# SFE-GAT: Structure-Feature Evolution Graph Attention Network for Motor Imagery Decoding

**Authors:** Xin Gao, Guohua Cao, Guoqing Ma

PMC · DOI: 10.3390/s26051730 · Sensors (Basel, Switzerland) · 2026-03-09

## TL;DR

This paper introduces a new graph neural network that improves motor imagery EEG decoding by modeling dynamic brain network changes during tasks.

## Contribution

The novel SFE-GAT model dynamically co-adapts graph topology and node features to simulate brain network reorganization during motor imagery.

## Key findings

- SFE-GAT achieved 77.70% subject-dependent and 66.59% subject-independent accuracy on the BCI Competition IV-2a dataset.
- Evolved graphs showed sparsification and strengthening of task-critical connections, indicating hierarchical processing.

## Abstract

Motor imagery EEG decoding often relies on static functional connectivity graphs that cannot capture the dynamic, stage-wise reorganization of brain networks during tasks. This paper aims to develop a graph neural network that explicitly simulates this neurodynamic process to improve decoding and provide computational insights. This paper proposes a Structure-Feature Evolution Graph Attention Network (SFE-GAT). Its inter-layer evolution mechanism dynamically co-adapts graph topology and node features, mimicking functional network reorganization. Initialized with phase-locking value connectivity and spectral features, the model uses a graph autoencoder with Monte Carlo sampling to iteratively refine edges and embeddings. On the BCI Competition IV-2a dataset, SFE-GAT achieved 77.70% (subject-dependent) and 66.59% (subject-independent) accuracy, outperforming baselines. Evolved graphs showed sparsification and strengthening of task-critical connections, indicating hierarchical processing. This paper advances EEG decoding through a dynamic graph architecture, providing a computational framework for studying the hierarchical organization of motor cortex activity and linking adaptive graph learning with neural dynamics.

## Full text

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## Figures

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## References

48 references — full list in the complete paper: https://tomesphere.com/paper/PMC12986890/full.md

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Source: https://tomesphere.com/paper/PMC12986890