Frontiers in Human Neuroscience (Sep 2013)

Multisite functional connectivity MRI classification of autism: ABIDE results

  • Jared A Nielsen,
  • Brandon A Zielinski,
  • Brandon A Zielinski,
  • P Thomas Fletcher,
  • P Thomas Fletcher,
  • Andrew L Alexander,
  • Andrew L Alexander,
  • Andrew L Alexander,
  • Nicholas eLange,
  • Nicholas eLange,
  • Nicholas eLange,
  • Erin D. Bigler,
  • Erin D. Bigler,
  • Erin D. Bigler,
  • Janet E Lainhart,
  • Jeffrey S Anderson,
  • Jeffrey S Anderson,
  • Jeffrey S Anderson,
  • Jeffrey S Anderson

DOI
https://doi.org/10.3389/fnhum.2013.00599
Journal volume & issue
Vol. 7

Abstract

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Background: Systematic differences in functional connectivity MRI metrics have been consistently observed in autism, with predominantly decreased cortico-cortical connectivity. Previous attempts at single subject classification in high-functioning autism using whole brain point-to-point functional connectivity have yielded about 80% accurate classification of autism vs. control subjects across a wide age range. We attempted to replicate the method and results using the Autism Brain Imaging Data Exchange including resting state fMRI data obtained from 964 subjects and 16 separate international sites.Methods: For each of 964 subjects, we obtained pairwise functional connectivity measurements from a lattice of 7266 regions of interest covering the gray matter (26.4 million "connections") after preprocessing that included motion and slice timing correction, coregistration to an anatomic image, normalization to standard space, and voxelwise removal by regression of motion parameters, soft tissue, CSF, and white matter signals. Connections were grouped into multiple bins, and a leave-one-out classifier was evaluated on connections comprising each set of bins. Age, age-squared, gender, handedness, and site were included as covariates for the classifier.Results: Classification accuracy significantly outperformed chance but was much lower for multisite prediction than for previous single site results. As high as 60% accuracy was obtained for whole brain classification, with the best accuracy from connections involving regions of the default mode network, parahippocampal and fusiform gyri, insula, Wernicke Area, and intraparietal sulcus. The classifier score was related to symptom severity, social function, daily living skills, and verbal IQ. Classification accuracy was significantly higher for sites with longer BOLD imaging times.Conclusions: Multisite functional connectivity classification of autism outperformed chance using a simple leave-one-out classifier, but exhibit

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