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BrainOOD: Out-of-distribution Generalizable Brain Network Analysis

About

In neuroscience, identifying distinct patterns linked to neurological disorders, such as Alzheimer's and Autism, is critical for early diagnosis and effective intervention. Graph Neural Networks (GNNs) have shown promising in analyzing brain networks, but there are two major challenges in using GNNs: (1) distribution shifts in multi-site brain network data, leading to poor Out-of-Distribution (OOD) generalization, and (2) limited interpretability in identifying key brain regions critical to neurological disorders. Existing graph OOD methods, while effective in other domains, struggle with the unique characteristics of brain networks. To bridge these gaps, we introduce BrainOOD, a novel framework tailored for brain networks that enhances GNNs' OOD generalization and interpretability. BrainOOD framework consists of a feature selector and a structure extractor, which incorporates various auxiliary losses including an improved Graph Information Bottleneck (GIB) objective to recover causal subgraphs. By aligning structure selection across brain networks and filtering noisy features, BrainOOD offers reliable interpretations of critical brain regions. Our approach outperforms 16 existing methods and improves generalization to OOD subjects by up to 8.5%. Case studies highlight the scientific validity of the patterns extracted, which aligns with the findings in known neuroscience literature. We also propose the first OOD brain network benchmark, which provides a foundation for future research in this field. Our code is available at https://github.com/AngusMonroe/BrainOOD.

Jiaxing Xu, Yongqiang Chen, Xia Dong, Mengcheng Lan, Tiancheng Huang, Qingtian Bian, James Cheng, Yiping Ke• 2025

Related benchmarks

TaskDatasetResultRank
Brain Disorder ClassificationPPMI
Accuracy65.52
41
Brain Disorder ClassificationABIDE 180 (Five-fold cross-validation)
Accuracy62.54
18
Brain Disorder ClassificationABIDE-240 (Five-fold cross-validation)
Accuracy67.17
18
Brain Disorder ClassificationADNI (five-fold cross-validation)
Accuracy78.78
18
Brain Disorder ClassificationTaoWu Five-fold (cross-val)
Accuracy78
18
Brain Disorder ClassificationABIDE-120 Five-fold (cross-val)
Accuracy64.72
18
Brain Disorder ClassificationABIDE-300 (Five-fold cross-val)
Accuracy61.33
18
Brain Disorder ClassificationMātai
Accuracy63.33
18
Brain Disorder ClassificationNeurocon
Accuracy66.33
18
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