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Predicting High-Resolution Brain Networks Using Hierarchically Embedded and Aligned Multi-resolution Neighborhoods

机译:使用分层嵌入和对齐的多分辨率邻域预测高分辨率脑网络

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Several works have been dedicated to image super-resolution (i.e., synthesizing high-resolution data from low-resolution data). However, existing works only operate on images (e.g., predicting 7T-like magnetic resonance image (MRI) from 3T MRI) whereas brain connectivity network super-resolution remains unexplored. To fill this gap, we propose the first framework for predicting high-resolution (HR) brain networks from low-dimensional (LR) brain networks by hierarchically aligning and embedding LR neighborhood centered at the testing sample, along with its corresponding HR neighborhood. The proposed hierarchical embedding better preserves higher-order structural neighborhood of subjects within each domain. Recently, a seminal work was introduced for brain network prediction at a single resolution (or scale), where domain alignment was achieved using canonical correlation analysis followed by manifold learning to identify the most similar neighbors to the testing subject (i.e., testing neighborhood) in the source domain that can best predict the missing target network. Here, we inductively extend this idea by hierarchically learning the embedding and alignment of embedding of LR and HR neighborhoods. Our proposed framework achieved the best results in comparison with baseline methods.
机译:已经有一些作品致力于图像超分辨率(即,从低分辨率数据合成高分辨率数据)。但是,现有的作品仅在图像上起作用(例如,从3T MRI预测类似7T的磁共振图像(MRI)),而大脑连接网络的超分辨率仍待探索。为了填补这一空白,我们提出了第一个框架,该框架通过分层对齐和嵌入以测试样本为中心的LR邻域及其对应的HR邻域,从低维(LR)脑网络预测高分辨率(HR)的脑网络。提出的分层嵌入可以更好地保留每个域内主题的高阶结构邻域。最近,一项开创性的工作被引入到以单一分辨率(或规模)进行脑网络预测的研究中,该领域的实现是使用典范的相关性分析,然后进行多种学习以识别与测试对象最相似的邻居(即测试邻域),从而实现域对齐。最能预测丢失的目标网络的源域。在这里,我们通过分层学习LR和HR邻域的嵌入和对齐方式,归纳地扩展了这个想法。与基线方法相比,我们提出的框架取得了最佳结果。

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