Task Performance with List-Mode Data
This dissertation investigates the application of list-mode data to detection, estimation, and image reconstruction problems, with an emphasis on emission tomography in medical imaging. We begin by introducing a theoretical framework for list-mode data and we use it to define two observers that oper...
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ndltd-arizona.edu-oai-arizona.openrepository.com-10150-2424022015-10-23T04:56:50Z Task Performance with List-Mode Data Caucci, Luca Barrett, Harrison H. Furenlid, Lars R. Kupinski, Matthew A. Barrett, Harrison H. Estimation Graphics Processing Units (GPUs) List-Mode data Reconstruction Optical Sciences Detection Emission Tomography This dissertation investigates the application of list-mode data to detection, estimation, and image reconstruction problems, with an emphasis on emission tomography in medical imaging. We begin by introducing a theoretical framework for list-mode data and we use it to define two observers that operate on list-mode data. These observers are applied to the problem of detecting a signal~(known in shape and location) buried in a random lumpy background. We then consider maximum-likelihood methods for the estimation of numerical parameters from list-mode data, and we characterize the performance of these estimators via the so-called Fisher information matrix. Reconstruction from PET list-mode data is then considered. In a process we called "double maximum-likelihood" reconstruction, we consider a simple PET imaging system and we use maximum-likelihood methods to first estimate a parameter vector for each pair of gamma-ray photons that is detected by the hardware. The collection of these parameter vectors forms a list, which is then fed to another maximum-likelihood algorithm for volumetric reconstruction over a grid of voxels. Efficient parallel implementation of the algorithms discussed above is then presented. In this work, we take advantage of two low-cost, mass-produced computing platforms that have recently appeared on the market, and we provide some details on implementing our algorithms on these devices. We conclude this dissertation work by elaborating on a possible application of list-mode data to X-ray digital mammography. We argue that today's CMOS detectors and computing platforms have become fast enough to make X-ray digital mammography list-mode data acquisition and processing feasible. 2012 text Electronic Dissertation http://hdl.handle.net/10150/242402 en Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona. |
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en |
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Estimation Graphics Processing Units (GPUs) List-Mode data Reconstruction Optical Sciences Detection Emission Tomography |
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Estimation Graphics Processing Units (GPUs) List-Mode data Reconstruction Optical Sciences Detection Emission Tomography Caucci, Luca Task Performance with List-Mode Data |
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This dissertation investigates the application of list-mode data to detection, estimation, and image reconstruction problems, with an emphasis on emission tomography in medical imaging. We begin by introducing a theoretical framework for list-mode data and we use it to define two observers that operate on list-mode data. These observers are applied to the problem of detecting a signal~(known in shape and location) buried in a random lumpy background. We then consider maximum-likelihood methods for the estimation of numerical parameters from list-mode data, and we characterize the performance of these estimators via the so-called Fisher information matrix. Reconstruction from PET list-mode data is then considered. In a process we called "double maximum-likelihood" reconstruction, we consider a simple PET imaging system and we use maximum-likelihood methods to first estimate a parameter vector for each pair of gamma-ray photons that is detected by the hardware. The collection of these parameter vectors forms a list, which is then fed to another maximum-likelihood algorithm for volumetric reconstruction over a grid of voxels. Efficient parallel implementation of the algorithms discussed above is then presented. In this work, we take advantage of two low-cost, mass-produced computing platforms that have recently appeared on the market, and we provide some details on implementing our algorithms on these devices. We conclude this dissertation work by elaborating on a possible application of list-mode data to X-ray digital mammography. We argue that today's CMOS detectors and computing platforms have become fast enough to make X-ray digital mammography list-mode data acquisition and processing feasible. |
author2 |
Barrett, Harrison H. |
author_facet |
Barrett, Harrison H. Caucci, Luca |
author |
Caucci, Luca |
author_sort |
Caucci, Luca |
title |
Task Performance with List-Mode Data |
title_short |
Task Performance with List-Mode Data |
title_full |
Task Performance with List-Mode Data |
title_fullStr |
Task Performance with List-Mode Data |
title_full_unstemmed |
Task Performance with List-Mode Data |
title_sort |
task performance with list-mode data |
publisher |
The University of Arizona. |
publishDate |
2012 |
url |
http://hdl.handle.net/10150/242402 |
work_keys_str_mv |
AT caucciluca taskperformancewithlistmodedata |
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1718101535889555456 |