Autism detection based on eye movement sequences on the web: a scanpath trend analysis approach

Sukru Eraslan, Y. Yeşilada, Victoria Yaneva, S. Harper
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引用次数: 12

Abstract

Autism diagnostic procedure is a subjective, challenging and expensive procedure and relies on behavioral, historical and parental report information. In our previous, we proposed a machine learning classifier to be used as a potential screening tool or used in conjunction with other diagnostic methods, thus aiding established diagnostic methods. The classifier uses eye movements of people on web pages but it only considers non-sequential data. It achieves the best accuracy by combining data from several web pages and it has varying levels of accuracy on different web pages. In this present paper, we investigate whether it is possible to detect autism based on eye-movement sequences and achieve stable accuracy across different web pages to be not dependent on specific web pages. We used Scanpath Trend Analysis (STA) which is designed for identifying a trending path of a group of users on a web page based on their eye movements. We first identify trending paths of people with autism and neurotypical people. To detect whether or not a person has autism, we calculate the similarity of his/her path to the trending paths of people with autism and neurotypical people. If the path is more similar to the trending path of neurotypical people, we classify the person as a neurotypical person. Otherwise, we classify her/him as a person with autism. We systematically evaluate our approach with an eye-tracking dataset of 15 verbal and highly-independent people with autism and 15 neurotypical people on six web pages. Our evaluation shows that the STA approach performs better on individual web pages and provides more stable accuracy across different pages.
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基于网络眼动序列的自闭症检测:一种扫描路径趋势分析方法
自闭症诊断过程是一个主观的,具有挑战性和昂贵的过程,依赖于行为,历史和父母报告信息。在我们之前的文章中,我们提出了一个机器学习分类器作为潜在的筛选工具或与其他诊断方法结合使用,从而帮助建立诊断方法。该分类器利用人们在网页上的眼球运动,但只考虑非顺序数据。它通过组合来自多个网页的数据来达到最佳精度,并且在不同的网页上具有不同的精度水平。在本文中,我们研究了基于眼动序列的自闭症检测是否有可能在不同的网页上实现稳定的准确性,而不依赖于特定的网页。我们使用扫描路径趋势分析(STA),这是为了根据一组用户的眼球运动来识别他们在网页上的趋势路径。我们首先确定自闭症患者和神经正常人群的趋势路径。为了检测一个人是否患有自闭症,我们计算他/她的路径与自闭症患者和神经正常人群的趋势路径的相似性。如果路径与神经典型者的趋势路径更相似,我们就把这个人归类为神经典型者。否则,我们将她/他归类为自闭症患者。我们系统地评估了我们的方法,使用了一个眼动追踪数据集,该数据集由15名语言和高度独立的自闭症患者和15名神经正常的人在6个网页上组成。我们的评估表明,STA方法在单个网页上表现更好,并且在不同页面之间提供更稳定的准确性。
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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