# EEG-Driven Arm Movement Decoding: Combining Connectivity and Amplitude Features for Enhanced Brain–Computer Interface Performance

**Authors:** Hamidreza Darvishi, Ahmadreza Mohammadi, Mohammad Hossein Maghami, Meysam Sadeghi, Mohamad Sawan

PMC · DOI: 10.3390/bioengineering12060614 · 2025-06-04

## TL;DR

This study improves brain-computer interfaces by combining brain signal features to better predict arm movements.

## Contribution

The novel approach combines amplitude and phase-based EEG features with data-driven selection to enhance movement decoding.

## Key findings

- Combining FBCSP and PLV features improved decoding accuracy with a Pearson correlation of 0.829.
- Key contributions came from the 4–8 Hz and 24–28 Hz frequency bands.
- A feedforward neural network achieved high R-squared and low RMSE in predicting movement angles.

## Abstract

Brain–computer interfaces (BCIs) translate electroencephalography (EEG) signals into control commands, offering potential solutions for motor-impaired individuals. While traditional BCI studies often focus solely on amplitude variations or inter-channel connectivity, movement-related brain activity is inherently dynamic, involving interactions across regions and frequency bands. We propose that combining amplitude-based (filter bank common spatial patterns, FBCSP) and phase-based connectivity features (phase-locking value, PLV) improves decoding accuracy. EEG signals from ten healthy subjects were recorded during arm movements, with electromyography (EMG) as ground truth. After preprocessing (resampling, normalization, bandpass filtering), FBCSP and multi-lag PLV features were fused, and the ReliefF algorithm selected the most informative subset. A feedforward neural network achieved average metrics of: Pearson correlation 0.829 ± 0.077, R-squared value 0.675 ± 0.126, and root mean square error (RMSE) 0.579 ± 0.098 in predicting EMG amplitudes indicative of arm movement angles. Analysis highlighted contributions from both FBCSP and PLV, particularly in the 4–8 Hz and 24–28 Hz bands. This fusion approach, augmented by data-driven feature selection, significantly enhances movement decoding accuracy, advancing robust neuroprosthetic control systems.

## Full-text entities

- **Diseases:** motor (MESH:D000068079)

## Figures

10 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12189900/full.md

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Source: https://tomesphere.com/paper/PMC12189900