Efficient parameter estimation for anatomy deformation models used in 4D-CT

A critical feature of radiation therapy for cancerous tumors located in the thorax and abdomen is addressing tumor motion due to breathing. To achieve this goal, a CT study (ordinarily denoted as 4D-CT) showing tumor loca-tion, size, and shape against time is essential. Several 4D-CT reconstruction...

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Main Authors: Zachariah Elizabeth S., Fei Ding-Yu, Docef Alen
Format: Article
Language:English
Published: EDP Sciences 2016-01-01
Series:MATEC Web of Conferences
Online Access:http://dx.doi.org/10.1051/matecconf/20167602003
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spelling doaj-fc25420341f84ae89f6f543e3e67abd62021-02-02T01:56:02ZengEDP SciencesMATEC Web of Conferences2261-236X2016-01-01760200310.1051/matecconf/20167602003matecconf_cscc2016_02003Efficient parameter estimation for anatomy deformation models used in 4D-CTZachariah Elizabeth S.0Fei Ding-Yu1Docef Alen2Virginia Commonwealth University, Electrical and Computer EngineeringVirginia Commonwealth University, Biomedical EngineeringVirginia Commonwealth University, Electrical and Computer EngineeringA critical feature of radiation therapy for cancerous tumors located in the thorax and abdomen is addressing tumor motion due to breathing. To achieve this goal, a CT study (ordinarily denoted as 4D-CT) showing tumor loca-tion, size, and shape against time is essential. Several 4D-CT reconstruction methods have been proposed that employ anatomy deformation models. The proposed method estimates temporal parameters for these models using an ap-proach that does not require markers or manual designation of landmark anatomical features. A neural network is trained to estimate the parameters based on simple statistical features of the CT projections. The proposed method achieves an average estimation error of less than 0.02 seconds, corresponding to a spatial error of less than 1.3 mm. The accuracy of the proposed method is evaluated in the presence of several limiting constraints such as computational complexity and noise.http://dx.doi.org/10.1051/matecconf/20167602003
collection DOAJ
language English
format Article
sources DOAJ
author Zachariah Elizabeth S.
Fei Ding-Yu
Docef Alen
spellingShingle Zachariah Elizabeth S.
Fei Ding-Yu
Docef Alen
Efficient parameter estimation for anatomy deformation models used in 4D-CT
MATEC Web of Conferences
author_facet Zachariah Elizabeth S.
Fei Ding-Yu
Docef Alen
author_sort Zachariah Elizabeth S.
title Efficient parameter estimation for anatomy deformation models used in 4D-CT
title_short Efficient parameter estimation for anatomy deformation models used in 4D-CT
title_full Efficient parameter estimation for anatomy deformation models used in 4D-CT
title_fullStr Efficient parameter estimation for anatomy deformation models used in 4D-CT
title_full_unstemmed Efficient parameter estimation for anatomy deformation models used in 4D-CT
title_sort efficient parameter estimation for anatomy deformation models used in 4d-ct
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2016-01-01
description A critical feature of radiation therapy for cancerous tumors located in the thorax and abdomen is addressing tumor motion due to breathing. To achieve this goal, a CT study (ordinarily denoted as 4D-CT) showing tumor loca-tion, size, and shape against time is essential. Several 4D-CT reconstruction methods have been proposed that employ anatomy deformation models. The proposed method estimates temporal parameters for these models using an ap-proach that does not require markers or manual designation of landmark anatomical features. A neural network is trained to estimate the parameters based on simple statistical features of the CT projections. The proposed method achieves an average estimation error of less than 0.02 seconds, corresponding to a spatial error of less than 1.3 mm. The accuracy of the proposed method is evaluated in the presence of several limiting constraints such as computational complexity and noise.
url http://dx.doi.org/10.1051/matecconf/20167602003
work_keys_str_mv AT zachariahelizabeths efficientparameterestimationforanatomydeformationmodelsusedin4dct
AT feidingyu efficientparameterestimationforanatomydeformationmodelsusedin4dct
AT docefalen efficientparameterestimationforanatomydeformationmodelsusedin4dct
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