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Kernel-Based Analysis of Functional Brain Connectivity on Grassmann Manifold

机译:基于内核的Grassmann流形上的功能性大脑连接性分析

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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:功能磁共振成像(fMRI)被广泛用于测量大脑活动,旨在研究健康和病理受试者的大脑功能。区分和识别连接性功能改变(表征精神障碍)在神经科学界越来越受到关注。我们提出了一种基于内核的方法,该方法可以对功能网络进行分类并表征在两个类之间有明显区别的那些功能。我们使用了基于Grassmannian几何和图Laplacians的流形方法,该方法允许学习一组子连接性,这些子连接性可以与Support Vector Machine(SVM)结合使用以对功能性连接体分类并识别神经解剖学上不同的连接。我们在患有自闭症谱系障碍(ASD)的受试者的功能性连接体的真实数据集上测试了我们的方法,并与ASD中异常连接的模型发现了一致的结果。

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