首页> 外文会议>International Workshop on Machine Learning in Medical Imaging;International Conference on Medical Image Computing and Computer-Assisted Intervention >GSR-Net: Graph Super-Resolution Network for Predicting High-Resolution from Low-Resolution Functional Brain Connectomes
【24h】

GSR-Net: Graph Super-Resolution Network for Predicting High-Resolution from Low-Resolution Functional Brain Connectomes

机译:GSR-NET:图超分辨率网络,用于预测低分辨率功能脑Connectomes的高分辨率

获取原文

摘要

Catchy but rigorous deep learning architectures were tailored for image super-resolution (SR), however, these fail to generalize to non-Euclidean data such as brain connectomes. Specifically, building generative models for super-resolving a low-resolution brain con-nectome at a higher resolution (i.e., adding new graph nodes/edges) remains unexplored -although this would circumvent the need for costly data collection and manual labelling of anatomical brain regions (i.e. parcellation). To fill this gap, we introduce GSR-Net (Graph Super-Resolution Network), the first super-resolution framework operating on graph-structured data that generates high-resolution brain graphs from low-resolution graphs. First, we adopt a U-Net like architecture based on graph convolution, pooling and unpooling operations specific to non-Euclidean data. However, unlike conventional U-Nets where graph nodes represent samples and node features are mapped to a low-dimensional space (encoding and decoding node attributes or sample features), our GSR-Net operates directly on a single connectome: a fully connected graph where conventionally, a node denotes a brain region, nodes have no features, and edge weights denote brain connectivity strength between two regions of interest (ROIs). In the absence of original node features, we initially assign identity feature vectors to each brain ROI (node) and then leverage the learned local receptive fields to learn node feature representations. Specifically, for each ROI, we learn a node feature embedding by locally averaging the features of its neighboring nodes based on their connectivity weights. Second, inspired by spectral theory, we break the symmetry of the U-Net architecture by topping it up with a graph super-resolution (GSR) layer and two graph convolutional network layers to predict a HR (high-resolution) graph while preserving the characteristics of the LR (low-resolution) input. Our proposed GSR-Net framework outperformed its variants for predicting high-resolution brain functional connectomes from low-resolution connectomes.
机译:吸引人但严谨的深度学习架构针对图像超分辨率(SR)量身定制,但是,这些未能概括为脑Connectomes等非欧几里德数据。具体地,以更高的分辨率(即,添加新的图形节点/边缘)超声解析低分辨率脑与地Nectome的建立生成模型仍然是未探究的 - 虽然这将规避需要昂贵的数据收集和解剖学脑的手动标记地区(即局部)。为了填补这种差距,我们介绍了GSR-Net(图形超分辨率网络),这是在图形结构数据上运行的第一超分辨率框架,从低分辨率图产生高分辨率脑图。首先,我们基于Graph卷积,池和未加工操作,采用U-Net等架构,特定于非欧几里德数据。但是,与常规U-ets不同,其中曲线节点代表样本和节点特征映射到低维空间(编码和解码节点属性或样本功能),我们的GSR-Net直接在单个Connectome上运行:完全连接的图形传统上,节点表示大脑区域,节点没有特征,边缘重量表示兴趣区域(ROI)之间的脑连接强度。在没有原始节点特征的情况下,我们最初将标识特征向量分配给每个脑投资回报(节点),然后利用学习的本地接收字段来学习节点特征表示。具体地,对于每个ROI,我们学习通过基于其连接权重平均其相邻节点的特征来嵌入的节点特征。其次,通过光谱理论的启发,我们通过用图形超分辨率(GSR)层和两个图形卷积网络层来打破U-Net架构的对称性,以预测HR(高分辨率)图,同时保留LR(低分辨率)输入的特性。我们提出的GSR-Net框架优于其变体,以预测从低分辨率Conckomes预测高分辨率脑功能互联网。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号