PREDICTING AUTISM DIAGNOSIS USING IMAGE WITH FIXATIONS AND SYNTHETIC SACCADE PATTERNS.

Chongruo Wu, Sidrah Liaqat, Sen-Ching Cheung, Chen-Nee Chuah, Sally Ozonoff
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引用次数: 11

Abstract

Signs of autism spectrum disorder (ASD) emerge in the first year of life in many children, but diagnosis is typically made much later, at an average age of 4 years in the United States. Early intervention is highly effective for young children with ASD, but is typically reserved for children with a formal diagnosis, making accurate identification as early as possible imperative. A screening tool that could identify ASD risk during infancy offers the opportunity for intervention before the full set of symptoms is present. In this paper, we propose two machine learning methods, synthetic saccade approach and image based approach, to automatically classify ASD given the scanpath data from children on free viewing of natural images. The first approach uses a generative model of synthetic saccade patterns to represent the baseline scan-path from a typical non-ASD individual and combines it with the input scanpath as well as other auxiliary data as inputs to a deep learning classifier. The second approach adopts a more holistic image based approach by feeding the input image and a sequence of fixation maps into a state-of-the-art convolutional neural network. Our experiments indicate that we can get 65.41% accuracy on the validation dataset.

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利用注视图像和合成扫视模式预测自闭症诊断。
自闭症谱系障碍(ASD)的症状在许多儿童出生后的第一年就出现了,但诊断通常要晚得多,在美国平均是4岁。早期干预对患有ASD的幼儿非常有效,但通常是为正式诊断的儿童保留的,因此尽早准确识别是必要的。一种可以在婴儿时期识别ASD风险的筛查工具为在出现全套症状之前进行干预提供了机会。在本文中,我们提出了两种机器学习方法,即合成眼跳法和基于图像的方法,在儿童自由观看自然图像的扫描路径数据下自动分类ASD。第一种方法使用合成扫视模式的生成模型来表示来自典型非asd个体的基线扫描路径,并将其与输入扫描路径以及其他辅助数据相结合,作为深度学习分类器的输入。第二种方法采用更全面的基于图像的方法,将输入图像和固定映射序列输入到最先进的卷积神经网络中。实验结果表明,在验证数据集上,准确率达到65.41%。
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