基于眼动追踪表征学习模型的自闭症谱系障碍识别

Chen Xia, Kexin Chen, K. Li, Hongxia Li
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引用次数: 4

摘要

自闭症谱系障碍(ASD)是一种终身发育障碍,其特征是重复性、限制性行为和沟通和社会互动缺陷。早期诊断和干预可显著降低该病的危害。然而,缺乏有效的临床资源进行早期诊断一直是一个长期存在的问题。针对这一问题,在本研究中,我们将深度神经网络的最新进展应用于眼动追踪数据,对有无ASD的儿童进行分类。首先,我们记录了31名ASD儿童和43名正常发育儿童在4类刺激下的眼动数据,构建了ASD识别的眼动追踪数据集。基于采集到的眼动数据,我们提取了所有受试者每张图像上的动态跳动扫描路径。然后,我们利用从卷积神经网络中学习到的分层特征和多维视觉显著特征对扫描路径进行编码。接下来,我们采用支持向量机通过监督学习来学习扫描路径编码片段与两类标签之间的关系。最后,我们得出每个扫描路径的分数,并根据所有扫描路径的分数对每个受试者做出最终的判断。实验结果表明,该模型在诊断测试中的分类准确率最高可达94.28%。基于现有的研究和计算模型,动态跳眼扫描可以为ASD的早期检测提供有希望的发现和启示。此外,将更多的扫描路径信息整合到模型中,对扫描路径进行更深入的描述,可以提高识别精度。我们希望我们的工作能够为ASD早期发现和诊断的多模式方法的发展做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Autism Spectrum Disorder via an Eye-Tracking Based Representation Learning Model
Autism spectrum disorder (ASD) is a lifelong developmental disorder characterized by repetitive, restricted behavior and deficits in communication and social interactions. Early diagnosis and intervention can significantly reduce the hazards of the disease. However, the lack of effective clinical resources for early diagnosis has been a long-standing problem. In response to this problem, we apply the recent advances in deep neural networks on eye-tracking data in this study to classify children with and without ASD. First, we record the eye movement data of 31 children with ASD and 43 typically developing children on four categories of stimuli to construct an eye-tracking data set for ASD identification. Based on the collected eye movement data, we extract the dynamic saccadic scanpath on each image for all subjects. Then, we utilize the hierarchical features learned from a convolutional neural network and multidimensional visual salient features to encode the scanpaths. Next, we adopt the support vector machine to learn the relationship between encoded pieces of scanpaths and the labels from the two classes via supervised learning. Finally, we derive the scores of each scanpath and make the final judgment for each subject according to the scores on all scanpaths. The experimental results have shown that the proposed model has a maximum classification accuracy of 94.28% in the diagnostic tests. Based on existing research and calculation models, dynamic saccadic scanpaths can provide promising findings and implications for ASD early detection. Furthermore, integrating more information of the scanpaths into the model and developing a more in-depth description of scanpaths can improve the recognition accuracy. We hope our work can contribute to the development of multimodal approaches in the early detection and diagnosis of ASD.
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