Biomed Eng Lett.  2017 Aug;7(3):185-191. 10.1007/s13534-017-0019-2.

MEG and EEG dipole clusters from extended cortical sources

Affiliations
  • 1Compumedics Neuroscan GmbH, Heussweg 25, 20255 Hamburg, Germany. mfuchs@neuroscan.com

Abstract

Data from magnetoencephalography (MEG) and electroencephalography (EEG) suffer from a rather limited signal-to-noise-ratio (SNR) due to cortical background activities and other artifacts. In order to study the effect of the SNR on the size and distribution of dipole clusters reconstructed from interictal epileptic spikes, we performed simulations using realistically shaped volume conductor models and extended cortical sources with different sensor configurations. Head models and cortical surfaces were derived from an averaged magnetic resonance image dataset (Montreal Neurological Institute). Extended sources were simulated by spherical patches with Gaussian current distributions on the folded cortical surface. Different patch sizes were used to investigate cancellation effects from opposing walls of sulcal foldings and to estimate corresponding changes in MEG and EEG sensitivity distributions. Finally, white noise was added to the simulated fields and equivalent current dipole reconstructions were performed to determine size and shape of the resulting dipole clusters. Neuronal currents are oriented perpendicular to the local cortical surface and show cancellation effects of source components on opposing sulcal walls. Since these mostly tangential aspects from large cortical patches cancel out, large extended sources exhibit more radial components in the head geometry. This effect has a larger impact on MEG data as compared to EEG, because in a spherical head model radial currents do not yield any magnetic field. Confidence volumes of single reconstructed dipoles from simulated data at different SNRs show a good correlation with the extension of clusters from repeated dipole reconstructions. Size and shape of dipole clusters reconstructed from extended cortical sources do not only depend on spike and timepoint selection, but also strongly on the SNR of the measured interictal MEG or EEG data. In a linear approximation the size of the clusters is proportional to the inverse SNR.

Keyword

Electroencephalography (EEG); Magnetoencephalography (MEG); Epileptic spikes; Equivalent current dipole (ECD); Dipole cluster; Signalto-noise-ratio (SNR)

MeSH Terms

Artifacts
Dataset
Electroencephalography*
Head
Magnetic Fields
Magnetoencephalography
Neurons
Noise
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