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Deep learning model improves radiologists’ performance in detection and classification of breast lesions

OBJECTIVE: Computer-aided diagnosis using deep learning algorithms has been initially applied in the field of mammography, but there is no large-scale clinical application. METHODS: This study proposed to develop and verify an artificial intelligence model based on mammography. Firstly, mammograms r...

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Autores principales: Sun, Yingshi, Qu, Yuhong, Wang, Dong, Li, Yi, Ye, Lin, Du, Jingbo, Xu, Bing, Li, Baoqing, Li, Xiaoting, Zhang, Kexin, Shi, Yanjie, Sun, Ruijia, Wang, Yichuan, Long, Rong, Chen, Dengbo, Li, Haijiao, Wang, Liwei, Cao, Min
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AME Publishing Company 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8742176/
https://www.ncbi.nlm.nih.gov/pubmed/35125812
http://dx.doi.org/10.21147/j.issn.1000-9604.2021.06.05
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author Sun, Yingshi
Qu, Yuhong
Wang, Dong
Li, Yi
Ye, Lin
Du, Jingbo
Xu, Bing
Li, Baoqing
Li, Xiaoting
Zhang, Kexin
Shi, Yanjie
Sun, Ruijia
Wang, Yichuan
Long, Rong
Chen, Dengbo
Li, Haijiao
Wang, Liwei
Cao, Min
author_facet Sun, Yingshi
Qu, Yuhong
Wang, Dong
Li, Yi
Ye, Lin
Du, Jingbo
Xu, Bing
Li, Baoqing
Li, Xiaoting
Zhang, Kexin
Shi, Yanjie
Sun, Ruijia
Wang, Yichuan
Long, Rong
Chen, Dengbo
Li, Haijiao
Wang, Liwei
Cao, Min
author_sort Sun, Yingshi
collection PubMed
description OBJECTIVE: Computer-aided diagnosis using deep learning algorithms has been initially applied in the field of mammography, but there is no large-scale clinical application. METHODS: This study proposed to develop and verify an artificial intelligence model based on mammography. Firstly, mammograms retrospectively collected from six centers were randomized to a training dataset and a validation dataset for establishing the model. Secondly, the model was tested by comparing 12 radiologists’ performance with and without it. Finally, prospectively enrolled women with mammograms from six centers were diagnosed by radiologists with the model. The detection and diagnostic capabilities were evaluated using the free-response receiver operating characteristic (FROC) curve and ROC curve. RESULTS: The sensitivity of model for detecting lesions after matching was 0.908 for false positive rate of 0.25 in unilateral images. The area under ROC curve (AUC) to distinguish the benign lesions from malignant lesions was 0.855 [95% confidence interval (95% CI): 0.830, 0.880]. The performance of 12 radiologists with the model was higher than that of radiologists alone (AUC: 0.852 vs. 0.805, P=0.005). The mean reading time of with the model was shorter than that of reading alone (80.18 s vs. 62.28 s, P=0.032). In prospective application, the sensitivity of detection reached 0.887 at false positive rate of 0.25; the AUC of radiologists with the model was 0.983 (95% CI: 0.978, 0.988), with sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) of 94.36%, 98.07%, 87.76%, and 99.09%, respectively. CONCLUSIONS: The artificial intelligence model exhibits high accuracy for detecting and diagnosing breast lesions, improves diagnostic accuracy and saves time.
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spelling pubmed-87421762022-02-04 Deep learning model improves radiologists’ performance in detection and classification of breast lesions Sun, Yingshi Qu, Yuhong Wang, Dong Li, Yi Ye, Lin Du, Jingbo Xu, Bing Li, Baoqing Li, Xiaoting Zhang, Kexin Shi, Yanjie Sun, Ruijia Wang, Yichuan Long, Rong Chen, Dengbo Li, Haijiao Wang, Liwei Cao, Min Chin J Cancer Res Original Article OBJECTIVE: Computer-aided diagnosis using deep learning algorithms has been initially applied in the field of mammography, but there is no large-scale clinical application. METHODS: This study proposed to develop and verify an artificial intelligence model based on mammography. Firstly, mammograms retrospectively collected from six centers were randomized to a training dataset and a validation dataset for establishing the model. Secondly, the model was tested by comparing 12 radiologists’ performance with and without it. Finally, prospectively enrolled women with mammograms from six centers were diagnosed by radiologists with the model. The detection and diagnostic capabilities were evaluated using the free-response receiver operating characteristic (FROC) curve and ROC curve. RESULTS: The sensitivity of model for detecting lesions after matching was 0.908 for false positive rate of 0.25 in unilateral images. The area under ROC curve (AUC) to distinguish the benign lesions from malignant lesions was 0.855 [95% confidence interval (95% CI): 0.830, 0.880]. The performance of 12 radiologists with the model was higher than that of radiologists alone (AUC: 0.852 vs. 0.805, P=0.005). The mean reading time of with the model was shorter than that of reading alone (80.18 s vs. 62.28 s, P=0.032). In prospective application, the sensitivity of detection reached 0.887 at false positive rate of 0.25; the AUC of radiologists with the model was 0.983 (95% CI: 0.978, 0.988), with sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) of 94.36%, 98.07%, 87.76%, and 99.09%, respectively. CONCLUSIONS: The artificial intelligence model exhibits high accuracy for detecting and diagnosing breast lesions, improves diagnostic accuracy and saves time. AME Publishing Company 2021-12-31 /pmc/articles/PMC8742176/ /pubmed/35125812 http://dx.doi.org/10.21147/j.issn.1000-9604.2021.06.05 Text en Copyright ©2021Chinese Journal of Cancer Research. All rights reserved. https://creativecommons.org/licenses/by-nc-sa/4.0/This work is licensed under a Creative Commons Attribution-Non Commercial-Share Alike 4.0 Unported License. To view a copy of this license, visit http://creativecommons.org/licenses/by-nc-sa/4.0/ (https://creativecommons.org/licenses/by-nc-sa/4.0/)
spellingShingle Original Article
Sun, Yingshi
Qu, Yuhong
Wang, Dong
Li, Yi
Ye, Lin
Du, Jingbo
Xu, Bing
Li, Baoqing
Li, Xiaoting
Zhang, Kexin
Shi, Yanjie
Sun, Ruijia
Wang, Yichuan
Long, Rong
Chen, Dengbo
Li, Haijiao
Wang, Liwei
Cao, Min
Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title_full Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title_fullStr Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title_full_unstemmed Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title_short Deep learning model improves radiologists’ performance in detection and classification of breast lesions
title_sort deep learning model improves radiologists’ performance in detection and classification of breast lesions
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8742176/
https://www.ncbi.nlm.nih.gov/pubmed/35125812
http://dx.doi.org/10.21147/j.issn.1000-9604.2021.06.05
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