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Joint laplacian diagonalization for multi-modal brain community detection

机译:联合拉普拉斯对角化技术用于多模式脑部社区检测

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In this paper we present a novel approach to group-wise multi-modal community detection, i.e. identification of coherent sub-graphs across multiple subjects with strong correlation across modalities. This approach is based on joint diagonalization of two or more graph Laplacians aiming at finding a common eigenspace across individuals, over which spectral clustering in fewer dimension is then applied. The method allows to identify common sub-networks across different graphs. We applied our method on 40 multi-modal structural and functional healthy subjects, finding well known sub-networks described in literature. Our experiments revealed that detected multi-modal brain sub-networks improve the consistency of group-wise unimodal community detection.
机译:在本文中,我们提出了一种新的方法来进行基于组的多模式社区检测,即识别多个主题之间具有连贯性的子图,并且各个模式之间具有很强的相关性。此方法基于两个或更多个图拉普拉斯算子的联合对角化,旨在找到各个个体之间的共同特征空间,然后在其上应用较少维度的光谱聚类。该方法允许跨不同的图来识别公共子网。我们将我们的方法应用于40个多模式结构和功能健康的受试者,发现了文献中描述的众所周知的子网络。我们的实验表明,检测到的多模式脑子网络可提高逐组单模式社区检测的一致性。

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