare
Luna, Beatriz
Schweitzer, Julie B
Velanova, Katerina
Wang, Yu-Feng
Mostofsky, Stewart
Castellanos, F Xavier
Milham, Michael P
Source :
Frontiers in systems neuroscience; vol 6, iss FEB, 80; 1662-5137
Publication Year :
2012

Abstract

In recent years, there has been growing enthusiasm that functional magnetic resonance imaging (MRI) could achieve clinical utility for a broad range of neuropsychiatric disorders. However, several barriers remain. For example, the acquisition of large-scale datasets capable of clarifying the marked heterogeneity that exists in psychiatric illnesses will need to be realized. In addition, there continues to be a need for the development of image processing and analysis methods capable of separating signal from artifact. As a prototypical hyperkinetic disorder, and movement-related artifact being a significant confound in functional imaging studies, ADHD offers a unique challenge. As part of the ADHD-200 Global Competition and this special edition of Frontiers, the ADHD-200 Consortium demonstrates the utility of an aggregate dataset pooled across five institutions in addressing these challenges. The work aimed to (1) examine the impact of emerging techniques for controlling for "micro-movements," and (2) provide novel insights into the neural correlates of ADHD subtypes. Using support vector machine (SVM)-based multivariate pattern analysis (MVPA) we show that functional connectivity patterns in individuals are capable of differentiating the two most prominent ADHD subtypes. The application of graph-theory revealed that the Combined (ADHD-C) and Inattentive (ADHD-I) subtypes demonstrated some overlapping (particularly sensorimotor systems), but unique patterns of atypical connectivity. For ADHD-C, atypical connectivity was prominent in midline default network components, as well as insular cortex; in contrast, the ADHD-I group exhibited atypical patterns within the dlPFC regions and cerebellum. Systematic motion-related artifact was noted, and highlighted the need for stringent motion correction. Findings reported were robust to the specific motion correction strategy employed. These data suggest that resting-state functional connectivity MRI (rs-fcMRI) data can be use

Details

Database :
OAIster
Journal :
Frontiers in systems neuroscience; vol 6, iss FEB, 80; 1662-5137
Notes :
application/pdf, Frontiers in systems neuroscience vol 6, iss FEB, 80 1662-5137
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287372848
Document Type :
Electronic Resource