Human brains are commonly modeled as networks of Regions of Interest (ROIs) and their connections for the understanding of brain functions and mental disorders. Recently, Transformer-based models have been studied over different types of data, including graphs, shown to bring performance gains widely. In this work, we study Transformer-based models for brain network analysis. Driven by the unique properties of data, we model brain networks as graphs with nodes of fixed size and order, which allows us to (1) use connection profiles as node features to provide natural and low-cost positional information and (2) learn pair-wise connection strengths among ROIs with efficient attention weights across individuals that are predictive towards downstream analysis tasks. Moreover, we propose an Orthonormal Clustering Readout operation based on self-supervised soft clustering and orthonormal projection. This design accounts for the underlying functional modules that determine similar behaviors among groups of ROIs, leading to distinguishable cluster-aware node embeddings and informative graph embeddings. Finally, we re-standardize the evaluation pipeline on the only one publicly available large-scale brain network dataset of ABIDE, to enable meaningful comparison of different models. Experiment results show clear improvements of our proposed Brain Network Transformer on both the public ABIDE and our restricted ABCD datasets. The implementation is available at https://github.com/Wayfear/BrainNetworkTransformer.
翻译:人类大脑通常以利益区域网络(ROIs)及其连接为模型,以了解大脑功能和精神障碍。最近,对不同类型数据(包括图表)进行了基于变异器模型的研究,以广泛显示绩效收益。在这项工作中,我们研究了基于变异器的大脑网络分析模型。在数据独特特性的驱动下,我们将大脑网络模型作为具有固定大小和顺序节点的图形,使我们能够(1) 将连接特征作为节点特征,以提供自然和低成本定位信息,(2) 学习对称连接功能的优势,在预测下游分析任务的个人中以高效的注意重量衡量。此外,我们提议基于自我监督的软集聚和正态预测的Orthodalgenal Creadout 组合操作。这个设计模型将决定各类ROIs群之间类似行为的基本功能模块,导致可辨别的集群-觉知不嵌入和信息性图表嵌入。最后,我们重新标准化评价管道,将仅有一个公开的大型脑网络系统(即预测下游的个人)的高效重心力重的连接。我们A&BIdealalal 的ABIdealalalal 网络(ABIDE) 和ADIrealtravidustr) 的模型,可以进行有意义的分析结果的有意义比较。