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Informative Feature-Guided Siamese Network for Early Diagnosis of Autism

机译:信息化专题引导暹罗网络早期诊断自闭症

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Autism, or autism spectrum disorder (ASD), is a complex developmental disability, and usually diagnosed with observations at around 3-4 years old based on behaviors. Studies have indicated that the early treatment, especially during early brain development in the first two years of life, can significantly improve the symptoms, therefore, it is important to identify ASD as early as possible. Most previous works employed imaging-based biomarkers for the early diagnosis of ASD. However, they only focused on extracting features from the intensity images, ignoring the more informative guidance from segmentation and parcellation maps. Moreover, since the number of autistic subjects is always much smaller than that of normal subjects, this class-imbalance issue makes the ASD diagnosis more challenging. In this work, we propose an end-to-end informative feature-guided Siamese network for the early ASD diagnosis. Specifically, besides Tl w and T2w images, the discriminative features from segmentation and parcellation maps are also employed to train the model. To alleviate the class-imbalance issue, the Siamese network is utilized to effectively learn what makes the pair of inputs belong to the same class or different classes. Furthermore, the subject-specific attention module is incorporated to identify the ASD-related regions in an end-to-end fully automatic learning manner. Both ablation study and comparisons demonstrate the effectiveness of the proposed method, achieving an overall accuracy of 85.4%, sensitivity of 80.8%, and specificity of 86.7%.
机译:自闭症或自闭症谱系障碍(ASD)是复杂的发育残疾,并且通常在基于行为的3-4岁左右诊断出观察。研究表明,早期治疗,特别是在寿命前两年的早期大脑发育期间,可以显着改善症状,因此,尽早识别ASD是很重要的。最先前的作品采用基于成像的生物标志物,用于早期诊断ASD。但是,它们仅重点关注从强度图像中提取特征,忽略分段和局部地图的更具信息化指导。此外,由于自闭症的数量总是小于正常科目的数量,因此这种类别不平衡问题使ASD诊断更具有挑战性。在这项工作中,我们提出了一个最终的信息型专题导向暹罗网络,用于早期ASD诊断。具体地,除了TL W和T2W图像之外,还采用来自分割和局部地图的鉴别特征来训练模型。为了减轻类别不平衡问题,暹罗网络被利用来有效地学习使这对输入属于同一类或不同的类。此外,致托主题的注意模块被纳入以端到端的全自动学习方式识别ASD相关区域。消融研究和比较证明了该方法的有效性,实现了85.4%,敏感性为80.8%,特异性为86.7%。

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