Localized Estimation of Event-Related Neural Source Activity from Simultaneous MEG-EEG with a Recurrent Neural Network
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Elsevier BV
Abstract
Estimating intracranial current sources underlying the electromagnetic signals observed from extracranial sensors is a perennial challenge in non-invasive neuroimaging. Established solutions to this inverse problem treat time samples independently without considering the temporal dynamics of event-related brain processes. This paper describes current source estimation from simultaneously recorded magneto- and electro-encephalography (MEEG) using a recurrent neural network (RNN) that learns sequential relationships from neural data. The RNN was trained in two phases: (1) pre-training and (2) transfer learning with L1 regularization applied to the source estimation layer. Performance of using scaled labels derived from MEEG, magnetoencephalography (MEG), or electroencephalography (EEG) were compared, as were results from volumetric source space with free dipole orientation and surface source space with fixed dipole orientation. Exact low-resolution electromagnetic tomography (eLORETA) and mixed-norm L1/L2 (MxNE) source estimation methods were also applied to these data for comparison with the RNN method. The RNN approach outperformed other methods in terms of output signal-to-noise ratio, correlation and mean-squared error metrics evaluated against reference event-related field (ERF) and event-related potential (ERP) waveforms. Using MEEG labels with fixed-orientation surface sources produced the most consistent estimates. To estimate sources of ERF and ERP waveforms, the RNN generates temporal dynamics within its internal computational units, driven by sequential structure in neural data used as training labels. It thus provides a data-driven model of computational transformations from psychophysiological events into corresponding event-related neural signals, which is unique among MEEG source reconstruction solutions.Description
Keywords
Artificial neural networks, Biomedical signal processing, Computational neuroscience, Deep learning, Electroencephalography (EEG), Magnetoencephalography (MEG), Neural source reconstruction, 46 Information and Computing Sciences, 4611 Machine Learning, Bioengineering, Mental Health, Biomedical Imaging, Machine Learning and Artificial Intelligence, Neurosciences, Artificial Intelligence & Image Processing, 4602 Artificial intelligence, 4611 Machine learning, 4905 Statistics
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Neural Networks, ISSN: 0893-6080 (Print); 1879-2782 (Online), Elsevier BV, 180, 106731-. doi: 10.1016/j.neunet.2024.106731
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© 2024 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by nc-nd/4.0/).
