| Literature DB >> 27465558 |
Evie Malaia1, Erik Bates2, Benjamin Seitzman3, Katherine Coppess4.
Abstract
The heterogeneity of behavioral manifestation of autism spectrum disorders (ASDs) requires a model which incorporates understanding of dynamic differences in neural processing between ASD and typically developing (TD) populations. We use network approach to characterization of spatiotemporal dynamics of EEG data in TD and ASD youths. EEG recorded during both wakeful rest (resting state) and a social-visual task was analyzed using cross-correlation analysis of the 32-channel time series to produce weighted, undirected graphs corresponding to functional brain networks. The stability of these networks was assessed by novel use of the L1-norm for matrix entries (edit distance). There were a significantly larger number of stable networks observed in the resting condition compared to the task condition in both populations. In resting state, stable networks persisted for a significantly longer time in children with ASD than in TD children; networks in ASD children also had larger diameter, indicative of long-range connectivity. The resulting analysis combines key features of microstate and network analyses of EEG.Entities:
Keywords: Autism spectrum; Development; Network analysis; Resting state
Mesh:
Year: 2016 PMID: 27465558 PMCID: PMC5097108 DOI: 10.1007/s00221-016-4737-y
Source DB: PubMed Journal: Exp Brain Res ISSN: 0014-4819 Impact factor: 1.972
Fig. 1Each subject’s processed EEG signal leads to 16 functional matrices, one for each epoch, when cross-correlation is computed for each pair of nodes and all possible lags. The red cells seen in the top matrix indicate pairs of nodes for which there existed a lag producing a high cross-correlation value. All such matrices are randomized, and the edit distances (Betzel et al. 2012) between them are established the null model. Then, the null model was used to detect stable network transitions between the original matrices by thresholding edit distance vectors against the two standard deviations cutoff. Stable transitions are denoted by black cells. The example shown here had stable transitions between epochs 1 and 2 and between epochs 3 and 4, as suggested by their dark blue coloring in the edit distance vector (color figure online)
Fig. 2a Interaction between mean duration and population on the two conditions (p < 0.034) is driven by the resting condition that had a longer mean duration in children with ASD (see a). b Main effect of mean number of quasi-stable networks in the two conditions (p < 0.046), such that children with ASD had longer stable networks in the resting condition (see b)
Fig. 3Interaction between mean network diameter and population type (TD, ASD) in the event-related versus resting state indicates that children with ASD have a larger mean network diameter in the resting state (p < 0.032)