Auxiliary Diagnostic Method for Early Autism Spectrum Disorder Based on Eye Movement Data Analysis

Haoquan Fang, Lei Fan, Jenq-Neng Hwang
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Abstract

Autism spectrum disorder (ASD) is a comprehensive mental development disorder characterized by abnormal interpersonal communication and interaction patterns, narrow scope of interests, and limited content of activities. Due to the lack of biological diagnostic indicators, the current diagnosis of ASD mainly relies on experts’ comprehensive clinical analysis of children, which is usually subjective and highly dependent on doctors’ individual professional skills. In this study, we propose an auxiliary diagnostic method for early ASD, which is based on the eye movement data analysis of autistic children. The method involves biological motion visualization, eye tracking, machine learning, and other related techniques. More specifically, the visualized biological motion animation is divided into five stages according to different biological behaviors of human skeletal figures presented in the animation. At the same time, the screen is divided into six areas to represent different regions the children gaze at. Following these two temporal and spatial principles, features can be extracted from eye movement data. Based on those extracted features, machine learning methods, particularly KNN, Gaussian-NB, and Cubic-SVM, are trained to classify and diagnose autistic children, making future timely treatment possible.
基于眼动数据分析的早期自闭症谱系障碍辅助诊断方法
自闭症谱系障碍(Autism spectrum disorder, ASD)是一种以人际交往和互动方式异常、兴趣范围狭窄、活动内容有限为特征的综合性精神发育障碍。由于缺乏生物学诊断指标,目前对ASD的诊断主要依靠专家对儿童的综合临床分析,往往具有主观性,高度依赖医生的个人专业技能。在本研究中,我们提出了一种基于自闭症儿童眼动数据分析的早期ASD辅助诊断方法。该方法涉及生物运动可视化、眼动追踪、机器学习等相关技术。更具体地说,根据动画中呈现的人体骨骼人物的不同生物行为,将可视化的生物运动动画分为五个阶段。同时,屏幕被分成六个区域,代表孩子们凝视的不同区域。遵循这两个时空原则,可以从眼动数据中提取特征。基于这些提取的特征,训练机器学习方法,特别是KNN、Gaussian-NB和Cubic-SVM,对自闭症儿童进行分类和诊断,使未来的及时治疗成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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