Brain Effective Connectivity Estimation via Fourier Spatiotemporal Attention
Journal:
arXiv
Published Date:
Mar 14, 2025
Abstract
Estimating brain effective connectivity (EC) from functional magnetic
resonance imaging (fMRI) data can aid in comprehending the neural mechanisms
underlying human behavior and cognition, providing a foundation for disease
diagnosis. However, current spatiotemporal attention modules handle temporal
and spatial attention separately, extracting temporal and spatial features
either sequentially or in parallel. These approaches overlook the inherent
spatiotemporal correlations present in real world fMRI data. Additionally, the
presence of noise in fMRI data further limits the performance of existing
methods. In this paper, we propose a novel brain effective connectivity
estimation method based on Fourier spatiotemporal attention (FSTA-EC), which
combines Fourier attention and spatiotemporal attention to simultaneously
capture inter-series (spatial) dynamics and intra-series (temporal)
dependencies from high-noise fMRI data. Specifically, Fourier attention is
designed to convert the high-noise fMRI data to frequency domain, and map the
denoised fMRI data back to physical domain, and spatiotemporal attention is
crafted to simultaneously learn spatiotemporal dynamics. Furthermore, through a
series of proofs, we demonstrate that incorporating learnable filter into fast
Fourier transform and inverse fast Fourier transform processes is
mathematically equivalent to performing cyclic convolution. The experimental
results on simulated and real-resting-state fMRI datasets demonstrate that the
proposed method exhibits superior performance when compared to state-of-the-art
methods.