scispace - formally typeset
Open AccessJournal ArticleDOI

Sensitivity of beamformer source analysis to deficiencies in forward modeling.

TLDR
A systematic study on the influence of improper volume conductor modeling on the source reconstruction performance of an EEG‐data based synthetic aperture magnetometry (SAM) beamforming approach concludes that depending on source position, sensor coverage, and accuracy of the volume conductor model, localization errors up to several centimeters must be expected.
Abstract
Beamforming approaches have recently been developed for the field of electroencephalography (EEG) and magnetoencephalography (MEG) source analysis and opened up new applications within various fields of neuroscience. While the number of beamformer applications thus increases fast-paced, fundamental methodological considerations, especially the dependence of beamformer performance on leadfield accuracy, is still quite unclear. In this article, we present a systematic study on the influence of improper volume conductor modeling on the source reconstruction performance of an EEG-data based synthetic aperture magnetometry (SAM) beamforming approach. A finite element model of a human head is derived from multimodal MR images and serves as a realistic volume conductor model. By means of a theoretical analysis followed by a series of computer simulations insight is gained into beamformer performance with respect to reconstruction errors in peak location, peak amplitude, and peak width resulting from geometry and anisotropy volume conductor misspecifications, sensor noise, and insufficient sensor coverage. We conclude that depending on source position, sensor coverage, and accuracy of the volume conductor model, localization errors up to several centimeters must be expected. As we could show that the beamformer tries to find the best fitting leadfield (least squares) with respect to its scanning space, this result can be generalized to other localization methods. More specific, amplitude, and width of the beamformer peaks significantly depend on the interaction between noise and accuracy of the volume conductor model. The beamformer can strongly profit from a high signal-to-noise ratio, but this requires a sufficiently realistic volume conductor model.

read more

Citations
More filters
Journal ArticleDOI

Determinants of the electric field during transcranial direct current stimulation

TL;DR: How various anatomical features systematically shape the electric field distribution in the brain during tDCS is shown, namely the thicknesses of the cerebrospinal fluid and the skull, the gyral depth and the distance to the anode and cathode.
Journal ArticleDOI

Committee report: Publication guidelines and recommendations for studies using electroencephalography and magnetoencephalography

TL;DR: The goal of the present paper is to contribute to the effective documentation and communication of advances by providing updated guidelines for conducting and reporting EEG/MEG studies, which include a checklist of key information recommended for inclusion in research reports on EEG/ MEG measures.
Journal ArticleDOI

A new generation of magnetoencephalography: Room temperature measurements using optically-pumped magnetometers

TL;DR: Recording made using a single optically‐pumped magnetometer (OPM) in combination with a 3D‐printed head‐cast designed to accurately locate and orient the sensor relative to brain anatomy highlight the opportunity presented by OPMs to generate uncooled, potentially low‐cost, high SNR MEG systems.
Journal ArticleDOI

ElectroMagnetoEncephalography software: overview and integration with other EEG/MEG toolboxes.

TL;DR: An overview of the capabilities of the EMMEGS toolbox is provided, together with a simple tutorial for both a standard ERP analysis and a time-frequency analysis.
Journal ArticleDOI

A Review of Issues Related to Data Acquisition and Analysis in EEG/MEG Studies

TL;DR: Issues in data acquisition and analysis of EEG and MEG data are discussed and the increase in methodological complexity in EEG/MEG is discussed, which is important to gather data that are of high quality and that are as artifact free as possible.
References
More filters
Journal ArticleDOI

Magnetoencephalography—theory, instrumentation, and applications to noninvasive studies of the working human brain

TL;DR: The mathematical theory of the method is explained in detail, followed by a thorough description of MEG instrumentation, data analysis, and practical construction of multi-SQUID devices.
Journal Article

Standardized low-resolution brain electromagnetic tomography (sLORETA): technical details.

TL;DR: The technical details of the method are presented, allowing researchers to test, check, reproduce and validate the new method, and a solution reported here yields images of standardized current density with zero localization error.
Journal ArticleDOI

Localization of brain electrical activity via linearly constrained minimum variance spatial filtering

TL;DR: This paper presents a development and analysis of the spatial filtering method for localizing sources of brain electrical activity from surface recordings and explores its sensitivity to deviations between actual and assumed data models.
Journal ArticleDOI

Basic mathematical and electromagnetic concepts of the biomagnetic inverse problem

TL;DR: Basic mathematical and physical concepts of the biomagnetic inverse problem are reviewed with some new approaches and a weighted least-squares search with confidence limits and the method of minimum norm estimate are discussed.
Journal ArticleDOI

Electromagnetic brain mapping

TL;DR: The underlying models currently used in MEG/EEG source estimation are described and the various signal processing steps required to compute these sources are described.
Related Papers (5)