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📄 Abstract
Abstract: Understanding how prenatal exposure to psychoactive substances such as
cannabis shapes adolescent brain organization remains a critical challenge,
complicated by the complexity of multimodal neuroimaging data and the
limitations of conventional analytic methods. Existing approaches often fail to
fully capture the complementary features embedded within structural and
functional connectomes, constraining both biological insight and predictive
performance. To address this, we introduced NeuroKoop, a novel graph neural
network-based framework that integrates structural and functional brain
networks utilizing neural Koopman operator-driven latent space fusion. By
leveraging Koopman theory, NeuroKoop unifies node embeddings derived from
source-based morphometry (SBM) and functional network connectivity (FNC) based
brain graphs, resulting in enhanced representation learning and more robust
classification of prenatal drug exposure (PDE) status. Applied to a large
adolescent cohort from the ABCD dataset, NeuroKoop outperformed relevant
baselines and revealed salient structural-functional connections, advancing our
understanding of the neurodevelopmental impact of PDE.