Comprehending the interplay between spatial and temporal characteristics of neural dynamics can contribute to our understanding of information processing in the human brain. Graph neural networks (GNNs) provide a new possibility to interpret graph structured signals like those observed in complex brain networks. In our study we compare different spatio-temporal GNN architectures and study their ability to model neural activity distributions obtained in functional MRI (fMRI) studies. We evaluate the performance of the GNN models on a variety of scenarios in MRI studies and also compare it to a VAR model, which is currently often used for directed functional connectivity analysis. We show that by learning localized functional interactions on the anatomical substrate, GNN based approaches are able to robustly scale to large network studies, even when available data are scarce. By including anatomical connectivity as the physical substrate for information propagation, such GNNs also provide a multi-modal perspective on directed connectivity analysis, offering a novel possibility to investigate the spatio-temporal dynamics in brain networks.
翻译:神经动态空间和时间特性之间的相互作用可以帮助我们理解人类大脑中的信息处理。 图形神经网络(GNNs)提供了一种新的可能性来解释像在复杂的大脑网络中观测到的图形结构信号。 在我们的研究中,我们比较了不同的spatio-时间GNN结构,并研究它们模拟在功能性MRI(fMRI)研究中获得的神经活动分布的能力。我们评估了在磁性研究所研究中各种情景的GNN模型的性能,并将其与VAR模型进行了比较,该模型目前经常用于定向功能连接分析。我们表明,通过在解剖基亚体上学习局部功能互动,GNN方法能够强有力地与大型网络研究相适应,即使现有数据稀缺。通过将解剖学连接作为信息传播的物理子系统,这类GNNNs也为定向连接分析提供了多模式视角,为调查大脑网络中的垃圾-时空动态提供了新的可能性。