Brain analysis to approach human muscles synergy using deep learning

被引:0
|
作者
Elham Samadi [1 ]
Fereidoun Nowshiravan Rahatabad [1 ]
Ali Motie Nasrabadi [2 ]
Nader Jafarnia Dabanlou [1 ]
机构
[1] Islamic Azad University,Department of Biomedical Engineering, Science and Research Branch
[2] Shahed University,Department of Biomedical Engineering
关键词
EEG; EMG; Synergy; Graph Theory; Deep learning;
D O I
10.1007/s11571-025-10228-y
中图分类号
学科分类号
摘要
Brain signals and muscle movements have been analyzed using electroencephalogram (EEG) data in several studies. EEG signals contain a lot of noise, such as electromyographic (EMG) waves. Further studies have been done to improve the quality of the results, though it is thought that the combination of these two signals can lead to a significant improvement in the synergistic analysis of muscle movements and muscle connections. Using graph theory, this study examined the interaction of EMG and EEG signals during hand movement and estimated the synergy between muscle and brain signals. Mapping of the brain diagram was also developed to reconstruct the muscle signals from the muscle connections in the brain diagram. The proposed method included noise removal from EEG and EMG signals, graph feature analysis from EEG, and synergy calculation from EMG. Two methods were used to estimate synergy. In the first method, after calculating the brain connections, the features of the communication graph were extracted and then synergy estimating was made with neural networks. In the second method, a convolutional network created a transition from the matrix of brain connections to the synergistic EMG signal. This study reached the high correlation values of 99.8% and maximum MSE error of 0.0084. Compared to other graph-based methods, this method based on regression analysis had a very significant performance. This research can lead to the improvement of rehabilitation methods and brain-computer interfaces.
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