New Approach for Classification of Autistic vs. Typically Developing Brain Using White Matter Volumes

M. Abdelrahman, Asem M. Ali, A. Farag, M. Casanova, A. Farag
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引用次数: 3

Abstract

Autism is a complex developmental disability, characterized by deficits in social interaction, communication skills, range of interests, and occasionally the presence of stereotyped behaviors. Several studies show that changes in brain weight and volume over aging follow a unique trajectory in those affected by the condition~\cite{MICCAIMost00}. In this work, we develop a robust technique for evaluating the volume of white matter (WM), and use it as the main classification criteria. We perform MRI-based analysis on the brains of 14 autistic and 28 control subjects, male and female between aged 7 to 38 years. The proposed framework consists of several stages. First, the entire T1-weighted MRI scans are filtered out from noise using anisotropic diffusion filter. Then, the white matter (WM) is segmented from the skull. The segmentation framework is the search for maximum-a-posterior configurations in a Markov Gibbs Random Field (MGRF) model. A 3D mesh is then generated from the segmented WM. Finally, the volume of the 3D mesh is computed using a new algorithm. The experiments show accurate classification results of the proposed framework.
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利用脑白质体积对自闭症与正常发育脑进行分类的新方法
自闭症是一种复杂的发育障碍,其特征是社会交往、沟通技巧、兴趣范围的缺陷,偶尔也会出现刻板的行为。几项研究表明,受这种疾病影响的人随着年龄的增长,大脑重量和体积的变化遵循着一种独特的轨迹\cite{MICCAIMost00}。在这项工作中,我们开发了一种强大的技术来评估白质(WM)的体积,并将其作为主要的分类标准。我们对14名自闭症患者和28名对照组进行了基于核磁共振成像的大脑分析,他们的年龄在7至38岁之间,有男有女。拟议的框架包括几个阶段。首先,使用各向异性扩散滤波器将整个t1加权MRI扫描从噪声中滤除。然后,从颅骨上分割白质(WM)。分割框架是在马尔可夫吉布斯随机场(MGRF)模型中搜索最大后验配置。然后从分割的WM中生成三维网格。最后,采用一种新的算法计算三维网格的体积。实验结果表明,该框架的分类结果准确。
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