论文标题
DynDepnet:通过动态图结构学习从fMRI数据中学习随时间变化的依赖性结构
DynDepNet: Learning Time-Varying Dependency Structures from fMRI Data via Dynamic Graph Structure Learning
论文作者
论文摘要
图神经网络(GNN)在学习磁共振成像(fMRI)数据中得出的脑图的学习表示表现出了成功。但是,现有的GNN方法假设脑图随着时间的推移而静态,并且图邻接矩阵在模型训练之前是已知的。这些假设与证据相矛盾,表明大脑图与连通性结构相关,该连通性结构取决于功能连接度量的选择。用嘈杂的大脑图代表fMRI数据可能会对GNN的性能产生不利影响。为了解决这个问题,我们提出了Dyndepnet,这是一种学习由下游预测任务引起的fMRI数据的最佳时间变化依赖性结构的新方法。实验性fMRI数据集的实验,针对性别分类的任务,表明DynDepnet取得了最新的结果,在准确性方面的表现分别优于最佳基准,将大约8个和6个百分点。此外,对学习动态图的分析揭示了与现有神经科学文献一致的与预测相关的大脑区域。
Graph neural networks (GNNs) have demonstrated success in learning representations of brain graphs derived from functional magnetic resonance imaging (fMRI) data. However, existing GNN methods assume brain graphs are static over time and the graph adjacency matrix is known prior to model training. These assumptions contradict evidence that brain graphs are time-varying with a connectivity structure that depends on the choice of functional connectivity measure. Incorrectly representing fMRI data with noisy brain graphs can adversely affect GNN performance. To address this, we propose DynDepNet, a novel method for learning the optimal time-varying dependency structure of fMRI data induced by downstream prediction tasks. Experiments on real-world fMRI datasets, for the task of sex classification, demonstrate that DynDepNet achieves state-of-the-art results, outperforming the best baseline in terms of accuracy by approximately 8 and 6 percentage points, respectively. Furthermore, analysis of the learned dynamic graphs reveals prediction-related brain regions consistent with existing neuroscience literature.