PTGB: Pre-Train Graph Neural Networks for Brain Network Analysis

Yi Yang, Hejie Cui, Carl Yang
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引用次数: 5

Abstract

The human brain is the central hub of the neurobiological system, controlling behavior and cognition in complex ways. Recent advances in neuroscience and neuroimaging analysis have shown a growing interest in the interactions between brain regions of interest (ROIs) and their impact on neural development and disorder diagnosis. As a powerful deep model for analyzing graph-structured data, Graph Neural Networks (GNNs) have been applied for brain network analysis. However, training deep models requires large amounts of labeled data, which is often scarce in brain network datasets due to the complexities of data acquisition and sharing restrictions. To make the most out of available training data, we propose PTGB, a GNN pre-training framework that captures intrinsic brain network structures, regardless of clinical outcomes, and is easily adaptable to various downstream tasks. PTGB comprises two key components: (1) an unsupervised pre-training technique designed specifically for brain networks, which enables learning from large-scale datasets without task-specific labels; (2) a data-driven parcellation atlas mapping pipeline that facilitates knowledge transfer across datasets with different ROI systems. Extensive evaluations using various GNN models have demonstrated the robust and superior performance of PTGB compared to baseline methods.
脑网络分析的预训练图神经网络
人脑是神经生物系统的中枢,以复杂的方式控制行为和认知。神经科学和神经成像分析的最新进展表明,人们对大脑感兴趣区域(roi)之间的相互作用及其对神经发育和疾病诊断的影响越来越感兴趣。图神经网络作为分析图结构数据的一种强大的深度模型,已被应用于脑网络分析。然而,训练深度模型需要大量的标记数据,由于数据采集和共享限制的复杂性,这在脑网络数据集中往往是稀缺的。为了最大限度地利用可用的训练数据,我们提出了PTGB,这是一个GNN预训练框架,可以捕获内在的大脑网络结构,而不考虑临床结果,并且很容易适应各种下游任务。PTGB包括两个关键部分:(1)一种专门为大脑网络设计的无监督预训练技术,它可以从大规模数据集中学习,而不需要特定任务的标签;(2)数据驱动的分割图谱映射管道,促进不同ROI系统数据集之间的知识传递。使用各种GNN模型的广泛评估表明,与基线方法相比,PTGB具有鲁棒性和优越的性能。
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