An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer

A common co-pathology of large lung tumors located near the central airways is collapse of portions of lung due to blockage of airflow by the tumor. Not only does the lung volume decrease as collapse occurs, but fluid from capillaries also fills the space no longer occupied by air, greatly altering...

Full description

Bibliographic Details
Main Author: Guy, Christopher L
Format: Others
Published: VCU Scholars Compass 2017
Subjects:
Online Access:http://scholarscompass.vcu.edu/etd/4961
http://scholarscompass.vcu.edu/cgi/viewcontent.cgi?article=6048&context=etd
id ndltd-vcu.edu-oai-scholarscompass.vcu.edu-etd-6048
record_format oai_dc
spelling ndltd-vcu.edu-oai-scholarscompass.vcu.edu-etd-60482017-07-15T05:32:03Z An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer Guy, Christopher L A common co-pathology of large lung tumors located near the central airways is collapse of portions of lung due to blockage of airflow by the tumor. Not only does the lung volume decrease as collapse occurs, but fluid from capillaries also fills the space no longer occupied by air, greatly altering tissue appearance. During radiotherapy, typically administered to the patient over multiple weeks, the tumor can dramatically shrink in response to the treatment, restoring airflow to the lung sections which were collapsed when therapy began. While return of normal lung function is a positive development, the change in anatomy presents problems for future radiation sessions since the treatment was planned on lung geometry which is no longer accurate. The treatment must be adapted to the new lung state so that the radiation continues to accurately target the tumor while safely avoiding healthy tissue. However, to account for the dose delivered previously, correspondences of anatomy between the former image when the lung was collapsed and the re-expanded lung in a current image must be obtained. This process, known as deformable image registration, is performed by registration software. Most registration algorithms assume that identical anatomy is contained in the images and that intensities of corresponding image elements are similar; both assumptions are untrue when collapsed lung re-expands. This work was to develop an algorithm which accurately registers images in the presence of lung expansion. The lung registration method matched CT images of patients aided by vessel enhancement and information of individual lobe boundaries. The algorithm was tested on eighteen patients with lung collapse using physician-specified correspondences to measure registration error. The image registration algorithm developed in this work which was designed for challenging lung patients resulted in accuracy comparable to that of other methods when large lung changes are absent. 2017-01-01T08:00:00Z text application/pdf http://scholarscompass.vcu.edu/etd/4961 http://scholarscompass.vcu.edu/cgi/viewcontent.cgi?article=6048&context=etd © The Author Theses and Dissertations VCU Scholars Compass deformable image registration atelectasis non-small cell lung cancer radiation therapy Health and Medical Physics
collection NDLTD
format Others
sources NDLTD
topic deformable image registration
atelectasis
non-small cell lung cancer
radiation therapy
Health and Medical Physics
spellingShingle deformable image registration
atelectasis
non-small cell lung cancer
radiation therapy
Health and Medical Physics
Guy, Christopher L
An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
description A common co-pathology of large lung tumors located near the central airways is collapse of portions of lung due to blockage of airflow by the tumor. Not only does the lung volume decrease as collapse occurs, but fluid from capillaries also fills the space no longer occupied by air, greatly altering tissue appearance. During radiotherapy, typically administered to the patient over multiple weeks, the tumor can dramatically shrink in response to the treatment, restoring airflow to the lung sections which were collapsed when therapy began. While return of normal lung function is a positive development, the change in anatomy presents problems for future radiation sessions since the treatment was planned on lung geometry which is no longer accurate. The treatment must be adapted to the new lung state so that the radiation continues to accurately target the tumor while safely avoiding healthy tissue. However, to account for the dose delivered previously, correspondences of anatomy between the former image when the lung was collapsed and the re-expanded lung in a current image must be obtained. This process, known as deformable image registration, is performed by registration software. Most registration algorithms assume that identical anatomy is contained in the images and that intensities of corresponding image elements are similar; both assumptions are untrue when collapsed lung re-expands. This work was to develop an algorithm which accurately registers images in the presence of lung expansion. The lung registration method matched CT images of patients aided by vessel enhancement and information of individual lobe boundaries. The algorithm was tested on eighteen patients with lung collapse using physician-specified correspondences to measure registration error. The image registration algorithm developed in this work which was designed for challenging lung patients resulted in accuracy comparable to that of other methods when large lung changes are absent.
author Guy, Christopher L
author_facet Guy, Christopher L
author_sort Guy, Christopher L
title An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
title_short An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
title_full An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
title_fullStr An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
title_full_unstemmed An Algorithm to Improve Deformable Image Registration Accuracy in Challenging Cases of Locally-Advanced Non-Small Cell Lung Cancer
title_sort algorithm to improve deformable image registration accuracy in challenging cases of locally-advanced non-small cell lung cancer
publisher VCU Scholars Compass
publishDate 2017
url http://scholarscompass.vcu.edu/etd/4961
http://scholarscompass.vcu.edu/cgi/viewcontent.cgi?article=6048&context=etd
work_keys_str_mv AT guychristopherl analgorithmtoimprovedeformableimageregistrationaccuracyinchallengingcasesoflocallyadvancednonsmallcelllungcancer
AT guychristopherl algorithmtoimprovedeformableimageregistrationaccuracyinchallengingcasesoflocallyadvancednonsmallcelllungcancer
_version_ 1718496608673333248