Literature DB >> 31385754

A Deep Learning Model to Triage Screening Mammograms: A Simulation Study.

Adam Yala1, Tal Schuster1, Randy Miles1, Regina Barzilay1, Constance Lehman1.   

Abstract

Background Recent deep learning (DL) approaches have shown promise in improving sensitivity but have not addressed limitations in radiologist specificity or efficiency. Purpose To develop a DL model to triage a portion of mammograms as cancer free, improving performance and workflow efficiency. Materials and Methods In this retrospective study, 223 109 consecutive screening mammograms performed in 66 661 women from January 2009 to December 2016 were collected with cancer outcomes obtained through linkage to a regional tumor registry. This cohort was split by patient into 212 272, 25 999, and 26 540 mammograms from 56 831, 7021, and 7176 patients for training, validation, and testing, respectively. A DL model was developed to triage mammograms as cancer free and evaluated on the test set. A DL-triage workflow was simulated in which radiologists skipped mammograms triaged as cancer free (interpreting them as negative for cancer) and read mammograms not triaged as cancer free by using the original interpreting radiologists' assessments. Sensitivities, specificities, and percentage of mammograms read were calculated, with and without the DL-triage-simulated workflow. Statistics were computed across 5000 bootstrap samples to assess confidence intervals (CIs). Specificities were compared by using a two-tailed t test (P < .05) and sensitivities were compared by using a one-sided t test with a noninferiority margin of 5% (P < .05). Results The test set included 7176 women (mean age, 57.8 years ± 10.9 [standard deviation]). When reading all mammograms, radiologists obtained a sensitivity and specificity of 90.6% (173 of 191; 95% CI: 86.6%, 94.7%) and 93.5% (24 625 of 26 349; 95% CI: 93.3%, 93.9%). In the DL-simulated workflow, the radiologists obtained a sensitivity and specificity of 90.1% (172 of 191; 95% CI: 86.0%, 94.3%) and 94.2% (24 814 of 26 349; 95% CI: 94.0%, 94.6%) while reading 80.7% (21 420 of 26 540) of the mammograms. The simulated workflow improved specificity (P = .002) and obtained a noninferior sensitivity with a margin of 5% (P < .001). Conclusion This deep learning model has the potential to reduce radiologist workload and significantly improve specificity without harming sensitivity. © RSNA, 2019 Online supplemental material is available for this article. See also the editorial by Kontos and Conant in this issue.

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Year:  2019        PMID: 31385754     DOI: 10.1148/radiol.2019182908

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


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

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

Review 3.  CAD and AI for breast cancer-recent development and challenges.

Authors:  Heang-Ping Chan; Ravi K Samala; Lubomir M Hadjiiski
Journal:  Br J Radiol       Date:  2019-12-16       Impact factor: 3.039

4.  Machine Learning for Workflow Applications in Screening Mammography: Systematic Review and Meta-Analysis.

Authors:  Sarah E Hickman; Ramona Woitek; Elizabeth Phuong Vi Le; Yu Ri Im; Carina Mouritsen Luxhøj; Angelica I Aviles-Rivero; Gabrielle C Baxter; James W MacKay; Fiona J Gilbert
Journal:  Radiology       Date:  2021-10-19       Impact factor: 11.105

Review 5.  AI-enhanced breast imaging: Where are we and where are we heading?

Authors:  Almir Bitencourt; Isaac Daimiel Naranjo; Roberto Lo Gullo; Carolina Rossi Saccarelli; Katja Pinker
Journal:  Eur J Radiol       Date:  2021-07-30       Impact factor: 4.531

Review 6.  Artificial Intelligence: A Primer for Breast Imaging Radiologists.

Authors:  Manisha Bahl
Journal:  J Breast Imaging       Date:  2020-06-19

7.  DeepCAT: Deep Computer-Aided Triage of Screening Mammography.

Authors:  Paul H Yi; Dhananjay Singh; Susan C Harvey; Gregory D Hager; Lisa A Mullen
Journal:  J Digit Imaging       Date:  2021-01-11       Impact factor: 4.056

8.  Can artificial intelligence reduce the interval cancer rate in mammography screening?

Authors:  Kristina Lång; Solveig Hofvind; Alejandro Rodríguez-Ruiz; Ingvar Andersson
Journal:  Eur Radiol       Date:  2021-01-23       Impact factor: 5.315

9.  The added value of an artificial intelligence system in assisting radiologists on indeterminate BI-RADS 0 mammograms.

Authors:  Chunyan Yi; Yuxing Tang; Rushan Ouyang; Yanbo Zhang; Zhenjie Cao; Zhicheng Yang; Shibin Wu; Mei Han; Jing Xiao; Peng Chang; Jie Ma
Journal:  Eur Radiol       Date:  2021-09-15       Impact factor: 7.034

10.  Preparing Medical Imaging Data for Machine Learning.

Authors:  Martin J Willemink; Wojciech A Koszek; Cailin Hardell; Jie Wu; Dominik Fleischmann; Hugh Harvey; Les R Folio; Ronald M Summers; Daniel L Rubin; Matthew P Lungren
Journal:  Radiology       Date:  2020-02-18       Impact factor: 11.105

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