Enabling technology for non-rigid registration during image-guided neurosurgery

In the context of image processing, non-rigid registration is an operation that attempts to align two or more images using spatially varying transformations. Non-rigid registration finds application in medical image processing to account for the deformations in the soft tissues of the imaged organs....

Full description

Bibliographic Details
Main Author: Fedorov, andriy Yuri
Format: Others
Language:English
Published: W&M ScholarWorks 2009
Subjects:
Online Access:https://scholarworks.wm.edu/etd/1539623540
https://scholarworks.wm.edu/cgi/viewcontent.cgi?article=3331&context=etd
id ndltd-wm.edu-oai-scholarworks.wm.edu-etd-3331
record_format oai_dc
spelling ndltd-wm.edu-oai-scholarworks.wm.edu-etd-33312019-05-16T03:37:07Z Enabling technology for non-rigid registration during image-guided neurosurgery Fedorov, andriy Yuri In the context of image processing, non-rigid registration is an operation that attempts to align two or more images using spatially varying transformations. Non-rigid registration finds application in medical image processing to account for the deformations in the soft tissues of the imaged organs. During image-guided neurosurgery, non-rigid registration has the potential to assist in locating critical brain structures and improve identification of the tumor boundary. Robust non-rigid registration methods combine estimation of tissue displacement based on image intensities with the spatial regularization using biomechanical models of brain deformation. In practice, the use of such registration methods during neurosurgery is complicated by a number of issues: construction of the biomechanical model used in the registration from the image data, high computational demands of the application, and difficulties in assessing the registration results. In this dissertation we develop methods and tools that address some of these challenges, and provide components essential for the intra-operative application of a previously validated physics-based non-rigid registration method.;First, we study the problem of image-to-mesh conversion, which is required for constructing biomechanical model of the brain used during registration. We develop and analyze a number of methods suitable for solving this problem, and evaluate them using application-specific quantitative metrics. Second, we develop a high-performance implementation of the non-rigid registration algorithm and study the use of geographically distributed Grid resources for speculative registration computations. Using the high-performance implementation running on the remote computing resources we are able to deliver the results of registration within the time constraints of the neurosurgery. Finally, we present a method that estimates local alignment error between the two images of the same subject. We assess the utility of this method using multiple sources of ground truth to evaluate its potential to support speculative computations of non-rigid registration. 2009-01-01T08:00:00Z text application/pdf https://scholarworks.wm.edu/etd/1539623540 https://scholarworks.wm.edu/cgi/viewcontent.cgi?article=3331&context=etd © The Author Dissertations, Theses, and Masters Projects English W&M ScholarWorks Computer Sciences
collection NDLTD
language English
format Others
sources NDLTD
topic Computer Sciences
spellingShingle Computer Sciences
Fedorov, andriy Yuri
Enabling technology for non-rigid registration during image-guided neurosurgery
description In the context of image processing, non-rigid registration is an operation that attempts to align two or more images using spatially varying transformations. Non-rigid registration finds application in medical image processing to account for the deformations in the soft tissues of the imaged organs. During image-guided neurosurgery, non-rigid registration has the potential to assist in locating critical brain structures and improve identification of the tumor boundary. Robust non-rigid registration methods combine estimation of tissue displacement based on image intensities with the spatial regularization using biomechanical models of brain deformation. In practice, the use of such registration methods during neurosurgery is complicated by a number of issues: construction of the biomechanical model used in the registration from the image data, high computational demands of the application, and difficulties in assessing the registration results. In this dissertation we develop methods and tools that address some of these challenges, and provide components essential for the intra-operative application of a previously validated physics-based non-rigid registration method.;First, we study the problem of image-to-mesh conversion, which is required for constructing biomechanical model of the brain used during registration. We develop and analyze a number of methods suitable for solving this problem, and evaluate them using application-specific quantitative metrics. Second, we develop a high-performance implementation of the non-rigid registration algorithm and study the use of geographically distributed Grid resources for speculative registration computations. Using the high-performance implementation running on the remote computing resources we are able to deliver the results of registration within the time constraints of the neurosurgery. Finally, we present a method that estimates local alignment error between the two images of the same subject. We assess the utility of this method using multiple sources of ground truth to evaluate its potential to support speculative computations of non-rigid registration.
author Fedorov, andriy Yuri
author_facet Fedorov, andriy Yuri
author_sort Fedorov, andriy Yuri
title Enabling technology for non-rigid registration during image-guided neurosurgery
title_short Enabling technology for non-rigid registration during image-guided neurosurgery
title_full Enabling technology for non-rigid registration during image-guided neurosurgery
title_fullStr Enabling technology for non-rigid registration during image-guided neurosurgery
title_full_unstemmed Enabling technology for non-rigid registration during image-guided neurosurgery
title_sort enabling technology for non-rigid registration during image-guided neurosurgery
publisher W&M ScholarWorks
publishDate 2009
url https://scholarworks.wm.edu/etd/1539623540
https://scholarworks.wm.edu/cgi/viewcontent.cgi?article=3331&context=etd
work_keys_str_mv AT fedorovandriyyuri enablingtechnologyfornonrigidregistrationduringimageguidedneurosurgery
_version_ 1719187727498346496