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Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans

PURPOSE: To develop a deep network architecture that would achieve fully automated radiologist-level segmentation of cancers at breast MRI. MATERIALS AND METHODS: In this retrospective study, 38 229 examinations (composed of 64 063 individual breast scans from 14 475 patients) were performed in fema...

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Autores principales: Hirsch, Lukas, Huang, Yu, Luo, Shaojun, Rossi Saccarelli, Carolina, Lo Gullo, Roberto, Daimiel Naranjo, Isaac, Bitencourt, Almir G. V., Onishi, Natsuko, Ko, Eun Sook, Leithner, Doris, Avendano, Daly, Eskreis-Winkler, Sarah, Hughes, Mary, Martinez, Danny F., Pinker, Katja, Juluru, Krishna, El-Rowmeim, Amin E., Elnajjar, Pierre, Morris, Elizabeth A., Makse, Hernan A., Parra, Lucas C., Sutton, Elizabeth J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Radiological Society of North America 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8823456/
https://www.ncbi.nlm.nih.gov/pubmed/35146431
http://dx.doi.org/10.1148/ryai.200231
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author Hirsch, Lukas
Huang, Yu
Luo, Shaojun
Rossi Saccarelli, Carolina
Lo Gullo, Roberto
Daimiel Naranjo, Isaac
Bitencourt, Almir G. V.
Onishi, Natsuko
Ko, Eun Sook
Leithner, Doris
Avendano, Daly
Eskreis-Winkler, Sarah
Hughes, Mary
Martinez, Danny F.
Pinker, Katja
Juluru, Krishna
El-Rowmeim, Amin E.
Elnajjar, Pierre
Morris, Elizabeth A.
Makse, Hernan A.
Parra, Lucas C.
Sutton, Elizabeth J.
author_facet Hirsch, Lukas
Huang, Yu
Luo, Shaojun
Rossi Saccarelli, Carolina
Lo Gullo, Roberto
Daimiel Naranjo, Isaac
Bitencourt, Almir G. V.
Onishi, Natsuko
Ko, Eun Sook
Leithner, Doris
Avendano, Daly
Eskreis-Winkler, Sarah
Hughes, Mary
Martinez, Danny F.
Pinker, Katja
Juluru, Krishna
El-Rowmeim, Amin E.
Elnajjar, Pierre
Morris, Elizabeth A.
Makse, Hernan A.
Parra, Lucas C.
Sutton, Elizabeth J.
author_sort Hirsch, Lukas
collection PubMed
description PURPOSE: To develop a deep network architecture that would achieve fully automated radiologist-level segmentation of cancers at breast MRI. MATERIALS AND METHODS: In this retrospective study, 38 229 examinations (composed of 64 063 individual breast scans from 14 475 patients) were performed in female patients (age range, 12–94 years; mean age, 52 years ± 10 [standard deviation]) who presented between 2002 and 2014 at a single clinical site. A total of 2555 breast cancers were selected that had been segmented on two-dimensional (2D) images by radiologists, as well as 60 108 benign breasts that served as examples of noncancerous tissue; all these were used for model training. For testing, an additional 250 breast cancers were segmented independently on 2D images by four radiologists. Authors selected among several three-dimensional (3D) deep convolutional neural network architectures, input modalities, and harmonization methods. The outcome measure was the Dice score for 2D segmentation, which was compared between the network and radiologists by using the Wilcoxon signed rank test and the two one-sided test procedure. RESULTS: The highest-performing network on the training set was a 3D U-Net with dynamic contrast-enhanced MRI as input and with intensity normalized for each examination. In the test set, the median Dice score of this network was 0.77 (interquartile range, 0.26). The performance of the network was equivalent to that of the radiologists (two one-sided test procedures with radiologist performance of 0.69–0.84 as equivalence bounds, P < .001 for both; n = 250). CONCLUSION: When trained on a sufficiently large dataset, the developed 3D U-Net performed as well as fellowship-trained radiologists in detailed 2D segmentation of breast cancers at routine clinical MRI. Keywords: MRI, Breast, Segmentation, Supervised Learning, Convolutional Neural Network (CNN), Deep Learning Algorithms, Machine Learning Algorithms Published under a CC BY 4.0 license. Supplemental material is available for this article.
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spelling pubmed-88234562022-02-09 Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans Hirsch, Lukas Huang, Yu Luo, Shaojun Rossi Saccarelli, Carolina Lo Gullo, Roberto Daimiel Naranjo, Isaac Bitencourt, Almir G. V. Onishi, Natsuko Ko, Eun Sook Leithner, Doris Avendano, Daly Eskreis-Winkler, Sarah Hughes, Mary Martinez, Danny F. Pinker, Katja Juluru, Krishna El-Rowmeim, Amin E. Elnajjar, Pierre Morris, Elizabeth A. Makse, Hernan A. Parra, Lucas C. Sutton, Elizabeth J. Radiol Artif Intell Original Research PURPOSE: To develop a deep network architecture that would achieve fully automated radiologist-level segmentation of cancers at breast MRI. MATERIALS AND METHODS: In this retrospective study, 38 229 examinations (composed of 64 063 individual breast scans from 14 475 patients) were performed in female patients (age range, 12–94 years; mean age, 52 years ± 10 [standard deviation]) who presented between 2002 and 2014 at a single clinical site. A total of 2555 breast cancers were selected that had been segmented on two-dimensional (2D) images by radiologists, as well as 60 108 benign breasts that served as examples of noncancerous tissue; all these were used for model training. For testing, an additional 250 breast cancers were segmented independently on 2D images by four radiologists. Authors selected among several three-dimensional (3D) deep convolutional neural network architectures, input modalities, and harmonization methods. The outcome measure was the Dice score for 2D segmentation, which was compared between the network and radiologists by using the Wilcoxon signed rank test and the two one-sided test procedure. RESULTS: The highest-performing network on the training set was a 3D U-Net with dynamic contrast-enhanced MRI as input and with intensity normalized for each examination. In the test set, the median Dice score of this network was 0.77 (interquartile range, 0.26). The performance of the network was equivalent to that of the radiologists (two one-sided test procedures with radiologist performance of 0.69–0.84 as equivalence bounds, P < .001 for both; n = 250). CONCLUSION: When trained on a sufficiently large dataset, the developed 3D U-Net performed as well as fellowship-trained radiologists in detailed 2D segmentation of breast cancers at routine clinical MRI. Keywords: MRI, Breast, Segmentation, Supervised Learning, Convolutional Neural Network (CNN), Deep Learning Algorithms, Machine Learning Algorithms Published under a CC BY 4.0 license. Supplemental material is available for this article. Radiological Society of North America 2021-12-15 /pmc/articles/PMC8823456/ /pubmed/35146431 http://dx.doi.org/10.1148/ryai.200231 Text en 2022 by the Radiological Society of North America, Inc. https://creativecommons.org/licenses/by/4.0/Published under a (https://creativecommons.org/licenses/by/4.0/) CC BY 4.0 license.
spellingShingle Original Research
Hirsch, Lukas
Huang, Yu
Luo, Shaojun
Rossi Saccarelli, Carolina
Lo Gullo, Roberto
Daimiel Naranjo, Isaac
Bitencourt, Almir G. V.
Onishi, Natsuko
Ko, Eun Sook
Leithner, Doris
Avendano, Daly
Eskreis-Winkler, Sarah
Hughes, Mary
Martinez, Danny F.
Pinker, Katja
Juluru, Krishna
El-Rowmeim, Amin E.
Elnajjar, Pierre
Morris, Elizabeth A.
Makse, Hernan A.
Parra, Lucas C.
Sutton, Elizabeth J.
Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title_full Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title_fullStr Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title_full_unstemmed Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title_short Radiologist-Level Performance by Using Deep Learning for Segmentation of Breast Cancers on MRI Scans
title_sort radiologist-level performance by using deep learning for segmentation of breast cancers on mri scans
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8823456/
https://www.ncbi.nlm.nih.gov/pubmed/35146431
http://dx.doi.org/10.1148/ryai.200231
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