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Multi-way Regression Reveals Backbone of Macaque Structural Brain Connectivity in Longitudinal Datasets

机译:多元回归揭示了纵向数据集在猕猴结构脑连接的骨干

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Brain development has been an intriguing window to study the dynamic formation of brain features at a variety of scales, such as cortical convolution and white matter wiring diagram. However, recent studies only focused on a few specific fasciculus or several region. Very few studies focused on the development of macro-scale wiring diagrams due to the lack of longitudinal datasets and associated methods. In this work, we take the advantage of recently released longitudinal macaque MRI and DTI datasets and develop a novel multi-way regression method to model such datasets. By this method, we extract the backbone of structural connectome of macaque brains and study the trajectory of its development over time. Graphic statistics of these backbone connectomes demonstrate their soundness. Our findings are consistent with the reports in the literatures, suggesting the effectiveness and promise of this framework.
机译:大脑发展一直是一种有趣的窗口,用于研究各种秤的脑特征的动态形成,例如皮质卷积和白质线图。 然而,最近的研究仅关注一些特定的束带或几个地区。 很少有研究专注于由于缺乏纵向数据集和相关方法,对宏观布线图的开发。 在这项工作中,我们利用最近发布了纵向猕猴MRI和DTI数据集的优势,并开发了一种新的多元回归方法来模拟此类数据集。 通过这种方法,我们提取了猕猴结构结合的骨干,并随着时间的推移研究了其发展的轨迹。 这些骨干连接仪的图形统计信息展示了他们的声音。 我们的研究结果与文献中的报告一致,表明本框架的有效性和承诺。

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