| Literature DB >> 30543119 |
Sourabh Palande1,2, Vipin Jose2, Brandon Zielinski3,4, Jeffrey Anderson5, P Thomas Fletcher1,2, Bei Wang1,2.
Abstract
A large body of evidence relates autism with abnormal structural and functional brain connectivity. Structural covariance magnetic resonance imaging (scMRI) is a technique that maps brain regions with covarying gray matter densities across subjects. It provides a way to probe the anatomical structure underlying intrinsic connectivity networks (ICNs) through analysis of gray matter signal covariance. In this article, we apply topological data analysis in conjunction with scMRI to explore network-specific differences in the gray matter structure in subjects with autism versus age-, gender-, and IQ-matched controls. Specifically, we investigate topological differences in gray matter structure captured by structural correlation graphs derived from three ICNs strongly implicated in autism, namely the salience network, default mode network, and executive control network. By combining topological data analysis with statistical inference, our results provide evidence of statistically significant network-specific structural abnormalities in autism.Entities:
Keywords: autism; brain networks; statistical inference; structural abnormalities; topological data analysis
Mesh:
Year: 2019 PMID: 30543119 PMCID: PMC6390667 DOI: 10.1089/brain.2018.0604
Source DB: PubMed Journal: Brain Connect ISSN: 2158-0014