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Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer

Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrictor, middle constrictor, inferior constrictor, and larynx in comparison with a traditional multi-atlas-based method. Methods and Materials: One hundred and five computed tomography image datasets from...

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Autores principales: Li, Yimin, Rao, Shyam, Chen, Wen, Azghadi, Soheila F., Nguyen, Ky Nam Bao, Moran, Angel, Usera, Brittni M, Dyer, Brandon A, Shang, Lu, Chen, Quan, Rong, Yi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9340321/
https://www.ncbi.nlm.nih.gov/pubmed/35790457
http://dx.doi.org/10.1177/15330338221105724
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author Li, Yimin
Rao, Shyam
Chen, Wen
Azghadi, Soheila F.
Nguyen, Ky Nam Bao
Moran, Angel
Usera, Brittni M
Dyer, Brandon A
Shang, Lu
Chen, Quan
Rong, Yi
author_facet Li, Yimin
Rao, Shyam
Chen, Wen
Azghadi, Soheila F.
Nguyen, Ky Nam Bao
Moran, Angel
Usera, Brittni M
Dyer, Brandon A
Shang, Lu
Chen, Quan
Rong, Yi
author_sort Li, Yimin
collection PubMed
description Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrictor, middle constrictor, inferior constrictor, and larynx in comparison with a traditional multi-atlas-based method. Methods and Materials: One hundred and five computed tomography image datasets from 83 head and neck cancer patients were retrospectively collected and the superior constrictor, middle constrictor, inferior constrictor, and larynx were analyzed for deep-learning versus multi-atlas-based segmentation. Eighty-three computed tomography images (40 diagnostic computed tomography and 43 planning computed tomography) were used for training the convolutional neural network, and for atlas-based model training. The remaining 22 computed tomography datasets were used for validation of the atlas-based auto-segmentation versus deep-learning-based auto-segmentation contours, both of which were compared with the corresponding manual contours. Quantitative measures included Dice similarity coefficient, recall, precision, Hausdorff distance, 95th percentile of Hausdorff distance, and mean surface distance. Dosimetric differences between the auto-generated contours and manual contours were evaluated. Subjective evaluation was obtained from 3 clinical observers to blindly score the autosegmented structures based on the percentage of slices that require manual modification. Results: The deep-learning-based auto-segmentation versus atlas-based auto-segmentation results were compared for the superior constrictor, middle constrictor, inferior constrictor, and larynx. The mean Dice similarity coefficient values for the 4 structures were 0.67, 0.60, 0.65, and 0.84 for deep-learning-based auto-segmentation, whereas atlas-based auto-segmentation has Dice similarity coefficient results at 0.45, 0.36, 0.50, and 0.70, respectively. The mean 95th percentile of Hausdorff distance (cm) for the 4 structures were 0.41, 0.57, 0.59, and 0.54 for deep-learning-based auto-segmentation, but 0.78, 0.95, 0.96, and 1.23 for atlas-based auto-segmentation results, respectively. Similar mean dose differences were obtained from the 2 sets of autosegmented contours compared to manual contours. The dose–volume discrepancies and the average modification rates were higher with the atlas-based auto-segmentation contours. Conclusion: Swallowing-related structures are more accurately generated with DL-based versus atlas-based segmentation when compared with manual contours.
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spelling pubmed-93403212022-08-02 Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer Li, Yimin Rao, Shyam Chen, Wen Azghadi, Soheila F. Nguyen, Ky Nam Bao Moran, Angel Usera, Brittni M Dyer, Brandon A Shang, Lu Chen, Quan Rong, Yi Technol Cancer Res Treat Original Article Purpose: To evaluate the accuracy of deep-learning-based auto-segmentation of the superior constrictor, middle constrictor, inferior constrictor, and larynx in comparison with a traditional multi-atlas-based method. Methods and Materials: One hundred and five computed tomography image datasets from 83 head and neck cancer patients were retrospectively collected and the superior constrictor, middle constrictor, inferior constrictor, and larynx were analyzed for deep-learning versus multi-atlas-based segmentation. Eighty-three computed tomography images (40 diagnostic computed tomography and 43 planning computed tomography) were used for training the convolutional neural network, and for atlas-based model training. The remaining 22 computed tomography datasets were used for validation of the atlas-based auto-segmentation versus deep-learning-based auto-segmentation contours, both of which were compared with the corresponding manual contours. Quantitative measures included Dice similarity coefficient, recall, precision, Hausdorff distance, 95th percentile of Hausdorff distance, and mean surface distance. Dosimetric differences between the auto-generated contours and manual contours were evaluated. Subjective evaluation was obtained from 3 clinical observers to blindly score the autosegmented structures based on the percentage of slices that require manual modification. Results: The deep-learning-based auto-segmentation versus atlas-based auto-segmentation results were compared for the superior constrictor, middle constrictor, inferior constrictor, and larynx. The mean Dice similarity coefficient values for the 4 structures were 0.67, 0.60, 0.65, and 0.84 for deep-learning-based auto-segmentation, whereas atlas-based auto-segmentation has Dice similarity coefficient results at 0.45, 0.36, 0.50, and 0.70, respectively. The mean 95th percentile of Hausdorff distance (cm) for the 4 structures were 0.41, 0.57, 0.59, and 0.54 for deep-learning-based auto-segmentation, but 0.78, 0.95, 0.96, and 1.23 for atlas-based auto-segmentation results, respectively. Similar mean dose differences were obtained from the 2 sets of autosegmented contours compared to manual contours. The dose–volume discrepancies and the average modification rates were higher with the atlas-based auto-segmentation contours. Conclusion: Swallowing-related structures are more accurately generated with DL-based versus atlas-based segmentation when compared with manual contours. SAGE Publications 2022-07-05 /pmc/articles/PMC9340321/ /pubmed/35790457 http://dx.doi.org/10.1177/15330338221105724 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by-nc/4.0/This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Article
Li, Yimin
Rao, Shyam
Chen, Wen
Azghadi, Soheila F.
Nguyen, Ky Nam Bao
Moran, Angel
Usera, Brittni M
Dyer, Brandon A
Shang, Lu
Chen, Quan
Rong, Yi
Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title_full Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title_fullStr Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title_full_unstemmed Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title_short Evaluating Automatic Segmentation for Swallowing-Related Organs for Head and Neck Cancer
title_sort evaluating automatic segmentation for swallowing-related organs for head and neck cancer
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9340321/
https://www.ncbi.nlm.nih.gov/pubmed/35790457
http://dx.doi.org/10.1177/15330338221105724
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