Autism spectrum disorder (ASD) is characterized by core sociocommunicative impairments. Atypical intrinsic functional connectivity (iFC) has been reported in numerous studies of ASD. A majority of findings has indicated long-distance underconnectivity. However, fMRI studies have thus far exclusively examined static iFC across several minutes of scanning. We examined temporal variability of iFC, using sliding window analyses in selected high-quality (low-motion) consortium datasets from 76 ASD and 76 matched typically developing (TD) participants (Study 1) and in-house data from 32 ASD and 32 TD participants. Mean iFC and standard deviation of the sliding window correlation (SD-iFC) were computed for regions of interest (ROIs) from default mode and salience networks, as well as amygdala and thalamus. In both studies, ROI pairings with significant underconnectivity (ASD
“…More specifically, convergent evidence from both datasets showed that reduced static iFC in ASD (''underconnectivity'') was related to increased temporal variability. Selecting an ROI pair (PCC-mPFC), for which underconnectivity findings have converged in the literature (Abbott et al, 2015;Assaf et al, 2010;Doyle-Thomas et al, 2015;Monk et al, 2009;von dem Hagen et al, 2012;Washington et al, 2013), mediation analysis showed that reduced static iFC was significantly impacted by increased temporal variability. The research questions motivating the current study were thus mostly affirmed by our findings: (1) iFC variability across time was atypically increased in ASD for several ROI pairings, that is, for PCC-mPFC, L LP-mPFC, and L Thal-R Thal pairs in Study 1 and for PCC-mPFC pair in Study 2; and (2) group differences in static iFC were significantly impacted by differences in the variability of iFC across time.…” Section: Discussionmentioning “…Coordinates from previous studies were used to identify the seeds for the following regions: posterior cingulate cortex (PCC), medial prefrontal cortex (mPFC), left (L)/right (R) hippocampal formation (Hipp), L/R lateral parietal cortex (LP) (Van Dijk et al, 2010), pregenual anterior cingulate cortex (Prg ACC) (Di Martino et al, 2009), dorsal anterior cingulate cortex (Abbott et al, 2015), and L/R anterior insula (Ins) (Ebisch et al, 2011). All ROI masks, except for the Prg ACC, were defined as 10 mm radius spheres centered on the seed coordinates.…” Section: Regions Of Interestmentioning “…However, in its application to ASD, fcMRI has generated highly inconsistent findings, ranging from exclusive underconnectivity (Gotts et al, 2012;Just et al, 2004;Kana et al, 2007;Kleinhans et al, 2008) to mixed effects (Abbott et al, 2015;Di Martino et al, 2014;Doyle-Thomas et al, 2015;Fishman et al, 2014Fishman et al, , 2015Lynch et al, 2013;Monk et al, 2009;Washington et al, 2013) and even predominant overconnectivity (Cerliani et al, 2015;Di Martino et al, 2011;Shih et al, 2011;Supekar et al, 2013). Some of these inconsistencies may be due to methodological differences Nair et al, 2014) and age-related changes (Uddin et al, 2013b), as well as cohort effects due to heterogeneity within the disorder.…” Section: Introductionmentioning “…We focused on several networks with previous reports of anomalous connectivity in ASD. These included regions of the default mode network (DMN) (Doyle-Thomas et al, 2015;Kennedy and Courchesne, 2008;Monk et al, 2009;Washington et al, 2013), the salience network (Abbott et al, 2015;Ebisch et al, 2011;Uddin et al, 2013a), as well as amygdala (Abrams et al, 2013;Grelotti et al, 2005;Kleinhans et al, 2011;Murphy et al, 2012) and thalamus (Cerliani et al, 2015;Hardan et al, 2008;Nair et al, 2013Nair et al, , 2015. These regions of interest (ROIs) were selected to test the general questions described below, without any assumption of exclusive impairment in ASD (which would be unwarranted, given the breadth of regional findings implicating almost every network and brain region in ASD).…” Section: Introductionmentioning See 2 more Smart CitationsAutism spectrum disorder (ASD) is characterized by core sociocommunicative impairments. Atypical intrinsic functional connectivity (iFC) has been reported in numerous studies of ASD. A majority of findings has indicated long-distance underconnectivity. However, fMRI studies have thus far exclusively examined static iFC across several minutes of scanning. We examined temporal variability of iFC, using sliding window analyses in selected high-quality (low-motion) consortium datasets from 76 ASD and 76 matched typically developing (TD) participants (Study 1) and in-house data from 32 ASD and 32 TD participants. Mean iFC and standard deviation of the sliding window correlation (SD-iFC) were computed for regions of interest (ROIs) from default mode and salience networks, as well as amygdala and thalamus. In both studies, ROI pairings with significant underconnectivity (ASD “…These include structural MRI [11][12][13], intrinsic functional connectivity MRI (fcMRI) [14][15][16], diffusion tensor imaging (DTI) [17,18] and electroencephalography (EEG) [19,20]. Reported ASD abnormalities have been identified in the cerebellum [21] and cerebellar vermis [22], anterior cingulate gyrus [23], amygdala [24][25][26], hippocampus [24,27,28], and areas of the frontal [29][30][31], temporal [29,32] parietal lobes [30], caudate and putamen [29,33]. Additional imaging abnormalities in autism include impaired brain growth [24], cortical thickness [12,34], alterations in white matter architecture [18,35], and aberrant connectivity within the somatosensory, visual and default mode network [36].…” Section: Introductionmentioning The diagnosis of Autism Spectrum Disorder (ASD) relies on history and behavioral observation, lacking reliable biomarkers. We performed a retrospective analysis using machine learning algorithms of 928 persons with ASD (mean age: 17 ± 10.8 years; age range 4-67) obtained from a multisite psychiatric database with rest and on-task brain SPECT scans to investigate whether or not these scans distinguish ASD from healthy controls (HC, n=101; mean age: 43 ± 17.2 years; age range 13-84). Using 128 regions of interest extracts (ROIs), we applied multiple machine learning algorithms for binary classification. Due to an unbalanced sample size between ASD and controls, we then sub-sampled the data prior to feature selection and classification. Using a subsampled dataset, least absolute shrinkage and selection operator (LASSO) feature selection with Random Forest method baseline accuracy results of approximately 81% were achieved, based on optimal classifier settings with the top selected features. We applied machine learning algorithms to ASD adults only, the majority of our sample, and selected subjects in both AD and HC groups with age range of 13-67 years and found the results consistent with the combined data. These machine learning results identified potential diagnostic biomarkers differentiating ASD from HC in the regions of the cerebellum and vermis, anterior cingulate gyrus, amygdala, thalamus, frontal, and temporal lobes. | |