论文标题
以节点为中心的图形学习来自大脑状态识别的数据
Node-Centric Graph Learning from Data for Brain State Identification
论文作者
论文摘要
数据驱动的图形学习通过确定其节点之间的连接强度来对网络进行建模。数据是指将值与每个图节点相关联的图形信号。现有的图形学习方法要么将简化模型用于图形信号,要么就计算和内存需求而言,它们非常昂贵。当节点数量较高或网络中存在时间变化时,尤其如此。为了考虑具有合理计算障碍的更丰富的模型,我们基于图表上的表示学习介绍了一种图形学习方法。表示学习会为每个图节点生成一个嵌入,从相邻节点中考虑信息。我们的图形学习方法进一步修改了嵌入以计算图形相似性矩阵。在这项工作中,图形学习用于检查大脑网络以进行大脑状态识别。我们从十名患者的颅内脑电图(IEEG)信号的广泛数据集中推断出时间变化的脑图。然后,我们将图作为分类器应用于分类器,以区分癫痫发作与非癫痫脑状态。与两种广泛使用的大脑网络建模方法相比,使用接收器操作特征曲线(AUC)下面积的二元分类度量指标(AUC)平均提高了9.13%。
Data-driven graph learning models a network by determining the strength of connections between its nodes. The data refers to a graph signal which associates a value with each graph node. Existing graph learning methods either use simplified models for the graph signal, or they are prohibitively expensive in terms of computational and memory requirements. This is particularly true when the number of nodes is high or there are temporal changes in the network. In order to consider richer models with a reasonable computational tractability, we introduce a graph learning method based on representation learning on graphs. Representation learning generates an embedding for each graph node, taking the information from neighbouring nodes into account. Our graph learning method further modifies the embeddings to compute the graph similarity matrix. In this work, graph learning is used to examine brain networks for brain state identification. We infer time-varying brain graphs from an extensive dataset of intracranial electroencephalographic (iEEG) signals from ten patients. We then apply the graphs as input to a classifier to distinguish seizure vs. non-seizure brain states. Using the binary classification metric of area under the receiver operating characteristic curve (AUC), this approach yields an average of 9.13 percent improvement when compared to two widely used brain network modeling methods.