Salience Network–Based Classification and Prediction of Symptom Severity in Children With Autism
Abstract
Autism spectrum disorder (ASD) affects 1 in 88 children and is characterized by a complex phenotype, including social, communicative, and sensorimotor deficits. Autism spectrum disorder has been linked with atypical connectivity across multiple brain systems, yet the nature of these differences in young children with the disorder is not well understood.
To examine connectivity of large-scale brain networks and determine whether specific networks can distinguish children with ASD from typically developing (TD) children and predict symptom severity in children with ASD. DESIGN, SETTING, AND PARTICIPANTS: Case-control study performed at Stanford University School of Medicine of 20 children 7 to 12 years old with ASD and 20 age-, sex-, and IQ-matched TD children. MAIN OUTCOMES AND MEASURES: Between-group differences in intrinsic functional connectivity of large-scale brain networks, performance of a classifier built to discriminate children with ASD from TD children based on specific brain networks, and correlations between brain networks and core symptoms of ASD.
Citation impact
- FWCI
- 21.78
- Percentile
- 100%
- References
- 91
Authors
8Topics & keywords
- Autism spectrum disorder
- Psychology
- Salience (neuroscience)
- Autism
- Neuroimaging
- Neurodevelopmental disorder
- Default mode network
- Typically developing
- Reduced inequalities