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Diagnosis of Autism Spectrum Disorders Using Regional and Interregional Morphological Features

机译:利用区域和区域间形态特征诊断自闭症谱系障碍

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摘要

This article describes a novel approach to identify autism spectrum disorder (ASD) utilizing regional and interregional morphological patterns extracted from structural magnetic resonance images. Two types of features are extracted to characterize the morphological patterns: (1) Regional features, which includes the cortical thickness, volumes of cortical gray matter, and cortical-associated white matter regions, and several subcortical structures extracted from different regions-of-interest (ROIs); (2) Interregional features, which convey the morphological change pattern between pairs of ROIs. We demonstrate that the integration of regional and interregional features via multi-kernel learning technique can significantly improve the classification performance of ASD, compared with using either regional or interregional features alone. Specifically, the proposed framework achieves an accuracy of 96.27% and an area of 0.9952 under the receiver operating characteristic curve, indicating excellent diagnostic power and generalizability. The best performance is achieved when both feature types are weighted approximately equal, indicating complementary between these two feature types. Regions that contributed the most to classification are in line with those reported in the previous studies, particularly the subcortical structures that are highly associated with human emotional modulation and memory formation. The autistic brains demonstrate a significant rightward asymmetry pattern particularly in the auditory language areas. These findings are in agreement with the fact that ASD is a behavioral- and language-related neurodevelopmental disorder. By concurrent consideration of both regional and interregional features, the current work presents an effective means for better characterization of neurobiological underpinnings of ASD that facilitates its identification from typically developing children.
机译:本文介绍了一种利用从结构磁共振图像中提取的区域和区域间形态模式来识别自闭症谱系障碍(ASD)的新颖方法。提取两种类型的特征来表征形态学模式:(1)区域特征,包括皮质厚度,皮质灰质的体积和与皮质相关的白质区域,以及从不同感兴趣区域提取的几个皮质下结构(ROI); (2)区域间特征,可在ROI对之间传递形态变化模式。我们证明,与单独使用区域或区域间功能相比,通过多核学习技术集成区域和区域间功能可以显着提高ASD的分类性能。具体而言,所提出的框架在接收器工作特性曲线下实现了96.27%的精度和0.9952的面积,表明了出色的诊断能力和通用性。当两种要素类型的权重近似相等时,可以达到最佳性能,这表明这两种要素类型之间具有互补性。对分类贡献最大的区域与先前研究中报道的区域一致,特别是与人类情绪调节和记忆形成高度相关的皮质下结构。自闭症的大脑表现出明显的向右不对称模式,尤其是在听觉语言区域。这些发现与ASD是一种行为和语言相关的神经发育障碍这一事实相吻合。通过同时考虑区域和区域间的特征,当前的工作为更好地描述ASD的神经生物学基础提供了一种有效的手段,这有助于从典型的发育中儿童中识别出ASD。

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