Sparse regression methods with measurement-error for magnetoencephalography

Magnetoencephalography (MEG) is a neuroimaging method for mapping brain activity based on magnetic field recordings. The inverse problem associated with MEG is severely ill-posed and is complicated by the presence of high collinearity in the forward (leadfield) matrix. This means that accurate sourc...

Full description

Bibliographic Details
Main Author: Davies, Jonathan
Format: Thesis (University of Nottingham only)
Language:English
Published: 2017
Online Access:https://eprints.nottingham.ac.uk/48062/
_version_ 1848797682210963456
author Davies, Jonathan
author_facet Davies, Jonathan
author_sort Davies, Jonathan
building Nottingham Research Data Repository
collection Online Access
description Magnetoencephalography (MEG) is a neuroimaging method for mapping brain activity based on magnetic field recordings. The inverse problem associated with MEG is severely ill-posed and is complicated by the presence of high collinearity in the forward (leadfield) matrix. This means that accurate source localisation can be challenging. The most commonly used methods for solving the MEG problem do not employ sparsity to help reduce the dimensions of the problem. In this thesis we review a number of the sparse regression methods that are widely used in statistics, as well as some more recent methods, and assess their performance in the context of MEG data. Due to the complexity of the forward model in MEG, the presence of measurement-error in the leadfield matrix can create issues in the spatial resolution of the data. Therefore we investigate the impact of measurement-error on sparse regression methods as well as how we can correct for it. We adapt the conditional score and simulation extrapolation (SIMEX) methods for use with sparse regression methods and build on an existing corrected lasso method to cover the elastic net penalty. These methods are demonstrated using a number of simulations for different types of measurement-error and are also tested with real MEG data. The measurement-error methods perform well in simulations, including high dimensional examples, where they are able to correct for attenuation bias in the true covariates. However the extent of their correction is much more restricted in the more complex MEG data where covariates are highly correlated and there is uncertainty over the distribution of the error.
first_indexed 2025-11-14T20:07:45Z
format Thesis (University of Nottingham only)
id nottingham-48062
institution University of Nottingham Malaysia Campus
institution_category Local University
language English
last_indexed 2025-11-14T20:07:45Z
publishDate 2017
recordtype eprints
repository_type Digital Repository
spelling nottingham-480622025-02-28T13:55:27Z https://eprints.nottingham.ac.uk/48062/ Sparse regression methods with measurement-error for magnetoencephalography Davies, Jonathan Magnetoencephalography (MEG) is a neuroimaging method for mapping brain activity based on magnetic field recordings. The inverse problem associated with MEG is severely ill-posed and is complicated by the presence of high collinearity in the forward (leadfield) matrix. This means that accurate source localisation can be challenging. The most commonly used methods for solving the MEG problem do not employ sparsity to help reduce the dimensions of the problem. In this thesis we review a number of the sparse regression methods that are widely used in statistics, as well as some more recent methods, and assess their performance in the context of MEG data. Due to the complexity of the forward model in MEG, the presence of measurement-error in the leadfield matrix can create issues in the spatial resolution of the data. Therefore we investigate the impact of measurement-error on sparse regression methods as well as how we can correct for it. We adapt the conditional score and simulation extrapolation (SIMEX) methods for use with sparse regression methods and build on an existing corrected lasso method to cover the elastic net penalty. These methods are demonstrated using a number of simulations for different types of measurement-error and are also tested with real MEG data. The measurement-error methods perform well in simulations, including high dimensional examples, where they are able to correct for attenuation bias in the true covariates. However the extent of their correction is much more restricted in the more complex MEG data where covariates are highly correlated and there is uncertainty over the distribution of the error. 2017-12-14 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/48062/1/Thesis_JDavies_corV2.pdf Davies, Jonathan (2017) Sparse regression methods with measurement-error for magnetoencephalography. PhD thesis, University of Nottingham.
spellingShingle Davies, Jonathan
Sparse regression methods with measurement-error for magnetoencephalography
title Sparse regression methods with measurement-error for magnetoencephalography
title_full Sparse regression methods with measurement-error for magnetoencephalography
title_fullStr Sparse regression methods with measurement-error for magnetoencephalography
title_full_unstemmed Sparse regression methods with measurement-error for magnetoencephalography
title_short Sparse regression methods with measurement-error for magnetoencephalography
title_sort sparse regression methods with measurement-error for magnetoencephalography
url https://eprints.nottingham.ac.uk/48062/