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Attention-Based Autism Spectrum Disorder Screening With Privileged Modality

机译:带有特权模态的基于注意力的自闭症谱系障碍筛查

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This paper presents a novel framework for automatic and quantitative screening of autism spectrum disorder (ASD). It is motivated to address two issues in the current clinical settings: 1) short of clinical resources with the prevalence of ASD (1.7% in the United States), and 2) subjectivity of ASD screening. This work differentiates itself with three unique features: first, it proposes an ASD screening with privileged modality framework that integrates information from two behavioral modalities during training and improves the performance on each single modality at testing. The proposed framework does not require overlap in subjects between the modalities. Second, it develops the first computational model to classify people with ASD using a photo-taking task where subjects freely explore their environment in a more ecological setting. Photo-taking reveals attentional preference of subjects, differentiating people with ASD from healthy people, and is also easy to implement in real-world clinical settings without requiring advanced diagnostic instruments. Third, this study for the first time takes advantage of the temporal information in eye movements while viewing images, encoding more detailed behavioral differences between ASD people and healthy controls. Experiments show that our ASD screening models can achieve superior performance, outperforming the previous state-of-the-art methods by a considerable margin. Moreover, our framework using diverse modalities demonstrates performance improvement on both the photo-taking and image-viewing tasks, providing a general paradigm that takes in multiple sources of behavioral data for a more accurate ASD screening. The framework is also applicable to various scenarios where one-to-one pairwise relationship is difficult to obtain across different modalities.
机译:本文提出了一种自动和定量筛选自闭症谱系障碍(ASD)的新颖框架。它旨在解决当前临床环境中的两个问题:1)ASD的患病临床资源不足(在美国为1.7%),以及2)ASD筛查的主观性。这项工作通过三个独特的功能与众不同:首先,它提出了一种具有特权模态框架的ASD筛选,该框架在训练过程中集成了来自两种行为模态的信息,并提高了测试中每个模态的性能。拟议的框架不需要模式之间的主题重叠。其次,它开发了第一个计算模型,通过使用照相任务对被测者进行分类,受试者可以在更生态的环境中自由探索他们的环境。拍照揭示了受试者的注意力偏好,将ASD人与健康人区分开来,并且易于在现实的临床环境中实施而无需先进的诊断工具。第三,本研究首次在查看图像时利用眼动中的时间信息,编码了ASD人与健康对照之间更详细的行为差异。实验表明,我们的ASD筛选模型可以实现出色的性能,其性能大大优于以前的最新方法。此外,我们使用多种模式的框架展示了在拍照和图像查看任务上的性能提升,提供了一种通用范式,该范式吸收了多种行为数据源,可以进行更准确的ASD筛选。该框架还适用于各种情况,这些情况难以在不同的方式之间获得一对一的成对关系。

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