Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry

Electroencephalography (EEG) is a valuable tool for clinical and cognitive applications. EEG allows for measuring and imaging of scalp potentials emitted by brain activity and allows researchers to draw conclusions about underlying brain activity and function. However EEG is limited by poor spatial...

Full description

Bibliographic Details
Main Author: Poltera, Carina M.
Other Authors: Wijesinghe, Ranjith S.
Format: Others
Published: 2011
Subjects:
Online Access:http://cardinalscholar.bsu.edu/handle/handle/188252
http://liblink.bsu.edu/uhtbin/catkey/1371849
id ndltd-BSU-oai-cardinalscholar.bsu.edu-handle-188252
record_format oai_dc
spelling ndltd-BSU-oai-cardinalscholar.bsu.edu-handle-1882522014-07-24T03:33:30ZNumerical analysis of spline generated surface Laplacian for ellipsoidal head geometryPoltera, Carina M.Spline theory.Harmonic functions.Electroencephalography -- Measurement.Electroencephalography -- Computer simulation.Electroencephalography (EEG) is a valuable tool for clinical and cognitive applications. EEG allows for measuring and imaging of scalp potentials emitted by brain activity and allows researchers to draw conclusions about underlying brain activity and function. However EEG is limited by poor spatial resolution due to various factors. One reason is the fact that EEG electrodes are separated from current sources in the brain by cerebrospinal fluid (CSF), the skull, and the scalp. Unfortunately the conductivities of these tissues are not yet well known which limits the spatial resolution of EEG.Based on prior research, spatial resolution of the EEG can be improved via use of various mathematical techniques that provide increased accuracy of the representation of scalp potentials. One such method is the surface Laplacian. It has been shown to be a direct approach to improving EEG spatial resolution. Yet this approach depends on a geometric head model and much work has been done on assuming the human head to be spherical.In this project, we will develop a mathematical model for ellipsoidal head geometry based on surface Laplacian calculations by Law [1]. The ellipsoidal head model is more realistic to the human head shape and can therefore improve accuracy of the EEG imaging calculations. We will construct a computational program that utilizes the ellipsoidal head geometry in hopes to provide a more accurate representation of data fits compared to the spherical head models. Also, we will demonstrate that the spline surface Laplacian calculations do indeed increase the spatial resolution thereby affording a greater impact to the clinical and cognitive study community involving EEG.Department of Physics and AstronomyWijesinghe, Ranjith S.2011-06-03T19:41:16Z2011-06-03T19:41:16Z20072007viii, 138 leaves : ill. ; 28 cm.LD2489.Z78 2007 .P65http://cardinalscholar.bsu.edu/handle/handle/188252http://liblink.bsu.edu/uhtbin/catkey/1371849Virtual Press
collection NDLTD
format Others
sources NDLTD
topic Spline theory.
Harmonic functions.
Electroencephalography -- Measurement.
Electroencephalography -- Computer simulation.
spellingShingle Spline theory.
Harmonic functions.
Electroencephalography -- Measurement.
Electroencephalography -- Computer simulation.
Poltera, Carina M.
Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
description Electroencephalography (EEG) is a valuable tool for clinical and cognitive applications. EEG allows for measuring and imaging of scalp potentials emitted by brain activity and allows researchers to draw conclusions about underlying brain activity and function. However EEG is limited by poor spatial resolution due to various factors. One reason is the fact that EEG electrodes are separated from current sources in the brain by cerebrospinal fluid (CSF), the skull, and the scalp. Unfortunately the conductivities of these tissues are not yet well known which limits the spatial resolution of EEG.Based on prior research, spatial resolution of the EEG can be improved via use of various mathematical techniques that provide increased accuracy of the representation of scalp potentials. One such method is the surface Laplacian. It has been shown to be a direct approach to improving EEG spatial resolution. Yet this approach depends on a geometric head model and much work has been done on assuming the human head to be spherical.In this project, we will develop a mathematical model for ellipsoidal head geometry based on surface Laplacian calculations by Law [1]. The ellipsoidal head model is more realistic to the human head shape and can therefore improve accuracy of the EEG imaging calculations. We will construct a computational program that utilizes the ellipsoidal head geometry in hopes to provide a more accurate representation of data fits compared to the spherical head models. Also, we will demonstrate that the spline surface Laplacian calculations do indeed increase the spatial resolution thereby affording a greater impact to the clinical and cognitive study community involving EEG. === Department of Physics and Astronomy
author2 Wijesinghe, Ranjith S.
author_facet Wijesinghe, Ranjith S.
Poltera, Carina M.
author Poltera, Carina M.
author_sort Poltera, Carina M.
title Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
title_short Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
title_full Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
title_fullStr Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
title_full_unstemmed Numerical analysis of spline generated surface Laplacian for ellipsoidal head geometry
title_sort numerical analysis of spline generated surface laplacian for ellipsoidal head geometry
publishDate 2011
url http://cardinalscholar.bsu.edu/handle/handle/188252
http://liblink.bsu.edu/uhtbin/catkey/1371849
work_keys_str_mv AT polteracarinam numericalanalysisofsplinegeneratedsurfacelaplacianforellipsoidalheadgeometry
_version_ 1716709016469504000