Cargando…

Automatic detection of contouring errors using convolutional neural networks

PURPOSE: To develop a head and neck normal structures autocontouring tool that could be used to automatically detect the errors in autocontours from a clinically validated autocontouring tool. METHODS: An autocontouring tool based on convolutional neural networks (CNN) was developed for 16 normal st...

Descripción completa

Detalles Bibliográficos
Autores principales: Rhee, Dong Joo, Cardenas, Carlos E., Elhalawani, Hesham, McCarroll, Rachel, Zhang, Lifei, Yang, Jinzhong, Garden, Adam S., Peterson, Christine B., Beadle, Beth M., Court, Laurence E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6842055/
https://www.ncbi.nlm.nih.gov/pubmed/31505046
http://dx.doi.org/10.1002/mp.13814
_version_ 1783467984102096896
author Rhee, Dong Joo
Cardenas, Carlos E.
Elhalawani, Hesham
McCarroll, Rachel
Zhang, Lifei
Yang, Jinzhong
Garden, Adam S.
Peterson, Christine B.
Beadle, Beth M.
Court, Laurence E.
author_facet Rhee, Dong Joo
Cardenas, Carlos E.
Elhalawani, Hesham
McCarroll, Rachel
Zhang, Lifei
Yang, Jinzhong
Garden, Adam S.
Peterson, Christine B.
Beadle, Beth M.
Court, Laurence E.
author_sort Rhee, Dong Joo
collection PubMed
description PURPOSE: To develop a head and neck normal structures autocontouring tool that could be used to automatically detect the errors in autocontours from a clinically validated autocontouring tool. METHODS: An autocontouring tool based on convolutional neural networks (CNN) was developed for 16 normal structures of the head and neck and tested to identify the contour errors from a clinically validated multiatlas‐based autocontouring system (MACS). The computed tomography (CT) scans and clinical contours from 3495 patients were semiautomatically curated and used to train and validate the CNN‐based autocontouring tool. The final accuracy of the tool was evaluated by calculating the Sørensen–Dice similarity coefficients (DSC) and Hausdorff distances between the automatically generated contours and physician‐drawn contours on 174 internal and 24 external CT scans. Lastly, the CNN‐based tool was evaluated on 60 patients' CT scans to investigate the possibility to detect contouring failures. The contouring failures on these patients were classified as either minor or major errors. The criteria to detect contouring errors were determined by analyzing the DSC between the CNN‐ and MACS‐based contours under two independent scenarios: (a) contours with minor errors are clinically acceptable and (b) contours with minor errors are clinically unacceptable. RESULTS: The average DSC and Hausdorff distance of our CNN‐based tool was 98.4%/1.23 cm for brain, 89.1%/0.42 cm for eyes, 86.8%/1.28 cm for mandible, 86.4%/0.88 cm for brainstem, 83.4%/0.71 cm for spinal cord, 82.7%/1.37 cm for parotids, 80.7%/1.08 cm for esophagus, 71.7%/0.39 cm for lenses, 68.6%/0.72 for optic nerves, 66.4%/0.46 cm for cochleas, and 40.7%/0.96 cm for optic chiasm. With the error detection tool, the proportions of the clinically unacceptable MACS contours that were correctly detected were 0.99/0.80 on average except for the optic chiasm, when contours with minor errors are clinically acceptable/unacceptable, respectively. The proportions of the clinically acceptable MACS contours that were correctly detected were 0.81/0.60 on average except for the optic chiasm, when contours with minor errors are clinically acceptable/unacceptable, respectively. CONCLUSION: Our CNN‐based autocontouring tool performed well on both the publically available and the internal datasets. Furthermore, our results show that CNN‐based algorithms are able to identify ill‐defined contours from a clinically validated and used multiatlas‐based autocontouring tool. Therefore, our CNN‐based tool can effectively perform automatic verification of MACS contours.
format Online
Article
Text
id pubmed-6842055
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-68420552019-12-19 Automatic detection of contouring errors using convolutional neural networks Rhee, Dong Joo Cardenas, Carlos E. Elhalawani, Hesham McCarroll, Rachel Zhang, Lifei Yang, Jinzhong Garden, Adam S. Peterson, Christine B. Beadle, Beth M. Court, Laurence E. Med Phys QUANTITATIVE IMAGING AND IMAGE PROCESSING PURPOSE: To develop a head and neck normal structures autocontouring tool that could be used to automatically detect the errors in autocontours from a clinically validated autocontouring tool. METHODS: An autocontouring tool based on convolutional neural networks (CNN) was developed for 16 normal structures of the head and neck and tested to identify the contour errors from a clinically validated multiatlas‐based autocontouring system (MACS). The computed tomography (CT) scans and clinical contours from 3495 patients were semiautomatically curated and used to train and validate the CNN‐based autocontouring tool. The final accuracy of the tool was evaluated by calculating the Sørensen–Dice similarity coefficients (DSC) and Hausdorff distances between the automatically generated contours and physician‐drawn contours on 174 internal and 24 external CT scans. Lastly, the CNN‐based tool was evaluated on 60 patients' CT scans to investigate the possibility to detect contouring failures. The contouring failures on these patients were classified as either minor or major errors. The criteria to detect contouring errors were determined by analyzing the DSC between the CNN‐ and MACS‐based contours under two independent scenarios: (a) contours with minor errors are clinically acceptable and (b) contours with minor errors are clinically unacceptable. RESULTS: The average DSC and Hausdorff distance of our CNN‐based tool was 98.4%/1.23 cm for brain, 89.1%/0.42 cm for eyes, 86.8%/1.28 cm for mandible, 86.4%/0.88 cm for brainstem, 83.4%/0.71 cm for spinal cord, 82.7%/1.37 cm for parotids, 80.7%/1.08 cm for esophagus, 71.7%/0.39 cm for lenses, 68.6%/0.72 for optic nerves, 66.4%/0.46 cm for cochleas, and 40.7%/0.96 cm for optic chiasm. With the error detection tool, the proportions of the clinically unacceptable MACS contours that were correctly detected were 0.99/0.80 on average except for the optic chiasm, when contours with minor errors are clinically acceptable/unacceptable, respectively. The proportions of the clinically acceptable MACS contours that were correctly detected were 0.81/0.60 on average except for the optic chiasm, when contours with minor errors are clinically acceptable/unacceptable, respectively. CONCLUSION: Our CNN‐based autocontouring tool performed well on both the publically available and the internal datasets. Furthermore, our results show that CNN‐based algorithms are able to identify ill‐defined contours from a clinically validated and used multiatlas‐based autocontouring tool. Therefore, our CNN‐based tool can effectively perform automatic verification of MACS contours. John Wiley and Sons Inc. 2019-09-26 2019-11 /pmc/articles/PMC6842055/ /pubmed/31505046 http://dx.doi.org/10.1002/mp.13814 Text en © 2019 The Authors. Medical Physics published by Wiley Periodicals, Inc. on behalf of American Association of Physicists in Medicine. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle QUANTITATIVE IMAGING AND IMAGE PROCESSING
Rhee, Dong Joo
Cardenas, Carlos E.
Elhalawani, Hesham
McCarroll, Rachel
Zhang, Lifei
Yang, Jinzhong
Garden, Adam S.
Peterson, Christine B.
Beadle, Beth M.
Court, Laurence E.
Automatic detection of contouring errors using convolutional neural networks
title Automatic detection of contouring errors using convolutional neural networks
title_full Automatic detection of contouring errors using convolutional neural networks
title_fullStr Automatic detection of contouring errors using convolutional neural networks
title_full_unstemmed Automatic detection of contouring errors using convolutional neural networks
title_short Automatic detection of contouring errors using convolutional neural networks
title_sort automatic detection of contouring errors using convolutional neural networks
topic QUANTITATIVE IMAGING AND IMAGE PROCESSING
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6842055/
https://www.ncbi.nlm.nih.gov/pubmed/31505046
http://dx.doi.org/10.1002/mp.13814
work_keys_str_mv AT rheedongjoo automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT cardenascarlose automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT elhalawanihesham automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT mccarrollrachel automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT zhanglifei automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT yangjinzhong automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT gardenadams automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT petersonchristineb automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT beadlebethm automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks
AT courtlaurencee automaticdetectionofcontouringerrorsusingconvolutionalneuralnetworks