| Literature DB >> 35913654 |
Zhong Zhao1, Jiwei Wei1, Jiayi Xing1, Xiaobin Zhang2, Xingda Qu1, Xinyao Hu1, Jianping Lu3.
Abstract
This study segmented the time series of gaze behavior from nineteen children with autism spectrum disorder (ASD) and 20 children with typical development in a face-to-face conversation. A machine learning approach showed that behavior segments produced by these two groups of participants could be classified with the highest accuracy of 74.15%. These results were further used to classify children using a threshold classifier. A maximum classification accuracy of 87.18% was achieved, under the condition that a participant was considered as 'ASD' if over 46% of the child's 7-s behavior segments were classified as ASD-like behaviors. The idea of combining the behavior segmentation technique and the threshold classifier could maximally preserve participants' data, and promote the automatic screening of ASD.Entities:
Keywords: Autism; Behavior segmentation; Entropy; Eye-tracking; Machine learning; Oculomotor
Year: 2022 PMID: 35913654 DOI: 10.1007/s10803-022-05685-x
Source DB: PubMed Journal: J Autism Dev Disord ISSN: 0162-3257