ASD Classification on Dynamic Brain Connectome using Temporal Random Walk with Transformer-based Dynamic Network Embedding
Journal:
arXiv
Published Date:
Mar 16, 2025
Abstract
Autism Spectrum Disorder (ASD) is a complex neurological condition
characterized by varied developmental impairments, especially in communication
and social interaction. Accurate and early diagnosis of ASD is crucial for
effective intervention, which is enhanced by richer representations of brain
activity. The brain functional connectome, which refers to the statistical
relationships between different brain regions measured through neuroimaging,
provides crucial insights into brain function. Traditional static methods often
fail to capture the dynamic nature of brain activity, in contrast, dynamic
brain connectome analysis provides a more comprehensive view by capturing the
temporal variations in the brain. We propose BrainTWT, a novel dynamic network
embedding approach that captures temporal evolution of the brain connectivity
over time and considers also the dynamics between different temporal network
snapshots. BrainTWT employs temporal random walks to capture dynamics across
different temporal network snapshots and leverages the Transformer's ability to
model long term dependencies in sequential data to learn the discriminative
embeddings from these temporal sequences using temporal structure prediction
tasks. The experimental evaluation, utilizing the Autism Brain Imaging Data
Exchange (ABIDE) dataset, demonstrates that BrainTWT outperforms baseline
methods in ASD classification.