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Automatic classification of autism spectrum disorder in children using cortical thickness and support vector machine
2021
Brain and Behavior
Autism spectrum disorder (ASD) is a neurodevelopmental condition with a heterogeneous phenotype. The role of biomarkers in ASD diagnosis has been highlighted; cortical thickness has proved to be involved in the etiopathogenesis of ASD core symptoms. We apply support vector machine, a supervised machine learning method, in order to identify specific cortical thickness alterations in ASD subjects. A sample of 76 subjects (9.5 ± 3.4 years old) has been selected, 40 diagnosed with ASD and 36
doi:10.1002/brb3.2238
pmid:34264004
fatcat:oaw2abvcejh6zdiy5ydn6pmfcq