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Kernel-Based Analysis of Functional Brain Connectivity on Grassmann Manifold

机译:基于内核的基于核心脑连接的内核分析

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Functional Magnetic Resonance Imaging (fMRI) is widely adopted to measure brain activity, aiming at studying brain functions both in healthy and pathological subjects. Discrimination and identification of functional alterations in the connectivity, characterizing mental disorders, are getting increasing attention in neuroscience community. We present a kernel-based method allowing to classify functional networks and characterizing those features that are significantly discriminative between two classes. We used a manifold approach based on Grassmannian geometry and graph Laplacians, which permits to learn a set of sub-connectivities that can be used in combination with Support Vector Machine (SVM) to classify functional connectomes and for identifying neuroanatomically different connections. We tested our approach on a real dataset of functional connectomes with subjects affected by Autism Spectrum Disorder (ASD), finding consistent results with the models of aberrant connections in ASD.
机译:功能性磁共振成像(fMRI)技术被广泛采用的衡量大脑的活动,目的是既健康和病理学科研究脑功能。歧视和连通性功能的改变,表征精神障碍的识别,越来越在神经科学界越来越多的关注。我们提出了一个基于内核的方法使分类功能网络和表征那些两个类之间显著判别特征。我们使用基于格拉斯曼几何和图形拉普拉斯算子,其允许学习一组可以组合使用支持向量机(SVM)以功能性connectomes分类和用于识别神经解剖学不同的连接子连接性的歧管的方法。我们测试功能connectomes与受自闭症谱系障碍(ASD)科目真实数据集我们的方法,发现在ASD异常连接的型号一致的结果。

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