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dc.contributor.authorLotter, William
dc.contributor.authorDiab, Abdul Rahman
dc.contributor.authorHaslam, Bryan
dc.contributor.authorKim, Jiye G.
dc.contributor.authorGrisot, Giorgia
dc.contributor.authorWu, Eric
dc.contributor.authorWu, Kevin
dc.contributor.authorOnieva, Jorge Onieva
dc.contributor.authorBoyer, Yun
dc.contributor.authorBoxerman, Jerrold L.
dc.contributor.authorWang, Meiyun
dc.contributor.authorBandler, Mack
dc.contributor.authorVijayaraghavan, Gopal
dc.contributor.authorGregory Sorensen, A.
dc.date2022-08-11T08:10:49.000
dc.date.accessioned2022-08-23T17:21:18Z
dc.date.available2022-08-23T17:21:18Z
dc.date.issued2021-02-01
dc.date.submitted2021-02-16
dc.identifier.citation<p>Lotter W, Diab AR, Haslam B, Kim JG, Grisot G, Wu E, Wu K, Onieva JO, Boyer Y, Boxerman JL, Wang M, Bandler M, Vijayaraghavan GR, Gregory Sorensen A. Robust breast cancer detection in mammography and digital breast tomosynthesis using an annotation-efficient deep learning approach. Nat Med. 2021 Feb;27(2):244-249. doi: 10.1038/s41591-020-01174-9. Epub 2021 Jan 11. PMID: 33432172. <a href="https://doi.org/10.1038/s41591-020-01174-9">Link to article on publisher's site</a></p>
dc.identifier.issn1078-8956 (Linking)
dc.identifier.doi10.1038/s41591-020-01174-9
dc.identifier.pmid33432172
dc.identifier.urihttp://hdl.handle.net/20.500.14038/48490
dc.description.abstractBreast cancer remains a global challenge, causing over 600,000 deaths in 2018 (ref. (1)). To achieve earlier cancer detection, health organizations worldwide recommend screening mammography, which is estimated to decrease breast cancer mortality by 20-40% (refs. (2,3)). Despite the clear value of screening mammography, significant false positive and false negative rates along with non-uniformities in expert reader availability leave opportunities for improving quality and access(4,5). To address these limitations, there has been much recent interest in applying deep learning to mammography(6-18), and these efforts have highlighted two key difficulties: obtaining large amounts of annotated training data and ensuring generalization across populations, acquisition equipment and modalities. Here we present an annotation-efficient deep learning approach that (1) achieves state-of-the-art performance in mammogram classification, (2) successfully extends to digital breast tomosynthesis (DBT; '3D mammography'), (3) detects cancers in clinically negative prior mammograms of patients with cancer, (4) generalizes well to a population with low screening rates and (5) outperforms five out of five full-time breast-imaging specialists with an average increase in sensitivity of 14%. By creating new 'maximum suspicion projection' (MSP) images from DBT data, our progressively trained, multiple-instance learning approach effectively trains on DBT exams using only breast-level labels while maintaining localization-based interpretability. Altogether, our results demonstrate promise towards software that can improve the accuracy of and access to screening mammography worldwide.
dc.language.isoen_US
dc.relation<p><a href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=pubmed&cmd=Retrieve&list_uids=33432172&dopt=Abstract">Link to Article in PubMed</a></p>
dc.relation.urlhttps://doi.org/10.1038/s41591-020-01174-9
dc.subjectBreast cancer
dc.subjectMachine learning
dc.subjectArtificial Intelligence and Robotics
dc.subjectDiagnosis
dc.subjectNeoplasms
dc.subjectRadiology
dc.titleRobust breast cancer detection in mammography and digital breast tomosynthesis using an annotation-efficient deep learning approach
dc.typeJournal Article
dc.source.journaltitleNature medicine
dc.source.volume27
dc.source.issue2
dc.identifier.legacyfulltexthttps://escholarship.umassmed.edu/cgi/viewcontent.cgi?article=1609&amp;context=radiology_pubs&amp;unstamped=1
dc.identifier.legacycoverpagehttps://escholarship.umassmed.edu/radiology_pubs/593
dc.identifier.contextkey21682675
refterms.dateFOA2022-08-23T17:21:19Z
html.description.abstract<p>Breast cancer remains a global challenge, causing over 600,000 deaths in 2018 (ref. (1)). To achieve earlier cancer detection, health organizations worldwide recommend screening mammography, which is estimated to decrease breast cancer mortality by 20-40% (refs. (2,3)). Despite the clear value of screening mammography, significant false positive and false negative rates along with non-uniformities in expert reader availability leave opportunities for improving quality and access(4,5). To address these limitations, there has been much recent interest in applying deep learning to mammography(6-18), and these efforts have highlighted two key difficulties: obtaining large amounts of annotated training data and ensuring generalization across populations, acquisition equipment and modalities. Here we present an annotation-efficient deep learning approach that (1) achieves state-of-the-art performance in mammogram classification, (2) successfully extends to digital breast tomosynthesis (DBT; '3D mammography'), (3) detects cancers in clinically negative prior mammograms of patients with cancer, (4) generalizes well to a population with low screening rates and (5) outperforms five out of five full-time breast-imaging specialists with an average increase in sensitivity of 14%. By creating new 'maximum suspicion projection' (MSP) images from DBT data, our progressively trained, multiple-instance learning approach effectively trains on DBT exams using only breast-level labels while maintaining localization-based interpretability. Altogether, our results demonstrate promise towards software that can improve the accuracy of and access to screening mammography worldwide.</p>
dc.identifier.submissionpathradiology_pubs/593
dc.contributor.departmentDepartment of Radiology
dc.source.pages244-249


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