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Performance across different versions of an artificial intelligence model for screen-reading of mammograms
0
Zitationen
12
Autoren
2026
Jahr
Abstract
Question Studies have reported promising results regarding the use of AI in mammography screening, but comparisons of updated versus older versions are less studied. Findings In our study, 87.1% (642/737) of the screen-detected cancers were classified with a high malignancy risk score by the old version, while it was 93.5% (689/737) for the newer version. Clinical relevance Understanding how version updates of AI models might impact screening mammography performance will be important for future quality assurance and validation of AI models.
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Autoren
Institutionen
- Cancer Registry of Norway(NO)
- University of Wisconsin–Madison(US)
- St Olav's University Hospital(NO)
- Norwegian University of Science and Technology(NO)
- Ålesund Hospital(NO)
- Lund University(SE)
- Skåne University Hospital(SE)
- University of Nottingham(GB)
- Nottingham City Hospital(GB)
- University of Southern California(US)
- Norwegian Institute of Public Health(NO)
- University of Oslo(NO)
- UiT The Arctic University of Norway(NO)