PTGB: Pre-Train Graph Neural Networks for Brain Network Analysis
- URL: http://arxiv.org/abs/2305.14376v1
- Date: Sat, 20 May 2023 21:07:47 GMT
- Title: PTGB: Pre-Train Graph Neural Networks for Brain Network Analysis
- Authors: Yi Yang, Hejie Cui, Carl Yang
- Abstract summary: 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.
- Score: 39.16619345610152
- License: http://creativecommons.org/licenses/by/4.0/
- 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.
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