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开发一种眼动追踪算法,作为早期诊断儿童自闭症谱系障碍的潜在工具。

Developing an eye-tracking algorithm as a potential tool for early diagnosis of autism spectrum disorder in children.

作者信息

Vargas-Cuentas Natalia I, Roman-Gonzalez Avid, Gilman Robert H, Barrientos Franklin, Ting James, Hidalgo Daniela, Jensen Kelly, Zimic Mirko

机构信息

Bioinformatics and Molecular Biology Laboratory, Research and Development Laboratory, Science and Philosophy Faculty, University Peruana Cayetano Heredia, Lima, Peru.

Department of International Health. School of Public Health. Johns Hopkins University, Baltimore, Maryland, United States of America.

出版信息

PLoS One. 2017 Nov 30;12(11):e0188826. doi: 10.1371/journal.pone.0188826. eCollection 2017.

Abstract

BACKGROUND

Autism spectrum disorder (ASD) currently affects nearly 1 in 160 children worldwide. In over two-thirds of evaluations, no validated diagnostics are used and gold standard diagnostic tools are used in less than 5% of evaluations. Currently, the diagnosis of ASD requires lengthy and expensive tests, in addition to clinical confirmation. Therefore, fast, cheap, portable, and easy-to-administer screening instruments for ASD are required. Several studies have shown that children with ASD have a lower preference for social scenes compared with children without ASD. Based on this, eye-tracking and measurement of gaze preference for social scenes has been used as a screening tool for ASD. Currently available eye-tracking software requires intensive calibration, training, or holding of the head to prevent interference with gaze recognition limiting its use in children with ASD.

METHODS

In this study, we designed a simple eye-tracking algorithm that does not require calibration or head holding, as a platform for future validation of a cost-effective ASD potential screening instrument. This system operates on a portable and inexpensive tablet to measure gaze preference of children for social compared to abstract scenes. A child watches a one-minute stimulus video composed of a social scene projected on the left side and an abstract scene projected on the right side of the tablet's screen. We designed five stimulus videos by changing the social/abstract scenes. Every child observed all the five videos in random order. We developed an eye-tracking algorithm that calculates the child's gaze preference for the social and abstract scenes, estimated as the percentage of the accumulated time that the child observes the left or right side of the screen, respectively. Twenty-three children without a prior history of ASD and 8 children with a clinical diagnosis of ASD were evaluated. The recorded video of the child´s eye movement was analyzed both manually by an observer and automatically by our algorithm.

RESULTS

This study demonstrates that the algorithm correctly differentiates visual preference for either the left or right side of the screen (social or abstract scenes), identifies distractions, and maintains high accuracy compared to the manual classification. The error of the algorithm was 1.52%, when compared to the gold standard of manual observation.

DISCUSSION

This tablet-based gaze preference/eye-tracking algorithm can estimate gaze preference in both children with ASD and without ASD to a high degree of accuracy, without the need for calibration, training, or restraint of the children. This system can be utilized in low-resource settings as a portable and cost-effective potential screening tool for ASD.

摘要

背景

目前,全球每160名儿童中就有近1名受到自闭症谱系障碍(ASD)的影响。在超过三分之二的评估中,未使用经过验证的诊断方法,而金标准诊断工具在不到5%的评估中被使用。目前,ASD的诊断除了临床确认外,还需要冗长且昂贵的测试。因此,需要快速、廉价、便携且易于操作的ASD筛查工具。多项研究表明,与无ASD的儿童相比,患有ASD的儿童对社交场景的偏好较低。基于此,对社交场景的眼动追踪和注视偏好测量已被用作ASD的筛查工具。目前可用的眼动追踪软件需要密集校准、培训或固定头部以防止干扰注视识别,这限制了其在ASD儿童中的应用。

方法

在本研究中,我们设计了一种无需校准或固定头部的简单眼动追踪算法,作为未来验证具有成本效益的ASD潜在筛查工具的平台。该系统在便携式且价格低廉的平板电脑上运行,以测量儿童对社交场景与抽象场景的注视偏好。儿童观看一段一分钟的刺激视频,视频由投射在平板电脑屏幕左侧的社交场景和右侧的抽象场景组成。我们通过改变社交/抽象场景设计了五个刺激视频。每个儿童以随机顺序观看所有五个视频。我们开发了一种眼动追踪算法,该算法计算儿童对社交和抽象场景的注视偏好,分别以儿童观察屏幕左侧或右侧的累计时间百分比来估计。对23名无ASD病史的儿童和8名临床诊断为ASD的儿童进行了评估。儿童眼动的录制视频由一名观察者手动分析,并由我们的算法自动分析。

结果

本研究表明,该算法能够正确区分对屏幕左侧或右侧(社交或抽象场景)的视觉偏好,识别干扰因素,并且与手动分类相比保持了较高的准确性。与手动观察的金标准相比,该算法的误差为1.52%。

讨论

这种基于平板电脑的注视偏好/眼动追踪算法能够高度准确地估计ASD儿童和无ASD儿童的注视偏好,无需对儿童进行校准、培训或约束。该系统可在资源匮乏的环境中用作ASD的便携式且具有成本效益的潜在筛查工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0719/5708820/d29e36c03202/pone.0188826.g001.jpg

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