| Literature DB >> 35007668 |
Selda Ozdemir1, Isik Akin-Bulbul2, Ibrahim Kok3, Suat Ozdemir4.
Abstract
Visual attention of young children with autism spectrum disorder (ASD) has been well documented in the literature for the past 20 years. In this study, we developed a Decision Support System (DSS) that uses machine learning (ML) techniques to identify young children with ASD from typically developing (TD) children. Study participants included 26 to 36 months old young children with ASD (n = 61) and TD children (n = 72). The results showed that the proposed DSS achieved up to 87.5% success rate in the early assessment of ASD in young children. Findings suggested that visual attention is a unique, promising biomarker for early assessment of ASD. Study results were discussed, and suggestions for future research were provided.Entities:
Keywords: Autism spectrum disorders; Biomarker; Eye tracking; Machine learning; Screening; Visual attention
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Year: 2022 PMID: 35007668 DOI: 10.1016/j.ijpsycho.2022.01.004
Source DB: PubMed Journal: Int J Psychophysiol ISSN: 0167-8760 Impact factor: 2.997