Literature DB >> 34665034

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

Sarah E Hickman1, Ramona Woitek1, Elizabeth Phuong Vi Le1, Yu Ri Im1, Carina Mouritsen Luxhøj1, Angelica I Aviles-Rivero1, Gabrielle C Baxter1, James W MacKay1, Fiona J Gilbert1.   

Abstract

Background Advances in computer processing and improvements in data availability have led to the development of machine learning (ML) techniques for mammographic imaging. Purpose To evaluate the reported performance of stand-alone ML applications for screening mammography workflow. Materials and Methods Ovid Embase, Ovid Medline, Cochrane Central Register of Controlled Trials, Scopus, and Web of Science literature databases were searched for relevant studies published from January 2012 to September 2020. The study was registered with the PROSPERO International Prospective Register of Systematic Reviews (protocol no. CRD42019156016). Stand-alone technology was defined as a ML algorithm that can be used independently of a human reader. Studies were quality assessed using the Quality Assessment of Diagnostic Accuracy Studies 2 and the Prediction Model Risk of Bias Assessment Tool, and reporting was evaluated using the Checklist for Artificial Intelligence in Medical Imaging. A primary meta-analysis included the top-performing algorithm and corresponding reader performance from which pooled summary estimates for the area under the receiver operating characteristic curve (AUC) were calculated using a bivariate model. Results Fourteen articles were included, which detailed 15 studies for stand-alone detection (n = 8) and triage (n = 7). Triage studies reported that 17%-91% of normal mammograms identified could be read by adapted screening, while "missing" an estimated 0%-7% of cancers. In total, an estimated 185 252 cases from three countries with more than 39 readers were included in the primary meta-analysis. The pooled sensitivity, specificity, and AUC was 75.4% (95% CI: 65.6, 83.2; P = .11), 90.6% (95% CI: 82.9, 95.0; P = .40), and 0.89 (95% CI: 0.84, 0.98), respectively, for algorithms, and 73.0% (95% CI: 60.7, 82.6), 88.6% (95% CI: 72.4, 95.8), and 0.85 (95% CI: 0.78, 0.97), respectively, for readers. Conclusion Machine learning (ML) algorithms that demonstrate a stand-alone application in mammographic screening workflows achieve or even exceed human reader detection performance and improve efficiency. However, this evidence is from a small number of retrospective studies. Therefore, further rigorous independent external prospective testing of ML algorithms to assess performance at preassigned thresholds is required to support these claims. ©RSNA, 2021 Online supplemental material is available for this article. See also the editorial by Whitman and Moseley in this issue.

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Year:  2021        PMID: 34665034      PMCID: PMC8717814          DOI: 10.1148/radiol.2021210391

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


  32 in total

1.  Checklist for Artificial Intelligence in Medical Imaging (CLAIM): A Guide for Authors and Reviewers.

Authors:  John Mongan; Linda Moy; Charles E Kahn
Journal:  Radiol Artif Intell       Date:  2020-03-25

2.  Preferred Reporting Items for a Systematic Review and Meta-analysis of Diagnostic Test Accuracy Studies: The PRISMA-DTA Statement.

Authors:  Matthew D F McInnes; David Moher; Brett D Thombs; Trevor A McGrath; Patrick M Bossuyt; Tammy Clifford; Jérémie F Cohen; Jonathan J Deeks; Constantine Gatsonis; Lotty Hooft; Harriet A Hunt; Christopher J Hyde; Daniël A Korevaar; Mariska M G Leeflang; Petra Macaskill; Johannes B Reitsma; Rachel Rodin; Anne W S Rutjes; Jean-Paul Salameh; Adrienne Stevens; Yemisi Takwoingi; Marcello Tonelli; Laura Weeks; Penny Whiting; Brian H Willis
Journal:  JAMA       Date:  2018-01-23       Impact factor: 56.272

3.  Effect of artificial intelligence-based triaging of breast cancer screening mammograms on cancer detection and radiologist workload: a retrospective simulation study.

Authors:  Karin Dembrower; Erik Wåhlin; Yue Liu; Mattie Salim; Kevin Smith; Peter Lindholm; Martin Eklund; Fredrik Strand
Journal:  Lancet Digit Health       Date:  2020-09

4.  Changes in cancer detection and false-positive recall in mammography using artificial intelligence: a retrospective, multireader study.

Authors:  Hyo-Eun Kim; Hak Hee Kim; Boo-Kyung Han; Ki Hwan Kim; Kyunghwa Han; Hyeonseob Nam; Eun Hye Lee; Eun-Kyung Kim
Journal:  Lancet Digit Health       Date:  2020-02-06

5.  National Performance Benchmarks for Modern Screening Digital Mammography: Update from the Breast Cancer Surveillance Consortium.

Authors:  Constance D Lehman; Robert F Arao; Brian L Sprague; Janie M Lee; Diana S M Buist; Karla Kerlikowske; Louise M Henderson; Tracy Onega; Anna N A Tosteson; Garth H Rauscher; Diana L Miglioretti
Journal:  Radiology       Date:  2016-12-05       Impact factor: 11.105

6.  Detection of Breast Cancer with Mammography: Effect of an Artificial Intelligence Support System.

Authors:  Alejandro Rodríguez-Ruiz; Elizabeth Krupinski; Jan-Jurre Mordang; Kathy Schilling; Sylvia H Heywang-Köbrunner; Ioannis Sechopoulos; Ritse M Mann
Journal:  Radiology       Date:  2018-11-20       Impact factor: 11.105

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

Authors:  Adam Yala; Tal Schuster; Randy Miles; Regina Barzilay; Constance Lehman
Journal:  Radiology       Date:  2019-08-06       Impact factor: 11.105

8.  A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis.

Authors:  Xiaoxuan Liu; Livia Faes; Aditya U Kale; Siegfried K Wagner; Dun Jack Fu; Alice Bruynseels; Thushika Mahendiran; Gabriella Moraes; Mohith Shamdas; Christoph Kern; Joseph R Ledsam; Martin K Schmid; Konstantinos Balaskas; Eric J Topol; Lucas M Bachmann; Pearse A Keane; Alastair K Denniston
Journal:  Lancet Digit Health       Date:  2019-09-25

9.  Can we reduce the workload of mammographic screening by automatic identification of normal exams with artificial intelligence? A feasibility study.

Authors:  Alejandro Rodriguez-Ruiz; Kristina Lång; Albert Gubern-Merida; Jonas Teuwen; Mireille Broeders; Gisella Gennaro; Paola Clauser; Thomas H Helbich; Margarita Chevalier; Thomas Mertelmeier; Matthew G Wallis; Ingvar Andersson; Sophia Zackrisson; Ioannis Sechopoulos; Ritse M Mann
Journal:  Eur Radiol       Date:  2019-04-16       Impact factor: 5.315

Review 10.  Adoption of artificial intelligence in breast imaging: evaluation, ethical constraints and limitations.

Authors:  Sarah E Hickman; Gabrielle C Baxter; Fiona J Gilbert
Journal:  Br J Cancer       Date:  2021-03-26       Impact factor: 7.640

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  4 in total

1.  Mammography diagnosis of breast cancer screening through machine learning: a systematic review and meta-analysis.

Authors:  Junjie Liu; Jiangjie Lei; Yuhang Ou; Yilong Zhao; Xiaofeng Tuo; Baoming Zhang; Mingwang Shen
Journal:  Clin Exp Med       Date:  2022-10-15       Impact factor: 5.057

2.  Research on primary Sjögren's syndrome in 2004-2021: a Web of Science-based cross-sectional bibliometric analysis.

Authors:  Jiaqi Chen; Qian He; Bohan Jiang; Weijiang Song; Zihua Wu; Jianying Yang; Ziwei Huang; Xinbo Yu; Jing Luo; Qingwen Tao
Journal:  Rheumatol Int       Date:  2022-05-10       Impact factor: 3.580

3.  Screen-detected and interval breast cancer after concordant and discordant interpretations in a population based screening program using independent double reading.

Authors:  Marit A Martiniussen; Silje Sagstad; Marthe Larsen; Anne Sofie F Larsen; Tone Hovda; Christoph I Lee; Solveig Hofvind
Journal:  Eur Radiol       Date:  2022-04-02       Impact factor: 7.034

Review 4.  Automated Identification of Multiple Findings on Brain MRI for Improving Scan Acquisition and Interpretation Workflows: A Systematic Review.

Authors:  Kaining Sheng; Cecilie Mørck Offersen; Jon Middleton; Jonathan Frederik Carlsen; Thomas Clement Truelsen; Akshay Pai; Jacob Johansen; Michael Bachmann Nielsen
Journal:  Diagnostics (Basel)       Date:  2022-08-03
  4 in total

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