Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image

Lung motion due to respiration causes image degradation in medical imaging, especially in nuclear medicine which requires long acquisition times. We have developed a method for image correction between the respiratory-gated (RG) PET images in different respiration phases or breath-hold (BH) PET imag...

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Main Authors: Hideaki Haneishi, Masayuki Kanai, Yoshitaka Tamai, Atsushi Sakohira, Kazuyoshi Suga
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Computational and Mathematical Methods in Medicine
Online Access:http://dx.doi.org/10.1155/2016/9713280
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spelling doaj-0e9e77d73bdd4a74aee1c48bbb66984e2020-11-25T00:21:29ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182016-01-01201610.1155/2016/97132809713280Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT ImageHideaki Haneishi0Masayuki Kanai1Yoshitaka Tamai2Atsushi Sakohira3Kazuyoshi Suga4Center for Frontier Medical Engineering, Chiba University, Chiba 263-8522, JapanGraduate School of Engineering, Chiba University, Chiba 263-8522, JapanSt. Hill Hospital, Ube 755-0155, JapanSt. Hill Hospital, Ube 755-0155, JapanSt. Hill Hospital, Ube 755-0155, JapanLung motion due to respiration causes image degradation in medical imaging, especially in nuclear medicine which requires long acquisition times. We have developed a method for image correction between the respiratory-gated (RG) PET images in different respiration phases or breath-hold (BH) PET images in an inconsistent respiration phase. In the method, the RG or BH-PET images in different respiration phases are deformed under two criteria: similarity of the image intensity distribution and smoothness of the estimated motion vector field (MVF). However, only these criteria may cause unnatural motion estimation of lung. In this paper, assuming the use of a PET-CT scanner, we add another criterion that is the similarity for the motion direction estimated from inhalation and exhalation CT images. The proposed method was first applied to a numerical phantom XCAT with tumors and then applied to BH-PET image data for seven patients. The resultant tumor contrasts and the estimated motion vector fields were compared with those obtained by our previous method. Through those experiments we confirmed that the proposed method can provide an improved and more stable image quality for both RG and BH-PET images.http://dx.doi.org/10.1155/2016/9713280
collection DOAJ
language English
format Article
sources DOAJ
author Hideaki Haneishi
Masayuki Kanai
Yoshitaka Tamai
Atsushi Sakohira
Kazuyoshi Suga
spellingShingle Hideaki Haneishi
Masayuki Kanai
Yoshitaka Tamai
Atsushi Sakohira
Kazuyoshi Suga
Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
Computational and Mathematical Methods in Medicine
author_facet Hideaki Haneishi
Masayuki Kanai
Yoshitaka Tamai
Atsushi Sakohira
Kazuyoshi Suga
author_sort Hideaki Haneishi
title Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
title_short Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
title_full Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
title_fullStr Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
title_full_unstemmed Registration and Summation of Respiratory-Gated or Breath-Hold PET Images Based on Deformation Estimation of Lung from CT Image
title_sort registration and summation of respiratory-gated or breath-hold pet images based on deformation estimation of lung from ct image
publisher Hindawi Limited
series Computational and Mathematical Methods in Medicine
issn 1748-670X
1748-6718
publishDate 2016-01-01
description Lung motion due to respiration causes image degradation in medical imaging, especially in nuclear medicine which requires long acquisition times. We have developed a method for image correction between the respiratory-gated (RG) PET images in different respiration phases or breath-hold (BH) PET images in an inconsistent respiration phase. In the method, the RG or BH-PET images in different respiration phases are deformed under two criteria: similarity of the image intensity distribution and smoothness of the estimated motion vector field (MVF). However, only these criteria may cause unnatural motion estimation of lung. In this paper, assuming the use of a PET-CT scanner, we add another criterion that is the similarity for the motion direction estimated from inhalation and exhalation CT images. The proposed method was first applied to a numerical phantom XCAT with tumors and then applied to BH-PET image data for seven patients. The resultant tumor contrasts and the estimated motion vector fields were compared with those obtained by our previous method. Through those experiments we confirmed that the proposed method can provide an improved and more stable image quality for both RG and BH-PET images.
url http://dx.doi.org/10.1155/2016/9713280
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