A deep learning algorithm for reducing false positives in screening mammography
Screening mammography improves breast cancer outcomes by enabling early detection and treatment. However, false positive callbacks for additional imaging from screening exams cause unnecessary procedures, patient anxiety, and financial burden. This work demonstrates an AI algorithm that reduces fals...
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Main Authors | , , , , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
13.04.2022
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Subjects | |
Online Access | Get full text |
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Summary: | Screening mammography improves breast cancer outcomes by enabling early
detection and treatment. However, false positive callbacks for additional
imaging from screening exams cause unnecessary procedures, patient anxiety, and
financial burden. This work demonstrates an AI algorithm that reduces false
positives by identifying mammograms not suspicious for breast cancer. We
trained the algorithm to determine the absence of cancer using 123,248 2D
digital mammograms (6,161 cancers) and performed a retrospective study on
14,831 screening exams (1,026 cancers) from 15 US and 3 UK sites. Retrospective
evaluation of the algorithm on the largest of the US sites (11,592 mammograms,
101 cancers) a) left the cancer detection rate unaffected (p=0.02,
non-inferiority margin 0.25 cancers per 1000 exams), b) reduced callbacks for
diagnostic exams by 31.1% compared to standard clinical readings, c) reduced
benign needle biopsies by 7.4%, and d) reduced screening exams requiring
radiologist interpretation by 41.6% in the simulated clinical workflow. This
work lays the foundation for semi-autonomous breast cancer screening systems
that could benefit patients and healthcare systems by reducing false positives,
unnecessary procedures, patient anxiety, and expenses. |
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DOI: | 10.48550/arxiv.2204.06671 |