| Literature DB >> 34984638 |
Johanna Inhyang Kim1, Sungkyu Bang2, Jin-Ju Yang2, Heejin Kwon3, Soomin Jang4, Sungwon Roh1,5, Seok Hyeon Kim1,5, Mi Jung Kim6, Hyun Ju Lee7, Jong-Min Lee8, Bung-Nyun Kim9,10.
Abstract
Multimodal imaging studies targeting preschoolers and low-functioning autism spectrum disorder (ASD) patients are scarce. We applied machine learning classifiers to parameters from T1-weighted MRI and DTI data of 58 children with ASD (age 3-6 years) and 48 typically developing controls (TDC). Classification performance reached an accuracy, sensitivity, and specificity of 88.8%, 93.0%, and 83.8%, respectively. The most prominent features were the cortical thickness of the right inferior occipital gyrus, mean diffusivity of the middle cerebellar peduncle, and nodal efficiency of the left posterior cingulate gyrus. Machine learning-based analysis of MRI data was useful in distinguishing low-functioning ASD preschoolers from TDCs. Combination of T1 and DTI improved classification accuracy about 10%, and large-scale multi-modal MRI studies are warranted for external validation.Entities:
Keywords: Autism spectrum disorder; Diffusion tensor imaging; Machine learning; Preschool; T1-weighted magnetic resonance imaging
Year: 2022 PMID: 34984638 DOI: 10.1007/s10803-021-05368-z
Source DB: PubMed Journal: J Autism Dev Disord ISSN: 0162-3257