BRIEF: BRain-Inspired network connection search with Extensive temporal feature Fusion enhances disease classification
Xiangxiang Cui, Min Zhao, Dongmei Zhi, Shile Qi, Vince D Calhoun, Jing Sui

TL;DR
This paper introduces BRIEF, a brain-inspired framework that automatically optimizes network architecture and fuses multi-scale temporal features using reinforcement learning and Transformers, significantly improving disease classification accuracy.
Contribution
The novel BRIEF framework combines neural connection search with Transformer-based feature fusion, inspired by brain mechanisms, to enhance fMRI-based mental disorder classification.
Findings
Achieved up to 12.1% improvement in classification accuracy.
Demonstrated robustness across schizophrenia and autism spectrum disorder datasets.
First to integrate brain-inspired reinforcement learning for fMRI classification.
Abstract
Existing deep learning models for functional MRI-based classification have limitations in network architecture determination (relying on experience) and feature space fusion (mostly simple concatenation, lacking mutual learning). Inspired by the human brain's mechanism of updating neural connections through learning and decision-making, we proposed a novel BRain-Inspired feature Fusion (BRIEF) framework, which is able to optimize network architecture automatically by incorporating an improved neural network connection search (NCS) strategy and a Transformer-based multi-feature fusion module. Specifically, we first extracted 4 types of fMRI temporal representations, i.e., time series (TCs), static/dynamic functional connection (FNC/dFNC), and multi-scale dispersion entropy (MsDE), to construct four encoders. Within each encoder, we employed a modified Q-learning to dynamically optimize…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · AI in cancer detection · Artificial Intelligence in Healthcare
