Publication | Open Access
Abnormal Functional Connectivity of Resting State Network Detection Based on Linear ICA Analysis in Autism Spectrum Disorder
58
Citations
60
References
2018
Year
NeuropsychologyBrain OrganizationSocial SciencesAutism Spectrum DisorderAutismNeurologyIndependent Component AnalysisAsd PatientsLinear Ica AnalysisPsychiatryAbnormal Functional ConnectivityNeuroimagingBrain ImagingNeurodevelopmental DisordersNeuroimaging BiomarkersComputational NeuroscienceConnectomicsNeuroscienceBiological PsychiatryHigh-dimensional NetworkFunctional ConnectivityMedicine
Some functional magnetic resonance imaging (fMRI) researches in autism spectrum disorder (ASD) patients have shown that ASD patients have significant impairment in brain response. However, few researchers have studied the functional structure changes of the eight resting state networks (RSNs) in ASD patients. Therefore, research on statistical differences of RSNs between 42 healthy controls (HC) and 50 ASD patients has been studied using linear independent component analysis (ICA) in this paper. Our researches showed that there was abnormal functional connectivity (FC) of RSNs in ASD patients. The RSNs with the decreased FC and increased FC in ASD patients included default mode network (DMN), central executive network (CEN), core network (CN), visual network (VN), self-referential network (SRN) compared to HC. The RSNs with the increased FC in ASD patients included auditory network (AN), somato-motor network (SMN). The dorsal attention network (DAN) in ASD patients showed the decreased FC. Our findings indicate that the abnormal FC in RSNs extensively exists in ASD patients. Our results have important contribution for the study of neuro-pathophysiological mechanisms in ASD patients.
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