Publication | Open Access
Denoising Depth EEG Signals During DBS Using Filtering and Subspace Decomposition
20
Citations
15
References
2013
Year
Dbs Using FilteringEngineeringDepth Eeg SignalsGeneralized Eigenvalue DecompositionSocial SciencesNoise ReductionFiltering TechniqueNoiseNeurologyIndependent Component AnalysisSubspace DecompositionDifficult Epileptic PatientsNeuroimagingInverse ProblemsSpatial FilteringSignal ProcessingBrain-computer InterfaceDeep Brain StimulationNeurophysiologyEeg Signal ProcessingBrain ElectrophysiologyNeuroscienceSignal Separation
In difficult epileptic patients, the brain structures are explored by means of depth multicontact electrodes [stereoelectroencephalography (SEEG)]. Recently, a novel diagnostic technique allows an accurate definition of the epileptogenic zone using deep brain stimulation (DBS). The stimulation signal propagates in the brain and thus it appears on most of the other SEEG electrodes, masking the local brain electrophysiological activity. The objective of this paper is the DBS-SEEG signals detrending and denoising in order to recover the masked physiological sources. We review the main filtering methods and put forward an approach based on the combination of filtering with generalized eigenvalue decomposition (GEVD). An experimental study on simulated and real SEEG shows that our approach is able to separate DBS sources from brain activity. The best results are obtained by an original singular spectrum analysis-GEVD approach.
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