论文标题
凝视偏好检测的卷积神经网络:儿童自闭症谱系障碍诊断的潜在工具
A Convolutional Neural Network for gaze preference detection: A potential tool for diagnostics of autism spectrum disorder in children
论文作者
论文摘要
已知自闭症谱系障碍(ASD)的早期诊断可改善受影响个体的生活质量。但是,即使在包括美国在内的较富裕国家,诊断也经常被推迟,这很大程度上是由于黄金标准诊断工具(例如自闭症诊断观察时间表(ADOS))和自闭症诊断面试重新审查(ADI-R)是很耗时的,并且需要专业知识才能进行管理。由于缺乏训练有素的专家,这种趋势甚至更为明显的资源设置。结果,已经开发出了在受控环境中对视觉刺激反应的独特方法,以帮助促进早期诊断。先前的研究表明,当呈现社交场景和抽象场景并排的视频时,ASD的孩子将注意力将注意力集中在屏幕上的抽象图像上,而不是没有ASD的孩子。这种差异反应使得基于针对不同视觉刺激的眼动追踪来实施算法来快速诊断ASD。在这里,我们建议使用从一分钟刺激视频中提取的图像进行凝视预测的卷积神经网络(CNN)算法。我们的模型达到了高精度和鲁棒性,可与独立人士预测凝视方向,并使用与测试过程中使用的相机不同的相机。除此之外,拟议的算法还达到了快速响应时间,从而对ASD进行了近乎实时的评估。因此,通过应用所提出的方法,我们可以显着减少诊断时间,并促进低资源区域中ASD的诊断。
Early diagnosis of autism spectrum disorder (ASD) is known to improve the quality of life of affected individuals. However, diagnosis is often delayed even in wealthier countries including the US, largely due to the fact that gold standard diagnostic tools such as the Autism Diagnostic Observation Schedule (ADOS) and the Autism Diagnostic Interview-Revised (ADI-R) are time consuming and require expertise to administer. This trend is even more pronounced lower resources settings due to a lack of trained experts. As a result, alternative, less technical methods that leverage the unique ways in which children with ASD react to visual stimulation in a controlled environment have been developed to help facilitate early diagnosis. Previous studies have shown that, when exposed to a video that presents both social and abstract scenes side by side, a child with ASD will focus their attention towards the abstract images on the screen to a greater extent than a child without ASD. Such differential responses make it possible to implement an algorithm for the rapid diagnosis of ASD based on eye tracking against different visual stimuli. Here we propose a convolutional neural network (CNN) algorithm for gaze prediction using images extracted from a one-minute stimulus video. Our model achieved a high accuracy rate and robustness for prediction of gaze direction with independent persons and employing a different camera than the one used during testing. In addition to this, the proposed algorithm achieves a fast response time, providing a near real-time evaluation of ASD. Thereby, by applying the proposed method, we could significantly reduce the diagnosis time and facilitate the diagnosis of ASD in low resource regions.