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A Longitudinal MRI Study of Amygdala and Hippocampal Subfields for Infants with Risk of Autism

机译:患有自闭症风险的氨基达拉和海马子场的纵向MRI研究

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Currently, there are still no early biomarkers to detect infants with risk of autism spectrum disorder (ASD), which is mainly diagnosed based on behavioral observations at three or four years of age. Since intervention efforts may miss a critical developmental window after 2 years old, it is clinically significant to identify imaging-based biomarkers at an early stage for better intervention, before behavioral diagnostic signs of ASD typically arising. Previous studies on older children and young adults with ASD demonstrate altered developmental trajectories of the amygdala and hippocampus. However, our knowledge on their developmental trajectories in early postnatal stages remains very limited. In this paper, for the first time, we propose a volume-based analysis of the amygdala and hippocampal subfields of the infant subjects with risk of ASD at 6, 12, and 24 months of age. To address the challenge of low tissue contrast and small structural size of infant amygdala and hippocampal subfields, we propose a novel deep-learning approach, dilated-dense U-Net, to digitally segment the amygdala and hippocampal subfields in a longitudinal dataset, the National Database for Autism Research (NDAR). A volume-based analysis is then performed based on the segmentation results. Our study shows that the overgrowth of amygdala and cornu ammonis sectors (CA) 1-3 May start from 6 months of age, which may be related to the emergence of autistic spectrum disorder.
机译:目前,仍然没有早期生物标志物来检测具有自闭症谱系疾病(ASD)风险的婴儿,主要诊断为三四年龄的行为观察。由于干预措施可能会错过2岁以后的关键发育窗口,因此在通常产生的行为诊断迹象之前,在早期干预之前识别基于成像的生物标志物的临床意义。以前关于老年人和ASD的年轻人的研究表明了Amygdala和海马的改变了发育轨迹。但是,我们对产后早期产后轨迹的知识仍然非常有限。本文首次提出了对婴儿受试者的杏仁菌和海马子场的基于体积的分析,风险为6,12和24个月。为了应对低组织对比和小型结构大小的婴儿Amygdala和海马子场的挑战,我们提出了一种新颖的深度学习方法,扩张密集的U-Net,以数字分段为纵向数据集,国家/地区在纵向数据集中分段为纵向数据集自闭症研究数据库(Ndar)。然后基于分段结果执行基于卷的分析。我们的研究表明,Amygdala和Cornu Ammonis(CA)1-3的过度生长可能从6个月开始,这可能与自闭症谱系障碍的出现有关。

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