The application of electrical impedance tomography to reduce systematic errors in the EEG inverse problem - a simulation study

Citation
S. Goncalves et al., The application of electrical impedance tomography to reduce systematic errors in the EEG inverse problem - a simulation study, PHYSL MEAS, 21(3), 2000, pp. 379-393
Citations number
16
Categorie Soggetti
Research/Laboratory Medicine & Medical Tecnology",Physiology
Journal title
PHYSIOLOGICAL MEASUREMENT
ISSN journal
09673334 → ACNP
Volume
21
Issue
3
Year of publication
2000
Pages
379 - 393
Database
ISI
SICI code
0967-3334(200008)21:3<379:TAOEIT>2.0.ZU;2-K
Abstract
In this paper we propose a new method, using the principles of electrical i mpedance tomography (EIT), to correct for the systematic errors in the inve rse problem (IP) of electroencephalography (EEG) that arise from the wrong specification of the electrical conductivities of the head compartments. By injecting known currents into pairs of electrodes and measuring the result ing potential differences recorded from the other electrodes, the equivalen t conductivities of brain (sigma(3)), skull (sigma(2)) and scalp (sigma(1)) can be estimated. Since the geometry of the head is assumed to be known, t he electrical conductivities remain as the only unknown parameters to be es timated. These conductivities can then be used in the inverse problem of EE G. The simulations performed in this study, using a three-layer sphere to m odel the head, prove the feasibility of the method, theoretically. Even in the presence of simulated noise with a value of signal-to-noise ratio (SNR) equal to 10, estimations of the electrical conductivities within 5% of the true values were obtained. Simulations showed the existence of a strong re lation between errors in the skull thickness and the EIT estimated conducti vities. If the skull thickness is wrongly specified, for example overestima ted by a factor of two, the conductivity determined by EIT is also overesti mated by a factor of two. Simulations showed that this compensation effect also works in the inverse problem of EEG. Application of the proposed metho d reduces systematic errors in the dipole localization, up to an amount of 1 cm. However it proved to be ineffective to decrease the dipole strength e rror.