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BrainCast: A Spatio-Temporal Forecasting Model for Whole-Brain fMRI Time Series Prediction

arXiv cs.CV / 3/17/2026

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Key Points

  • BrainCast is a new spatio-temporal forecasting framework for whole-brain fMRI time series, designed to extend informative data without additional acquisition.
  • It jointly models ROI-level temporal dynamics and inter-ROI spatial interactions using modules such as Spatial Interaction Awareness, Temporal Feature Refinement, and Spatio-temporal Pattern Alignment.
  • Experimental results on resting-state and task fMRI data from the Human Connectome Project show BrainCast outperforms state-of-the-art baselines for time series forecasting.
  • The extended fMRI time series improve downstream cognitive ability prediction, highlighting potential clinical and neuroscientific impact in scenarios with short scan durations.

Abstract

Functional magnetic resonance imaging (fMRI) enables noninvasive investigation of brain function, while short clinical scan durations, arising from human and non-human factors, usually lead to reduced data quality and limited statistical power for neuroimaging research. In this paper, we propose BrainCast, a novel spatio-temporal forecasting framework specifically tailored for whole-brain fMRI time series forecasting, to extend informative fMRI time series without additional data acquisition. It formulates fMRI time series forecasting as a multivariate time series prediction task and jointly models temporal dynamics within regions of interest (ROIs) and spatial interactions across ROIs. Specifically, BrainCast integrates a Spatial Interaction Awareness module to characterize inter-ROI dependencies via embedding every ROI time series as a token, a Temporal Feature Refinement module to capture intrinsic neural dynamics within each ROI by enhancing both low- and high-energy temporal components of fMRI time series at the ROI level, and a Spatio-temporal Pattern Alignment module to combine spatial and temporal representations for producing informative whole-brain features. Experimental results on resting-state and task fMRI datasets from the Human Connectome Project demonstrate the superiority of BrainCast over state-of-the-art time series forecasting baselines. Moreover, fMRI time series extended by BrainCast improve downstream cognitive ability prediction, highlighting the clinical and neuroscientific impact brought by whole-brain fMRI time series forecasting in scenarios with restricted scan durations.