Literature DB >> 31063083

A Deep Learning Mammography-based Model for Improved Breast Cancer Risk Prediction.

Adam Yala1, Constance Lehman1, Tal Schuster1, Tally Portnoi1, Regina Barzilay1.   

Abstract

Background Mammographic density improves the accuracy of breast cancer risk models. However, the use of breast density is limited by subjective assessment, variation across radiologists, and restricted data. A mammography-based deep learning (DL) model may provide more accurate risk prediction. Purpose To develop a mammography-based DL breast cancer risk model that is more accurate than established clinical breast cancer risk models. Materials and Methods This retrospective study included 88 994 consecutive screening mammograms in 39 571 women between January 1, 2009, and December 31, 2012. For each patient, all examinations were assigned to either training, validation, or test sets, resulting in 71 689, 8554, and 8751 examinations, respectively. Cancer outcomes were obtained through linkage to a regional tumor registry. By using risk factor information from patient questionnaires and electronic medical records review, three models were developed to assess breast cancer risk within 5 years: a risk-factor-based logistic regression model (RF-LR) that used traditional risk factors, a DL model (image-only DL) that used mammograms alone, and a hybrid DL model that used both traditional risk factors and mammograms. Comparisons were made to an established breast cancer risk model that included breast density (Tyrer-Cuzick model, version 8 [TC]). Model performance was compared by using areas under the receiver operating characteristic curve (AUCs) with DeLong test (P < .05). Results The test set included 3937 women, aged 56.20 years ± 10.04. Hybrid DL and image-only DL showed AUCs of 0.70 (95% confidence interval [CI]: 0.66, 0.75) and 0.68 (95% CI: 0.64, 0.73), respectively. RF-LR and TC showed AUCs of 0.67 (95% CI: 0.62, 0.72) and 0.62 (95% CI: 0.57, 0.66), respectively. Hybrid DL showed a significantly higher AUC (0.70) than TC (0.62; P < .001) and RF-LR (0.67; P = .01). Conclusion Deep learning models that use full-field mammograms yield substantially improved risk discrimination compared with the Tyrer-Cuzick (version 8) model. © RSNA, 2019 Online supplemental material is available for this article. See also the editorial by Sitek and Wolfe in this issue.

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Year:  2019        PMID: 31063083     DOI: 10.1148/radiol.2019182716

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  84 in total

Review 1.  Deep learning in breast radiology: current progress and future directions.

Authors:  William C Ou; Dogan Polat; Basak E Dogan
Journal:  Eur Radiol       Date:  2021-01-15       Impact factor: 5.315

2.  Deep Learning Pre-training Strategy for Mammogram Image Classification: an Evaluation Study.

Authors:  Kadie Clancy; Sarah Aboutalib; Aly Mohamed; Jules Sumkin; Shandong Wu
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Review 3.  Designing deep learning studies in cancer diagnostics.

Authors:  Andreas Kleppe; Ole-Johan Skrede; Sepp De Raedt; Knut Liestøl; David J Kerr; Håvard E Danielsen
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4.  Breast cancer screening in average-risk women: towards personalized screening.

Authors:  Almir Gv Bitencourt; Carolina Rossi Saccarelli; Christiane Kuhl; Elizabeth A Morris
Journal:  Br J Radiol       Date:  2019-09-23       Impact factor: 3.039

5.  How AI is improving cancer diagnostics.

Authors:  Neil Savage
Journal:  Nature       Date:  2020-03       Impact factor: 49.962

6.  Machine Learning in Oncology: Methods, Applications, and Challenges.

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Journal:  JCO Clin Cancer Inform       Date:  2020-10

7.  Harnessing the Power of Deep Learning to Assess Breast Cancer Risk.

Authors:  Manisha Bahl
Journal:  Radiology       Date:  2019-12-17       Impact factor: 11.105

8.  Can AI Help Make Screening Mammography "Lean"?

Authors:  Despina Kontos; Emily F Conant
Journal:  Radiology       Date:  2019-08-06       Impact factor: 11.105

9.  Potential of using mammography screening appointments to identify high-risk women: cross sectional survey results from the national health interview survey.

Authors:  Anand K Narayan; Sarah F Mercaldo; Yasha P Gupta; Erica T Warner; Constance D Lehman; Randy C Miles
Journal:  Breast Cancer Res Treat       Date:  2020-11-12       Impact factor: 4.872

Review 10.  Imaging for Response Assessment in Cancer Clinical Trials.

Authors:  Anna G Sorace; Asser A Elkassem; Samuel J Galgano; Suzanne E Lapi; Benjamin M Larimer; Savannah C Partridge; C Chad Quarles; Kirsten Reeves; Tiara S Napier; Patrick N Song; Thomas E Yankeelov; Stefanie Woodard; Andrew D Smith
Journal:  Semin Nucl Med       Date:  2020-06-10       Impact factor: 4.446

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