BrainCast: A Spatio-Temporal Forecasting Model for Whole-Brain fMRI Time Series Prediction
arXiv cs.CV / 3/17/2026
📰 NewsModels & Research
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.
Related Articles

ラピダス、半導体設計AIエージェント「国内2社海外1社が使用中」
日経XTECH

Superposition and the Capsule: Quantum State Collapse Meets AI Identity
Dev.to

The Basilisk Inversion: Why Coercive AI Futures Are Thermodynamically Unlikely
Dev.to

The Loop as Laboratory: What 3,190 Cycles of Autonomous AI Operation Reveal
Dev.to

MiMo-V2-Pro & Omni & TTS: "We will open-source — when the models are stable enough to deserve it."
Reddit r/LocalLLaMA