MoRE-Brain: Routed Mixture of Experts for Interpretable and Generalizable Cross-Subject fMRI Visual Decoding
Yuxiang Wei, Yanteng Zhang, Xi Xiao, Tianyang Wang, Xiao Wang, Vince D. Calhoun

TL;DR
MoRE-Brain introduces a brain-inspired hierarchical mixture-of-experts framework for interpretable, high-fidelity fMRI visual decoding that generalizes across subjects and reveals neural mechanisms.
Contribution
It presents a novel Mixture-of-Experts architecture based on brain networks, enabling efficient cross-subject generalization and mechanistic interpretability in fMRI decoding.
Findings
High reconstruction fidelity demonstrated.
Effective cross-subject generalization achieved.
Routing mechanisms reveal neural contributions.
Abstract
Decoding visual experiences from fMRI offers a powerful avenue to understand human perception and develop advanced brain-computer interfaces. However, current progress often prioritizes maximizing reconstruction fidelity while overlooking interpretability, an essential aspect for deriving neuroscientific insight. To address this gap, we propose MoRE-Brain, a neuro-inspired framework designed for high-fidelity, adaptable, and interpretable visual reconstruction. MoRE-Brain uniquely employs a hierarchical Mixture-of-Experts architecture where distinct experts process fMRI signals from functionally related voxel groups, mimicking specialized brain networks. The experts are first trained to encode fMRI into the frozen CLIP space. A finetuned diffusion model then synthesizes images, guided by expert outputs through a novel dual-stage routing mechanism that dynamically weighs expert…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning in Healthcare · Cell Image Analysis Techniques
MethodsContrastive Language-Image Pre-training · Diffusion
