Cargando…

Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening

We present a deep convolutional neural network for breast cancer screening exam classification, trained, and evaluated on over 200 000 exams (over 1 000 000 images). Our network achieves an AUC of 0.895 in predicting the presence of cancer in the breast, when tested on the screening population. We a...

Descripción completa

Detalles Bibliográficos
Autores principales: Wu, Nan, Phang, Jason, Park, Jungkyu, Shen, Yiqiu, Huang, Zhe, Zorin, Masha, Jastrzębski, Stanisław, Févry, Thibault, Katsnelson, Joe, Kim, Eric, Wolfson, Stacey, Parikh, Ujas, Gaddam, Sushma, Lin, Leng Leng Young, Ho, Kara, Weinstein, Joshua D., Reig, Beatriu, Gao, Yiming, Toth, Hildegard, Pysarenko, Kristine, Lewin, Alana, Lee, Jiyon, Airola, Krystal, Mema, Eralda, Chung, Stephanie, Hwang, Esther, Samreen, Naziya, Kim, S. Gene, Heacock, Laura, Moy, Linda, Cho, Kyunghyun, Geras, Krzysztof J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7427471/
https://www.ncbi.nlm.nih.gov/pubmed/31603772
http://dx.doi.org/10.1109/TMI.2019.2945514
_version_ 1783570884072570880
author Wu, Nan
Phang, Jason
Park, Jungkyu
Shen, Yiqiu
Huang, Zhe
Zorin, Masha
Jastrzębski, Stanisław
Févry, Thibault
Katsnelson, Joe
Kim, Eric
Wolfson, Stacey
Parikh, Ujas
Gaddam, Sushma
Lin, Leng Leng Young
Ho, Kara
Weinstein, Joshua D.
Reig, Beatriu
Gao, Yiming
Toth, Hildegard
Pysarenko, Kristine
Lewin, Alana
Lee, Jiyon
Airola, Krystal
Mema, Eralda
Chung, Stephanie
Hwang, Esther
Samreen, Naziya
Kim, S. Gene
Heacock, Laura
Moy, Linda
Cho, Kyunghyun
Geras, Krzysztof J.
author_facet Wu, Nan
Phang, Jason
Park, Jungkyu
Shen, Yiqiu
Huang, Zhe
Zorin, Masha
Jastrzębski, Stanisław
Févry, Thibault
Katsnelson, Joe
Kim, Eric
Wolfson, Stacey
Parikh, Ujas
Gaddam, Sushma
Lin, Leng Leng Young
Ho, Kara
Weinstein, Joshua D.
Reig, Beatriu
Gao, Yiming
Toth, Hildegard
Pysarenko, Kristine
Lewin, Alana
Lee, Jiyon
Airola, Krystal
Mema, Eralda
Chung, Stephanie
Hwang, Esther
Samreen, Naziya
Kim, S. Gene
Heacock, Laura
Moy, Linda
Cho, Kyunghyun
Geras, Krzysztof J.
author_sort Wu, Nan
collection PubMed
description We present a deep convolutional neural network for breast cancer screening exam classification, trained, and evaluated on over 200 000 exams (over 1 000 000 images). Our network achieves an AUC of 0.895 in predicting the presence of cancer in the breast, when tested on the screening population. We attribute the high accuracy to a few technical advances. 1) Our network’s novel two-stage architecture and training procedure, which allows us to use a high-capacity patch-level network to learn from pixel-level labels alongside a network learning from macroscopic breast-level labels. 2) A custom ResNet-based network used as a building block of our model, whose balance of depth and width is optimized for high-resolution medical images. 3) Pretraining the network on screening BI-RADS classification, a related task with more noisy labels. 4) Combining multiple input views in an optimal way among a number of possible choices. To validate our model, we conducted a reader study with 14 readers, each reading 720 screening mammogram exams, and show that our model is as accurate as experienced radiologists when presented with the same data. We also show that a hybrid model, averaging the probability of malignancy predicted by a radiologist with a prediction of our neural network, is more accurate than either of the two separately. To further understand our results, we conduct a thorough analysis of our network’s performance on different subpopulations of the screening population, the model’s design, training procedure, errors, and properties of its internal representations. Our best models are publicly available at https://github.com/nyukat/breast_cancer_classifier.
format Online
Article
Text
id pubmed-7427471
institution National Center for Biotechnology Information
language English
publishDate 2019
record_format MEDLINE/PubMed
spelling pubmed-74274712020-08-14 Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening Wu, Nan Phang, Jason Park, Jungkyu Shen, Yiqiu Huang, Zhe Zorin, Masha Jastrzębski, Stanisław Févry, Thibault Katsnelson, Joe Kim, Eric Wolfson, Stacey Parikh, Ujas Gaddam, Sushma Lin, Leng Leng Young Ho, Kara Weinstein, Joshua D. Reig, Beatriu Gao, Yiming Toth, Hildegard Pysarenko, Kristine Lewin, Alana Lee, Jiyon Airola, Krystal Mema, Eralda Chung, Stephanie Hwang, Esther Samreen, Naziya Kim, S. Gene Heacock, Laura Moy, Linda Cho, Kyunghyun Geras, Krzysztof J. IEEE Trans Med Imaging Article We present a deep convolutional neural network for breast cancer screening exam classification, trained, and evaluated on over 200 000 exams (over 1 000 000 images). Our network achieves an AUC of 0.895 in predicting the presence of cancer in the breast, when tested on the screening population. We attribute the high accuracy to a few technical advances. 1) Our network’s novel two-stage architecture and training procedure, which allows us to use a high-capacity patch-level network to learn from pixel-level labels alongside a network learning from macroscopic breast-level labels. 2) A custom ResNet-based network used as a building block of our model, whose balance of depth and width is optimized for high-resolution medical images. 3) Pretraining the network on screening BI-RADS classification, a related task with more noisy labels. 4) Combining multiple input views in an optimal way among a number of possible choices. To validate our model, we conducted a reader study with 14 readers, each reading 720 screening mammogram exams, and show that our model is as accurate as experienced radiologists when presented with the same data. We also show that a hybrid model, averaging the probability of malignancy predicted by a radiologist with a prediction of our neural network, is more accurate than either of the two separately. To further understand our results, we conduct a thorough analysis of our network’s performance on different subpopulations of the screening population, the model’s design, training procedure, errors, and properties of its internal representations. Our best models are publicly available at https://github.com/nyukat/breast_cancer_classifier. 2019-10-07 2020-04 /pmc/articles/PMC7427471/ /pubmed/31603772 http://dx.doi.org/10.1109/TMI.2019.2945514 Text en This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/
spellingShingle Article
Wu, Nan
Phang, Jason
Park, Jungkyu
Shen, Yiqiu
Huang, Zhe
Zorin, Masha
Jastrzębski, Stanisław
Févry, Thibault
Katsnelson, Joe
Kim, Eric
Wolfson, Stacey
Parikh, Ujas
Gaddam, Sushma
Lin, Leng Leng Young
Ho, Kara
Weinstein, Joshua D.
Reig, Beatriu
Gao, Yiming
Toth, Hildegard
Pysarenko, Kristine
Lewin, Alana
Lee, Jiyon
Airola, Krystal
Mema, Eralda
Chung, Stephanie
Hwang, Esther
Samreen, Naziya
Kim, S. Gene
Heacock, Laura
Moy, Linda
Cho, Kyunghyun
Geras, Krzysztof J.
Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title_full Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title_fullStr Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title_full_unstemmed Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title_short Deep Neural Networks Improve Radiologists’ Performance in Breast Cancer Screening
title_sort deep neural networks improve radiologists’ performance in breast cancer screening
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7427471/
https://www.ncbi.nlm.nih.gov/pubmed/31603772
http://dx.doi.org/10.1109/TMI.2019.2945514
work_keys_str_mv AT wunan deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT phangjason deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT parkjungkyu deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT shenyiqiu deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT huangzhe deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT zorinmasha deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT jastrzebskistanisław deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT fevrythibault deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT katsnelsonjoe deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT kimeric deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT wolfsonstacey deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT parikhujas deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT gaddamsushma deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT linlenglengyoung deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT hokara deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT weinsteinjoshuad deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT reigbeatriu deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT gaoyiming deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT tothhildegard deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT pysarenkokristine deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT lewinalana deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT leejiyon deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT airolakrystal deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT memaeralda deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT chungstephanie deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT hwangesther deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT samreennaziya deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT kimsgene deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT heacocklaura deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT moylinda deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT chokyunghyun deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening
AT geraskrzysztofj deepneuralnetworksimproveradiologistsperformanceinbreastcancerscreening