Journal
SENSORS
Volume 21, Issue 13, Pages -Publisher
MDPI
DOI: 10.3390/s21134278
Keywords
magnetoencephalography; deep learning; source localization; inverse problems
Funding
- Braude College of Engineering
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This paper presents a deep learning solution for localizing MEG brain signals, demonstrating improved performance over the traditional RAP-MUSIC algorithm in specific scenarios. The deep learning models show robustness to forward model errors and significantly reduce computation time, making real-time MEG source localization possible.
We present a deep learning solution to the problem of localization of magnetoencephalography (MEG) brain signals. The proposed deep model architectures are tuned to single and multiple time point MEG data, and can estimate varying numbers of dipole sources. Results from simulated MEG data on the cortical surface of a real human subject demonstrated improvements against the popular RAP-MUSIC localization algorithm in specific scenarios with varying SNR levels, inter-source correlation values, and number of sources. Importantly, the deep learning models had robust performance to forward model errors resulting from head translation and rotation and a significant reduction in computation time, to a fraction of 1 ms, paving the way to real-time MEG source localization.
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