Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning

Mammography plays an important role in screening breast cancer among females, and artificial intelligence has enabled the automated detection of diseases on medical images. This study aimed to develop a deep learning model detecting breast cancer in digital mammograms of various densities and to eva...

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Main Authors: Yong Joon Suh, Jaewon Jung, Bum-Joo Cho
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Journal of Personalized Medicine
Subjects:
Online Access:https://www.mdpi.com/2075-4426/10/4/211
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spelling doaj-49dadf8423d841f590bccae01baac34c2020-11-25T04:10:31ZengMDPI AGJournal of Personalized Medicine2075-44262020-11-011021121110.3390/jpm10040211Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep LearningYong Joon Suh0Jaewon Jung1Bum-Joo Cho2Department of Breast and Endocrine Surgery, Hallym University Sacred Heart Hospital, Anyang 14068, KoreaMedical Artificial Intelligence Center, Hallym University Medical Center, Anyang 14068, KoreaMedical Artificial Intelligence Center, Hallym University Medical Center, Anyang 14068, KoreaMammography plays an important role in screening breast cancer among females, and artificial intelligence has enabled the automated detection of diseases on medical images. This study aimed to develop a deep learning model detecting breast cancer in digital mammograms of various densities and to evaluate the model performance compared to previous studies. From 1501 subjects who underwent digital mammography between February 2007 and May 2015, craniocaudal and mediolateral view mammograms were included and concatenated for each breast, ultimately producing 3002 merged images. Two convolutional neural networks were trained to detect any malignant lesion on the merged images. The performances were tested using 301 merged images from 284 subjects and compared to a meta-analysis including 12 previous deep learning studies. The mean area under the receiver-operating characteristic curve (AUC) for detecting breast cancer in each merged mammogram was 0.952 ± 0.005 by DenseNet-169 and 0.954 ± 0.020 by EfficientNet-B5, respectively. The performance for malignancy detection decreased as breast density increased (density A, mean AUC = 0.984 vs. density D, mean AUC = 0.902 by DenseNet-169). When patients’ age was used as a covariate for malignancy detection, the performance showed little change (mean AUC, 0.953 ± 0.005). The mean sensitivity and specificity of the DenseNet-169 (87 and 88%, respectively) surpassed the mean values (81 and 82%, respectively) obtained in a meta-analysis. Deep learning would work efficiently in screening breast cancer in digital mammograms of various densities, which could be maximized in breasts with lower parenchyma density.https://www.mdpi.com/2075-4426/10/4/211breast cancermammographybreast densityartificial intelligencedeep learningconvolutional neural network
collection DOAJ
language English
format Article
sources DOAJ
author Yong Joon Suh
Jaewon Jung
Bum-Joo Cho
spellingShingle Yong Joon Suh
Jaewon Jung
Bum-Joo Cho
Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
Journal of Personalized Medicine
breast cancer
mammography
breast density
artificial intelligence
deep learning
convolutional neural network
author_facet Yong Joon Suh
Jaewon Jung
Bum-Joo Cho
author_sort Yong Joon Suh
title Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
title_short Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
title_full Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
title_fullStr Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
title_full_unstemmed Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning
title_sort automated breast cancer detection in digital mammograms of various densities via deep learning
publisher MDPI AG
series Journal of Personalized Medicine
issn 2075-4426
publishDate 2020-11-01
description Mammography plays an important role in screening breast cancer among females, and artificial intelligence has enabled the automated detection of diseases on medical images. This study aimed to develop a deep learning model detecting breast cancer in digital mammograms of various densities and to evaluate the model performance compared to previous studies. From 1501 subjects who underwent digital mammography between February 2007 and May 2015, craniocaudal and mediolateral view mammograms were included and concatenated for each breast, ultimately producing 3002 merged images. Two convolutional neural networks were trained to detect any malignant lesion on the merged images. The performances were tested using 301 merged images from 284 subjects and compared to a meta-analysis including 12 previous deep learning studies. The mean area under the receiver-operating characteristic curve (AUC) for detecting breast cancer in each merged mammogram was 0.952 ± 0.005 by DenseNet-169 and 0.954 ± 0.020 by EfficientNet-B5, respectively. The performance for malignancy detection decreased as breast density increased (density A, mean AUC = 0.984 vs. density D, mean AUC = 0.902 by DenseNet-169). When patients’ age was used as a covariate for malignancy detection, the performance showed little change (mean AUC, 0.953 ± 0.005). The mean sensitivity and specificity of the DenseNet-169 (87 and 88%, respectively) surpassed the mean values (81 and 82%, respectively) obtained in a meta-analysis. Deep learning would work efficiently in screening breast cancer in digital mammograms of various densities, which could be maximized in breasts with lower parenchyma density.
topic breast cancer
mammography
breast density
artificial intelligence
deep learning
convolutional neural network
url https://www.mdpi.com/2075-4426/10/4/211
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AT jaewonjung automatedbreastcancerdetectionindigitalmammogramsofvariousdensitiesviadeeplearning
AT bumjoocho automatedbreastcancerdetectionindigitalmammogramsofvariousdensitiesviadeeplearning
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