Identifying Influential nodes in Brain Networks via Self-Supervised Graph-Transformer
Yanqing Kang, Di Zhu, Haiyang Zhang, Enze Shi, Sigang Yu, Jinru Wu,, Xuhui Wang, Xuan Liu, Geng Chen, Xi Jiang, Tuo Zhang, Shu Zhang

TL;DR
This paper introduces a self-supervised Graph-Transformer framework to identify influential brain network nodes, leveraging multimodal data and surpassing traditional hub-based methods in capturing intrinsic brain characteristics.
Contribution
It proposes a novel self-supervised graph reconstruction method using Graph-Transformer for brain network analysis, integrating multimodal data to identify influential nodes without prior graph theory assumptions.
Findings
Identified 56 influential brain nodes across experiments.
I-nodes show higher connectivity and centrality in brain networks.
Significant overlap between I-nodes and rich-club regions.
Abstract
Studying influential nodes (I-nodes) in brain networks is of great significance in the field of brain imaging. Most existing studies consider brain connectivity hubs as I-nodes. However, this approach relies heavily on prior knowledge from graph theory, which may overlook the intrinsic characteristics of the brain network, especially when its architecture is not fully understood. In contrast, self-supervised deep learning can learn meaningful representations directly from the data. This approach enables the exploration of I-nodes for brain networks, which is also lacking in current studies. This paper proposes a Self-Supervised Graph Reconstruction framework based on Graph-Transformer (SSGR-GT) to identify I-nodes, which has three main characteristics. First, as a self-supervised model, SSGR-GT extracts the importance of brain nodes to the reconstruction. Second, SSGR-GT uses…
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Taxonomy
TopicsFunctional Brain Connectivity Studies
