Cargando…

Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study

BACKGROUND: Over half a million individuals are diagnosed with head and neck cancer each year globally. Radiotherapy is an important curative treatment for this disease, but it requires manual time to delineate radiosensitive organs at risk. This planning process can delay treatment while also intro...

Descripción completa

Detalles Bibliográficos
Autores principales: Nikolov, Stanislav, Blackwell, Sam, Zverovitch, Alexei, Mendes, Ruheena, Livne, Michelle, De Fauw, Jeffrey, Patel, Yojan, Meyer, Clemens, Askham, Harry, Romera-Paredes, Bernadino, Kelly, Christopher, Karthikesalingam, Alan, Chu, Carlton, Carnell, Dawn, Boon, Cheng, D'Souza, Derek, Moinuddin, Syed Ali, Garie, Bethany, McQuinlan, Yasmin, Ireland, Sarah, Hampton, Kiarna, Fuller, Krystle, Montgomery, Hugh, Rees, Geraint, Suleyman, Mustafa, Back, Trevor, Hughes, Cían Owen, Ledsam, Joseph R, Ronneberger, Olaf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8314151/
https://www.ncbi.nlm.nih.gov/pubmed/34255661
http://dx.doi.org/10.2196/26151
_version_ 1783729489791942656
author Nikolov, Stanislav
Blackwell, Sam
Zverovitch, Alexei
Mendes, Ruheena
Livne, Michelle
De Fauw, Jeffrey
Patel, Yojan
Meyer, Clemens
Askham, Harry
Romera-Paredes, Bernadino
Kelly, Christopher
Karthikesalingam, Alan
Chu, Carlton
Carnell, Dawn
Boon, Cheng
D'Souza, Derek
Moinuddin, Syed Ali
Garie, Bethany
McQuinlan, Yasmin
Ireland, Sarah
Hampton, Kiarna
Fuller, Krystle
Montgomery, Hugh
Rees, Geraint
Suleyman, Mustafa
Back, Trevor
Hughes, Cían Owen
Ledsam, Joseph R
Ronneberger, Olaf
author_facet Nikolov, Stanislav
Blackwell, Sam
Zverovitch, Alexei
Mendes, Ruheena
Livne, Michelle
De Fauw, Jeffrey
Patel, Yojan
Meyer, Clemens
Askham, Harry
Romera-Paredes, Bernadino
Kelly, Christopher
Karthikesalingam, Alan
Chu, Carlton
Carnell, Dawn
Boon, Cheng
D'Souza, Derek
Moinuddin, Syed Ali
Garie, Bethany
McQuinlan, Yasmin
Ireland, Sarah
Hampton, Kiarna
Fuller, Krystle
Montgomery, Hugh
Rees, Geraint
Suleyman, Mustafa
Back, Trevor
Hughes, Cían Owen
Ledsam, Joseph R
Ronneberger, Olaf
author_sort Nikolov, Stanislav
collection PubMed
description BACKGROUND: Over half a million individuals are diagnosed with head and neck cancer each year globally. Radiotherapy is an important curative treatment for this disease, but it requires manual time to delineate radiosensitive organs at risk. This planning process can delay treatment while also introducing interoperator variability, resulting in downstream radiation dose differences. Although auto-segmentation algorithms offer a potentially time-saving solution, the challenges in defining, quantifying, and achieving expert performance remain. OBJECTIVE: Adopting a deep learning approach, we aim to demonstrate a 3D U-Net architecture that achieves expert-level performance in delineating 21 distinct head and neck organs at risk commonly segmented in clinical practice. METHODS: The model was trained on a data set of 663 deidentified computed tomography scans acquired in routine clinical practice and with both segmentations taken from clinical practice and segmentations created by experienced radiographers as part of this research, all in accordance with consensus organ at risk definitions. RESULTS: We demonstrated the model’s clinical applicability by assessing its performance on a test set of 21 computed tomography scans from clinical practice, each with 21 organs at risk segmented by 2 independent experts. We also introduced surface Dice similarity coefficient, a new metric for the comparison of organ delineation, to quantify the deviation between organ at risk surface contours rather than volumes, better reflecting the clinical task of correcting errors in automated organ segmentations. The model’s generalizability was then demonstrated on 2 distinct open-source data sets, reflecting different centers and countries to model training. CONCLUSIONS: Deep learning is an effective and clinically applicable technique for the segmentation of the head and neck anatomy for radiotherapy. With appropriate validation studies and regulatory approvals, this system could improve the efficiency, consistency, and safety of radiotherapy pathways.
format Online
Article
Text
id pubmed-8314151
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-83141512021-08-11 Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study Nikolov, Stanislav Blackwell, Sam Zverovitch, Alexei Mendes, Ruheena Livne, Michelle De Fauw, Jeffrey Patel, Yojan Meyer, Clemens Askham, Harry Romera-Paredes, Bernadino Kelly, Christopher Karthikesalingam, Alan Chu, Carlton Carnell, Dawn Boon, Cheng D'Souza, Derek Moinuddin, Syed Ali Garie, Bethany McQuinlan, Yasmin Ireland, Sarah Hampton, Kiarna Fuller, Krystle Montgomery, Hugh Rees, Geraint Suleyman, Mustafa Back, Trevor Hughes, Cían Owen Ledsam, Joseph R Ronneberger, Olaf J Med Internet Res Original Paper BACKGROUND: Over half a million individuals are diagnosed with head and neck cancer each year globally. Radiotherapy is an important curative treatment for this disease, but it requires manual time to delineate radiosensitive organs at risk. This planning process can delay treatment while also introducing interoperator variability, resulting in downstream radiation dose differences. Although auto-segmentation algorithms offer a potentially time-saving solution, the challenges in defining, quantifying, and achieving expert performance remain. OBJECTIVE: Adopting a deep learning approach, we aim to demonstrate a 3D U-Net architecture that achieves expert-level performance in delineating 21 distinct head and neck organs at risk commonly segmented in clinical practice. METHODS: The model was trained on a data set of 663 deidentified computed tomography scans acquired in routine clinical practice and with both segmentations taken from clinical practice and segmentations created by experienced radiographers as part of this research, all in accordance with consensus organ at risk definitions. RESULTS: We demonstrated the model’s clinical applicability by assessing its performance on a test set of 21 computed tomography scans from clinical practice, each with 21 organs at risk segmented by 2 independent experts. We also introduced surface Dice similarity coefficient, a new metric for the comparison of organ delineation, to quantify the deviation between organ at risk surface contours rather than volumes, better reflecting the clinical task of correcting errors in automated organ segmentations. The model’s generalizability was then demonstrated on 2 distinct open-source data sets, reflecting different centers and countries to model training. CONCLUSIONS: Deep learning is an effective and clinically applicable technique for the segmentation of the head and neck anatomy for radiotherapy. With appropriate validation studies and regulatory approvals, this system could improve the efficiency, consistency, and safety of radiotherapy pathways. JMIR Publications 2021-07-12 /pmc/articles/PMC8314151/ /pubmed/34255661 http://dx.doi.org/10.2196/26151 Text en ©Stanislav Nikolov, Sam Blackwell, Alexei Zverovitch, Ruheena Mendes, Michelle Livne, Jeffrey De Fauw, Yojan Patel, Clemens Meyer, Harry Askham, Bernadino Romera-Paredes, Christopher Kelly, Alan Karthikesalingam, Carlton Chu, Dawn Carnell, Cheng Boon, Derek D'Souza, Syed Ali Moinuddin, Bethany Garie, Yasmin McQuinlan, Sarah Ireland, Kiarna Hampton, Krystle Fuller, Hugh Montgomery, Geraint Rees, Mustafa Suleyman, Trevor Back, Cían Owen Hughes, Joseph R Ledsam, Olaf Ronneberger. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 12.07.2021. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Nikolov, Stanislav
Blackwell, Sam
Zverovitch, Alexei
Mendes, Ruheena
Livne, Michelle
De Fauw, Jeffrey
Patel, Yojan
Meyer, Clemens
Askham, Harry
Romera-Paredes, Bernadino
Kelly, Christopher
Karthikesalingam, Alan
Chu, Carlton
Carnell, Dawn
Boon, Cheng
D'Souza, Derek
Moinuddin, Syed Ali
Garie, Bethany
McQuinlan, Yasmin
Ireland, Sarah
Hampton, Kiarna
Fuller, Krystle
Montgomery, Hugh
Rees, Geraint
Suleyman, Mustafa
Back, Trevor
Hughes, Cían Owen
Ledsam, Joseph R
Ronneberger, Olaf
Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title_full Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title_fullStr Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title_full_unstemmed Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title_short Clinically Applicable Segmentation of Head and Neck Anatomy for Radiotherapy: Deep Learning Algorithm Development and Validation Study
title_sort clinically applicable segmentation of head and neck anatomy for radiotherapy: deep learning algorithm development and validation study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8314151/
https://www.ncbi.nlm.nih.gov/pubmed/34255661
http://dx.doi.org/10.2196/26151
work_keys_str_mv AT nikolovstanislav clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT blackwellsam clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT zverovitchalexei clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT mendesruheena clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT livnemichelle clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT defauwjeffrey clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT patelyojan clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT meyerclemens clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT askhamharry clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT romeraparedesbernadino clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT kellychristopher clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT karthikesalingamalan clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT chucarlton clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT carnelldawn clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT booncheng clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT dsouzaderek clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT moinuddinsyedali clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT gariebethany clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT mcquinlanyasmin clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT irelandsarah clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT hamptonkiarna clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT fullerkrystle clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT montgomeryhugh clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT reesgeraint clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT suleymanmustafa clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT backtrevor clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT hughescianowen clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT ledsamjosephr clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy
AT ronnebergerolaf clinicallyapplicablesegmentationofheadandneckanatomyforradiotherapydeeplearningalgorithmdevelopmentandvalidationstudy