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Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model

PURPOSE: Radiotherapy (RT) that selectively avoids irradiating highly functional lung regions may reduce pulmonary toxicity, which is substantial in lung cancer RT. Single-energy computed tomography (CT) pulmonary perfusion imaging has several advantages (e.g., higher resolution) over other modaliti...

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Autores principales: Yamamoto, Tokihiro, Kent, Michael S., Wisner, Erik R., Johnson, Lynelle R., Stern, Joshua A., Qi, Lihong, Fujita, Yukio, Boone, John M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Association of Physicists in Medicine 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5438244/
https://www.ncbi.nlm.nih.gov/pubmed/27370118
http://dx.doi.org/10.1118/1.4953188
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author Yamamoto, Tokihiro
Kent, Michael S.
Wisner, Erik R.
Johnson, Lynelle R.
Stern, Joshua A.
Qi, Lihong
Fujita, Yukio
Boone, John M.
author_facet Yamamoto, Tokihiro
Kent, Michael S.
Wisner, Erik R.
Johnson, Lynelle R.
Stern, Joshua A.
Qi, Lihong
Fujita, Yukio
Boone, John M.
author_sort Yamamoto, Tokihiro
collection PubMed
description PURPOSE: Radiotherapy (RT) that selectively avoids irradiating highly functional lung regions may reduce pulmonary toxicity, which is substantial in lung cancer RT. Single-energy computed tomography (CT) pulmonary perfusion imaging has several advantages (e.g., higher resolution) over other modalities and has great potential for widespread clinical implementation, particularly in RT. The purpose of this study was to establish proof-of-principle for single-energy CT perfusion imaging. METHODS: Single-energy CT perfusion imaging is based on the following: (1) acquisition of end-inspiratory breath-hold CT scans before and after intravenous injection of iodinated contrast agents, (2) deformable image registration (DIR) for spatial mapping of those two CT image data sets, and (3) subtraction of the precontrast image data set from the postcontrast image data set, yielding a map of regional Hounsfield unit (HU) enhancement, a surrogate for regional perfusion. In a protocol approved by the institutional animal care and use committee, the authors acquired CT scans in the prone position for a total of 14 anesthetized canines (seven canines with normal lungs and seven canines with diseased lungs). The elastix algorithm was used for DIR. The accuracy of DIR was evaluated based on the target registration error (TRE) of 50 anatomic pulmonary landmarks per subject for 10 randomly selected subjects as well as on singularities (i.e., regions where the displacement vector field is not bijective). Prior to perfusion computation, HUs of the precontrast end-inspiratory image were corrected for variation in the lung inflation level between the precontrast and postcontrast end-inspiratory CT scans, using a model built from two additional precontrast CT scans at end-expiration and midinspiration. The authors also assessed spatial heterogeneity and gravitationally directed gradients of regional perfusion for normal lung subjects and diseased lung subjects using a two-sample two-tailed t-test. RESULTS: The mean TRE (and standard deviation) was 0.6 ± 0.7 mm (smaller than the voxel dimension) for DIR between pre contrast and postcontrast end-inspiratory CT image data sets. No singularities were observed in the displacement vector fields. The mean HU enhancement (and standard deviation) was 37.3 ± 10.5 HU for normal lung subjects and 30.7 ± 13.5 HU for diseased lung subjects. Spatial heterogeneity of regional perfusion was found to be higher for diseased lung subjects than for normal lung subjects, i.e., a mean coefficient of variation of 2.06 vs 1.59 (p = 0.07). The average gravitationally directed gradient was strong and significant (R(2) = 0.99, p < 0.01) for normal lung dogs, whereas it was moderate and nonsignificant (R(2) = 0.61, p = 0.12) for diseased lung dogs. CONCLUSIONS: This canine study demonstrated the accuracy of DIR with subvoxel TREs on average, higher spatial heterogeneity of regional perfusion for diseased lung subjects than for normal lung subjects, and a strong gravitationally directed gradient for normal lung subjects, providing proof-of-principle for single-energy CT pulmonary perfusion imaging. Further studies such as comparison with other perfusion imaging modalities will be necessary to validate the physiological significance.
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spelling pubmed-54382442017-05-23 Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model Yamamoto, Tokihiro Kent, Michael S. Wisner, Erik R. Johnson, Lynelle R. Stern, Joshua A. Qi, Lihong Fujita, Yukio Boone, John M. Med Phys EMERGING IMAGING AND THERAPY MODALITIES PURPOSE: Radiotherapy (RT) that selectively avoids irradiating highly functional lung regions may reduce pulmonary toxicity, which is substantial in lung cancer RT. Single-energy computed tomography (CT) pulmonary perfusion imaging has several advantages (e.g., higher resolution) over other modalities and has great potential for widespread clinical implementation, particularly in RT. The purpose of this study was to establish proof-of-principle for single-energy CT perfusion imaging. METHODS: Single-energy CT perfusion imaging is based on the following: (1) acquisition of end-inspiratory breath-hold CT scans before and after intravenous injection of iodinated contrast agents, (2) deformable image registration (DIR) for spatial mapping of those two CT image data sets, and (3) subtraction of the precontrast image data set from the postcontrast image data set, yielding a map of regional Hounsfield unit (HU) enhancement, a surrogate for regional perfusion. In a protocol approved by the institutional animal care and use committee, the authors acquired CT scans in the prone position for a total of 14 anesthetized canines (seven canines with normal lungs and seven canines with diseased lungs). The elastix algorithm was used for DIR. The accuracy of DIR was evaluated based on the target registration error (TRE) of 50 anatomic pulmonary landmarks per subject for 10 randomly selected subjects as well as on singularities (i.e., regions where the displacement vector field is not bijective). Prior to perfusion computation, HUs of the precontrast end-inspiratory image were corrected for variation in the lung inflation level between the precontrast and postcontrast end-inspiratory CT scans, using a model built from two additional precontrast CT scans at end-expiration and midinspiration. The authors also assessed spatial heterogeneity and gravitationally directed gradients of regional perfusion for normal lung subjects and diseased lung subjects using a two-sample two-tailed t-test. RESULTS: The mean TRE (and standard deviation) was 0.6 ± 0.7 mm (smaller than the voxel dimension) for DIR between pre contrast and postcontrast end-inspiratory CT image data sets. No singularities were observed in the displacement vector fields. The mean HU enhancement (and standard deviation) was 37.3 ± 10.5 HU for normal lung subjects and 30.7 ± 13.5 HU for diseased lung subjects. Spatial heterogeneity of regional perfusion was found to be higher for diseased lung subjects than for normal lung subjects, i.e., a mean coefficient of variation of 2.06 vs 1.59 (p = 0.07). The average gravitationally directed gradient was strong and significant (R(2) = 0.99, p < 0.01) for normal lung dogs, whereas it was moderate and nonsignificant (R(2) = 0.61, p = 0.12) for diseased lung dogs. CONCLUSIONS: This canine study demonstrated the accuracy of DIR with subvoxel TREs on average, higher spatial heterogeneity of regional perfusion for diseased lung subjects than for normal lung subjects, and a strong gravitationally directed gradient for normal lung subjects, providing proof-of-principle for single-energy CT pulmonary perfusion imaging. Further studies such as comparison with other perfusion imaging modalities will be necessary to validate the physiological significance. American Association of Physicists in Medicine 2016-07 2016-06-09 /pmc/articles/PMC5438244/ /pubmed/27370118 http://dx.doi.org/10.1118/1.4953188 Text en © 2016 American Association of Physicists in Medicine. 0094-2405/2016/43(7)/3998/10/$30.00 All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/ ).
spellingShingle EMERGING IMAGING AND THERAPY MODALITIES
Yamamoto, Tokihiro
Kent, Michael S.
Wisner, Erik R.
Johnson, Lynelle R.
Stern, Joshua A.
Qi, Lihong
Fujita, Yukio
Boone, John M.
Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title_full Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title_fullStr Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title_full_unstemmed Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title_short Single-energy computed tomography-based pulmonary perfusion imaging: Proof-of-principle in a canine model
title_sort single-energy computed tomography-based pulmonary perfusion imaging: proof-of-principle in a canine model
topic EMERGING IMAGING AND THERAPY MODALITIES
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5438244/
https://www.ncbi.nlm.nih.gov/pubmed/27370118
http://dx.doi.org/10.1118/1.4953188
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