4.7 Article

Improvement in EEG Source Imaging Accuracy by Means of Wavelet Packet Transform and Subspace Component Selection

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNSRE.2021.3064665

Keywords

Electroencephalography; Imaging; Brain modeling; Magnetic heads; Epilepsy; Wavelet packets; Scalp; EEG source imaging; wavelet packet transform; subspace component selection; boundary element model; sLORETA

Funding

  1. National Natural Science Foundation of China [32071372, 31571000, 61976175, 61471291, 81201162]
  2. Natural Science Basic Research Program of Shaanxi [2020JM-037]

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The study introduces a novel EEG source imaging method (WPESI) based on wavelet packet transform and subspace component selection, which improves the localization accuracy of brain activity sources and outperforms traditional methods in computer simulations and experiments. For epilepsy patients, the activity sources estimated by this method align with seizure onset zones.
The electroencephalograph (EEG) source imaging (ESI) method is a non-invasive method that provides high temporal resolution imaging of brain electrical activity on the cortex. However, because the accuracy of EEG source imaging is often affected by unwanted signals such as noise or other source-irrelevant signals, the results of ESI are often incongruous with the real sources of brain activities. This study presents a novel ESI method (WPESI) that is based on wavelet packet transform (WPT) and subspace component selection to image the cerebral activities of EEG signals on the cortex. First, the original EEG signals are decomposed into several subspace components by WPT. Second, the subspaces associated with brain sources are selected and the relevant signals are reconstructed by WPT. Finally, the current density distribution in the cerebral cortex is obtained by establishing a boundary element model (BEM) from head MRI and applying the appropriate inverse calculation. In this study, the localization results obtained by this proposed approach were better than those of the original sLORETA approach (OESI) in the computer simulations and visual evoked potential (VEP) experiments. For epilepsy patients, the activity sources estimated by this proposed algorithm conformed to the seizure onset zones. The WPESI approach is easy to implement achieved favorable accuracy in terms of EEG source imaging. This demonstrates the potential for use of the WPESI algorithm to localize epileptogenic foci from scalp EEG signals.

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