Spatiotemporal Learning of Brain Dynamics from fMRI Using Frequency-Specific Multi-Band Attention for Cognitive and Psychiatric Applications
Journal:
arXiv
Published Date:
Mar 30, 2025
Abstract
Understanding how the brain's complex nonlinear dynamics give rise to
adaptive cognition and behavior is a central challenge in neuroscience. These
dynamics exhibit scale-free and multifractal properties, influencing the
reconfiguration of neural networks. However, conventional neuroimaging models
are constrained by linear and stationary assumptions, limiting their ability to
capture these processes. Transformer-based architectures, known for capturing
long-range dependencies, align well with the brain's hierarchical and temporal
organization. We introduce Multi-Band Brain Net (MBBN), a transformer-based
framework that models frequency-specific spatiotemporal brain dynamics from
fMRI by integrating scale-free network principles with frequency-resolved
multi-band self-attention. Trained on three large-scale neuroimaging cohorts
(UK Biobank, ABCD, ABIDE) totaling 45,951 individuals, MBBN reveals previously
undetectable frequency-dependent network interactions, shedding light on
connectivity disruptions in psychiatric conditions (ADHD, ASD, depression).
This validation shows robust generalizability and highlights core neural
principles conserved across populations. MBBN achieves up to 30.59% higher
predictive accuracy than state-of-the-art methods, demonstrating the advantage
of frequency-informed spatiotemporal modeling in capturing latent neural
computations. MBBN's interpretability uncovers novel frequency-specific
biomarkers for neurodevelopmental disorders, providing insights into the
hierarchical organization of brain function. By offering an interpretable
framework for spatiotemporal learning, MBBN provides insights into how neural
computations underpin cognitive function and psychiatric vulnerability, with
implications for brain decoding, cognitive neuroscience, and precision
psychiatry.