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Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT

PURPOSE: Selective internal radiation therapy (SIRT) requires a good liver registration of multi-modality images to obtain precise dose prediction and measurement. This study investigated the feasibility of liver registration of CT and MR images, guided by segmentation of the liver and its landmarks...

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Autores principales: Tang, Xikai, Jafargholi Rangraz, Esmaeel, Heeren, Richard’s, Coudyzer, Walter, Maleux, Geert, Baete, Kristof, Verslype, Chris, Gooding, Mark J., Deroose, Christophe M., Nuyts, Johan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8790002/
https://www.ncbi.nlm.nih.gov/pubmed/35076801
http://dx.doi.org/10.1186/s40658-022-00432-8
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author Tang, Xikai
Jafargholi Rangraz, Esmaeel
Heeren, Richard’s
Coudyzer, Walter
Maleux, Geert
Baete, Kristof
Verslype, Chris
Gooding, Mark J.
Deroose, Christophe M.
Nuyts, Johan
author_facet Tang, Xikai
Jafargholi Rangraz, Esmaeel
Heeren, Richard’s
Coudyzer, Walter
Maleux, Geert
Baete, Kristof
Verslype, Chris
Gooding, Mark J.
Deroose, Christophe M.
Nuyts, Johan
author_sort Tang, Xikai
collection PubMed
description PURPOSE: Selective internal radiation therapy (SIRT) requires a good liver registration of multi-modality images to obtain precise dose prediction and measurement. This study investigated the feasibility of liver registration of CT and MR images, guided by segmentation of the liver and its landmarks. The influence of the resulting lesion registration on dose estimation was evaluated. METHODS: The liver segmentation was done with a convolutional neural network (CNN), and the landmarks were segmented manually. Our image-based registration software and its liver-segmentation-guided extension (CNN-guided) were tuned and evaluated with 49 CT and 26 MR images from 20 SIRT patients. Each liver registration was evaluated by the root mean square distance (RMSD) of mean surface distance between manually delineated liver contours and mass center distance between manually delineated landmarks (lesions, clips, etc.). The root mean square of RMSDs (RRMSD) was used to evaluate all liver registrations. The CNN-guided registration was further extended by incorporating landmark segmentations (CNN&LM-guided) to assess the value of additional landmark guidance. To evaluate the influence of segmentation-guided registration on dose estimation, mean dose and volume percentages receiving at least 70 Gy (V70) estimated on the (99m)Tc-labeled macro-aggregated albumin ((99m)Tc-MAA) SPECT were computed, either based on lesions from the reference (99m)Tc-MAA CT (reference lesions) or from the registered floating CT or MR images (registered lesions) using the CNN- or CNN&LM-guided algorithms. RESULTS: The RRMSD decreased for the floating CTs and MRs by 1.0 mm (11%) and 3.4 mm (34%) using CNN guidance for the image-based registration and by 2.1 mm (26%) and 1.4 mm (21%) using landmark guidance for the CNN-guided registration. The quartiles for the relative mean dose difference (the V70 difference) between the reference and registered lesions and their correlations [25th, 75th; r] are as follows: [− 5.5% (− 1.3%), 5.6% (3.4%); 0.97 (0.95)] and [− 12.3% (− 2.1%), 14.8% (2.9%); 0.96 (0.97)] for the CNN&LM- and CNN-guided CT to CT registrations, [− 7.7% (− 6.6%), 7.0% (3.1%); 0.97 (0.90)] and [− 15.1% (− 11.3%), 2.4% (2.5%); 0.91 (0.78)] for the CNN&LM- and CNN-guided MR to CT registrations. CONCLUSION: Guidance by CNN liver segmentations and landmarks markedly improves the performance of the image-based registration. The small mean dose change between the reference and registered lesions demonstrates the feasibility of applying the CNN&LM- or CNN-guided registration to volume-level dose prediction. The CNN&LM- and CNN-guided registrations for CTs can be applied to voxel-level dose prediction according to their small V70 change for most lesions. The CNN-guided MR to CT registration still needs to incorporate landmark guidance for smaller change of voxel-level dose estimation.
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spelling pubmed-87900022022-02-02 Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT Tang, Xikai Jafargholi Rangraz, Esmaeel Heeren, Richard’s Coudyzer, Walter Maleux, Geert Baete, Kristof Verslype, Chris Gooding, Mark J. Deroose, Christophe M. Nuyts, Johan EJNMMI Phys Original Research PURPOSE: Selective internal radiation therapy (SIRT) requires a good liver registration of multi-modality images to obtain precise dose prediction and measurement. This study investigated the feasibility of liver registration of CT and MR images, guided by segmentation of the liver and its landmarks. The influence of the resulting lesion registration on dose estimation was evaluated. METHODS: The liver segmentation was done with a convolutional neural network (CNN), and the landmarks were segmented manually. Our image-based registration software and its liver-segmentation-guided extension (CNN-guided) were tuned and evaluated with 49 CT and 26 MR images from 20 SIRT patients. Each liver registration was evaluated by the root mean square distance (RMSD) of mean surface distance between manually delineated liver contours and mass center distance between manually delineated landmarks (lesions, clips, etc.). The root mean square of RMSDs (RRMSD) was used to evaluate all liver registrations. The CNN-guided registration was further extended by incorporating landmark segmentations (CNN&LM-guided) to assess the value of additional landmark guidance. To evaluate the influence of segmentation-guided registration on dose estimation, mean dose and volume percentages receiving at least 70 Gy (V70) estimated on the (99m)Tc-labeled macro-aggregated albumin ((99m)Tc-MAA) SPECT were computed, either based on lesions from the reference (99m)Tc-MAA CT (reference lesions) or from the registered floating CT or MR images (registered lesions) using the CNN- or CNN&LM-guided algorithms. RESULTS: The RRMSD decreased for the floating CTs and MRs by 1.0 mm (11%) and 3.4 mm (34%) using CNN guidance for the image-based registration and by 2.1 mm (26%) and 1.4 mm (21%) using landmark guidance for the CNN-guided registration. The quartiles for the relative mean dose difference (the V70 difference) between the reference and registered lesions and their correlations [25th, 75th; r] are as follows: [− 5.5% (− 1.3%), 5.6% (3.4%); 0.97 (0.95)] and [− 12.3% (− 2.1%), 14.8% (2.9%); 0.96 (0.97)] for the CNN&LM- and CNN-guided CT to CT registrations, [− 7.7% (− 6.6%), 7.0% (3.1%); 0.97 (0.90)] and [− 15.1% (− 11.3%), 2.4% (2.5%); 0.91 (0.78)] for the CNN&LM- and CNN-guided MR to CT registrations. CONCLUSION: Guidance by CNN liver segmentations and landmarks markedly improves the performance of the image-based registration. The small mean dose change between the reference and registered lesions demonstrates the feasibility of applying the CNN&LM- or CNN-guided registration to volume-level dose prediction. The CNN&LM- and CNN-guided registrations for CTs can be applied to voxel-level dose prediction according to their small V70 change for most lesions. The CNN-guided MR to CT registration still needs to incorporate landmark guidance for smaller change of voxel-level dose estimation. Springer International Publishing 2022-01-25 /pmc/articles/PMC8790002/ /pubmed/35076801 http://dx.doi.org/10.1186/s40658-022-00432-8 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Research
Tang, Xikai
Jafargholi Rangraz, Esmaeel
Heeren, Richard’s
Coudyzer, Walter
Maleux, Geert
Baete, Kristof
Verslype, Chris
Gooding, Mark J.
Deroose, Christophe M.
Nuyts, Johan
Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title_full Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title_fullStr Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title_full_unstemmed Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title_short Segmentation-guided multi-modal registration of liver images for dose estimation in SIRT
title_sort segmentation-guided multi-modal registration of liver images for dose estimation in sirt
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8790002/
https://www.ncbi.nlm.nih.gov/pubmed/35076801
http://dx.doi.org/10.1186/s40658-022-00432-8
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