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Evaluation of novel AI‐based extended field‐of‐view CT reconstructions

PURPOSE: Modern computed tomography (CT) scanners have an extended field‐of‐view (eFoV) for reconstructing images up to the bore size, which is relevant for patients with higher BMI or non‐isocentric positioning due to fixation devices. However, the accuracy of the image reconstruction in eFoV is no...

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Autores principales: Fonseca, Gabriel Paiva, Baer‐Beck, Matthias, Fournie, Eric, Hofmann, Christian, Rinaldi, Ilaria, Ollers, Michel C, van Elmpt, Wouter J.C., Verhaegen, Frank
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8362147/
https://www.ncbi.nlm.nih.gov/pubmed/33978240
http://dx.doi.org/10.1002/mp.14937
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author Fonseca, Gabriel Paiva
Baer‐Beck, Matthias
Fournie, Eric
Hofmann, Christian
Rinaldi, Ilaria
Ollers, Michel C
van Elmpt, Wouter J.C.
Verhaegen, Frank
author_facet Fonseca, Gabriel Paiva
Baer‐Beck, Matthias
Fournie, Eric
Hofmann, Christian
Rinaldi, Ilaria
Ollers, Michel C
van Elmpt, Wouter J.C.
Verhaegen, Frank
author_sort Fonseca, Gabriel Paiva
collection PubMed
description PURPOSE: Modern computed tomography (CT) scanners have an extended field‐of‐view (eFoV) for reconstructing images up to the bore size, which is relevant for patients with higher BMI or non‐isocentric positioning due to fixation devices. However, the accuracy of the image reconstruction in eFoV is not well known since truncated data are used. This study introduces a new deep learning‐based algorithm for extended field‐of‐view reconstruction and evaluates the accuracy of the eFoV reconstruction focusing on aspects relevant for radiotherapy. METHODS: A life‐size three‐dimensional (3D) printed thorax phantom, based on a patient CT for which eFoV was necessary, was manufactured and used as reference. The phantom has holes allowing the placement of tissue mimicking inserts used to evaluate the Hounsfield unit (HU) accuracy. CT images of the phantom were acquired using different configurations aiming to evaluate geometric and HU accuracy in the eFoV. Image reconstruction was performed using a state‐of‐the‐art reconstruction algorithm (HDFoV), commercially available, and the novel deep learning‐based approach (HDeepFoV). Five patient cases were selected to evaluate the performance of both algorithms on patient data. There is no ground truth for patients so the reconstructions were qualitatively evaluated by five physicians and five medical physicists. RESULTS: The phantom geometry reconstructed with HDFoV showed boundary deviations from 1.0 to 2.5 cm depending on the volume of the phantom outside the regular scan field of view. HDeepFoV showed a superior performance regardless of the volume of the phantom within eFOV with a maximum boundary deviation below 1.0 cm. The maximum HU (absolute) difference for soft issue inserts is below 79 and 41 HU for HDFoV and HDeepFoV, respectively. HDeepFoV has a maximum deviation of −18 HU for an inhaled lung insert while HDFoV reached a 229 HU difference. The qualitative evaluation of patient cases shows that the novel deep learning approach produces images that look more realistic and have fewer artifacts. CONCLUSION: To be able to reconstruct images outside the sFoV of the CT scanner there is no alternative than to use some kind of extrapolated data. In our study, we proposed and investigated a new deep learning‐based algorithm and compared it to a commercial solution for eFoV reconstruction. The deep learning‐based algorithm showed superior performance in quantitative evaluations based on phantom data and in qualitative assessments of patient data.
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spelling pubmed-83621472021-08-17 Evaluation of novel AI‐based extended field‐of‐view CT reconstructions Fonseca, Gabriel Paiva Baer‐Beck, Matthias Fournie, Eric Hofmann, Christian Rinaldi, Ilaria Ollers, Michel C van Elmpt, Wouter J.C. Verhaegen, Frank Med Phys DIAGNOSTIC IMAGING (IONIZING AND NON‐IONIZING) PURPOSE: Modern computed tomography (CT) scanners have an extended field‐of‐view (eFoV) for reconstructing images up to the bore size, which is relevant for patients with higher BMI or non‐isocentric positioning due to fixation devices. However, the accuracy of the image reconstruction in eFoV is not well known since truncated data are used. This study introduces a new deep learning‐based algorithm for extended field‐of‐view reconstruction and evaluates the accuracy of the eFoV reconstruction focusing on aspects relevant for radiotherapy. METHODS: A life‐size three‐dimensional (3D) printed thorax phantom, based on a patient CT for which eFoV was necessary, was manufactured and used as reference. The phantom has holes allowing the placement of tissue mimicking inserts used to evaluate the Hounsfield unit (HU) accuracy. CT images of the phantom were acquired using different configurations aiming to evaluate geometric and HU accuracy in the eFoV. Image reconstruction was performed using a state‐of‐the‐art reconstruction algorithm (HDFoV), commercially available, and the novel deep learning‐based approach (HDeepFoV). Five patient cases were selected to evaluate the performance of both algorithms on patient data. There is no ground truth for patients so the reconstructions were qualitatively evaluated by five physicians and five medical physicists. RESULTS: The phantom geometry reconstructed with HDFoV showed boundary deviations from 1.0 to 2.5 cm depending on the volume of the phantom outside the regular scan field of view. HDeepFoV showed a superior performance regardless of the volume of the phantom within eFOV with a maximum boundary deviation below 1.0 cm. The maximum HU (absolute) difference for soft issue inserts is below 79 and 41 HU for HDFoV and HDeepFoV, respectively. HDeepFoV has a maximum deviation of −18 HU for an inhaled lung insert while HDFoV reached a 229 HU difference. The qualitative evaluation of patient cases shows that the novel deep learning approach produces images that look more realistic and have fewer artifacts. CONCLUSION: To be able to reconstruct images outside the sFoV of the CT scanner there is no alternative than to use some kind of extrapolated data. In our study, we proposed and investigated a new deep learning‐based algorithm and compared it to a commercial solution for eFoV reconstruction. The deep learning‐based algorithm showed superior performance in quantitative evaluations based on phantom data and in qualitative assessments of patient data. John Wiley and Sons Inc. 2021-05-31 2021-07 /pmc/articles/PMC8362147/ /pubmed/33978240 http://dx.doi.org/10.1002/mp.14937 Text en © 2021 The Authors. Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle DIAGNOSTIC IMAGING (IONIZING AND NON‐IONIZING)
Fonseca, Gabriel Paiva
Baer‐Beck, Matthias
Fournie, Eric
Hofmann, Christian
Rinaldi, Ilaria
Ollers, Michel C
van Elmpt, Wouter J.C.
Verhaegen, Frank
Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title_full Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title_fullStr Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title_full_unstemmed Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title_short Evaluation of novel AI‐based extended field‐of‐view CT reconstructions
title_sort evaluation of novel ai‐based extended field‐of‐view ct reconstructions
topic DIAGNOSTIC IMAGING (IONIZING AND NON‐IONIZING)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8362147/
https://www.ncbi.nlm.nih.gov/pubmed/33978240
http://dx.doi.org/10.1002/mp.14937
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