BrainATCL: Adaptive Temporal Brain Connectivity Learning for Functional Link Prediction and Age Estimation
Yiran Huang, Amirhossein Nouranizadeh, Christine Ahrends, Mengjia Xu

TL;DR
BrainATCL introduces an adaptive, unsupervised graph neural network framework that effectively models dynamic brain connectivity in fMRI data, improving link prediction and age estimation by capturing evolving neural interactions.
Contribution
This work presents a novel adaptive temporal GNN approach that dynamically adjusts lookback windows and incorporates brain structure attributes for better modeling of functional brain connectivity.
Findings
Superior performance in link prediction and age estimation tasks.
Effective generalization across different sessions.
Captures biologically meaningful neural topologies.
Abstract
Functional Magnetic Resonance Imaging (fMRI) is an imaging technique widely used to study human brain activity. fMRI signals in areas across the brain transiently synchronise and desynchronise their activity in a highly structured manner, even when an individual is at rest. These functional connectivity dynamics may be related to behaviour and neuropsychiatric disease. To model these dynamics, temporal brain connectivity representations are essential, as they reflect evolving interactions between brain regions and provide insight into transient neural states and network reconfigurations. However, conventional graph neural networks (GNNs) often struggle to capture long-range temporal dependencies in dynamic fMRI data. To address this challenge, we propose BrainATCL, an unsupervised, nonparametric framework for adaptive temporal brain connectivity learning, enabling functional link…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · EEG and Brain-Computer Interfaces · Advanced Graph Neural Networks
