Hierarchical Characterization of Brain Dynamics via State Space-based Vector Quantization
Journal:
arXiv
Published Date:
Jun 28, 2025
Abstract
Understanding brain dynamics through functional Magnetic Resonance Imaging
(fMRI) remains a fundamental challenge in neuroscience, particularly in
capturing how the brain transitions between various functional states.
Recently, metastability, which refers to temporarily stable brain states, has
offered a promising paradigm to quantify complex brain signals into
interpretable, discretized representations. In particular, compared to
cluster-based machine learning approaches, tokenization approaches leveraging
vector quantization have shown promise in representation learning with powerful
reconstruction and predictive capabilities. However, most existing methods
ignore brain transition dependencies and lack a quantification of brain
dynamics into representative and stable embeddings. In this study, we propose a
Hierarchical State space-based Tokenization network, termed HST, which
quantizes brain states and transitions in a hierarchical structure based on a
state space-based model. We introduce a refined clustered Vector-Quantization
Variational AutoEncoder (VQ-VAE) that incorporates quantization error feedback
and clustering to improve quantization performance while facilitating
metastability with representative and stable token representations. We validate
our HST on two public fMRI datasets, demonstrating its effectiveness in
quantifying the hierarchical dynamics of the brain and its potential in disease
diagnosis and reconstruction performance. Our method offers a promising
framework for the characterization of brain dynamics, facilitating the analysis
of metastability.