Bessadok Alaa, Mahjoub Mohamed Ali, Rekik Islem
IEEE Trans Pattern Anal Mach Intell. 2023 May;45(5):5833-5848. doi: 10.1109/TPAMI.2022.3209686. Epub 2023 Apr 3.
Noninvasive medical neuroimaging has yielded many discoveries about the brain connectivity. Several substantial techniques mapping morphological, structural and functional brain connectivities were developed to create a comprehensive road map of neuronal activities in the human brain -namely brain graph. Relying on its non-euclidean data type, graph neural network (GNN) provides a clever way of learning the deep graph structure and it is rapidly becoming the state-of-the-art leading to enhanced performance in various network neuroscience tasks. Here we review current GNN-based methods, highlighting the ways that they have been used in several applications related to brain graphs such as missing brain graph synthesis and disease classification. We conclude by charting a path toward a better application of GNN models in network neuroscience field for neurological disorder diagnosis and population graph integration. The list of papers cited in our work is available at https://github.com/basiralab/GNNs-in-Network-Neuroscience.
无创医学神经成像已产生了许多关于大脑连接性的发现。人们开发了几种用于绘制大脑形态、结构和功能连接性的重要技术,以创建人类大脑神经元活动的综合路线图——即脑图谱。基于其非欧几里得数据类型,图神经网络(GNN)提供了一种学习深度图结构的巧妙方法,并且它正迅速成为最先进的技术,从而在各种网络神经科学任务中提高性能。在这里,我们回顾当前基于GNN的方法,突出它们在与脑图谱相关的几个应用中的使用方式,如缺失脑图谱合成和疾病分类。我们通过规划一条在网络神经科学领域更好地应用GNN模型进行神经疾病诊断和群体图谱整合的道路来得出结论。我们工作中引用的论文列表可在https://github.com/basiralab/GNNs-in-Network-Neuroscience上获取。