Nationwide real-world implementation of AI for cancer detection in population-based mammography screening

Nora Eisemann, Stefan Bunk, Trasias Mukama, Hannah Baltus, Susanne A Elsner, Timo Gomille, Gerold Hecht, Sylvia Heywang-Köbrunner, Regine Rathmann, Katja Siegmann-Luz, Thilo Töllner, Toni Werner Vomweg, Christian Leibig, Alexander Katalinic

Abstract

Artificial intelligence (AI) in mammography screening has shown promise in retrospective evaluations, but few prospective studies exist. PRAIM is an observational, multicenter, real-world, noninferiority, implementation study comparing the performance of AI-supported double reading to standard double reading (without AI) among women (50-69 years old) undergoing organized mammography screening at 12 sites in Germany. Radiologists in this study voluntarily chose whether to use the AI system. From July 2021 to February 2023, a total of 463,094 women were screened (260,739 with AI support) by 119 radiologists. Radiologists in the AI-supported screening group achieved a breast cancer detection rate of 6.7 per 1,000, which was 17.6% (95% confidence interval: +5.7%, +30.8%) higher than and statistically superior to the rate (5.7 per 1,000) achieved in the control group. The recall rate in the AI group was 37.4 per 1,000, which was lower than and noninferior to that (38.3 per 1,000) in the control group (percentage difference: -2.5% (-6.5%, +1.7%)). The positive predictive value (PPV) of recall was 17.9% in the AI group compared to 14.9% in the control group. The PPV of biopsy was 64.5% in the AI group versus 59.2% in the control group. Compared to standard double reading, AI-supported double reading was associated with a higher breast cancer detection rate without negatively affecting the recall rate, strongly indicating that AI can improve mammography screening metrics.

Original languageEnglish
JournalNature Medicine
ISSN1078-8956
DOIs
Publication statusPublished - 2025

Research Areas and Centers

  • Research Area: Center for Population Medicine and Public Health (ZBV)
  • Centers: Center for Artificial Intelligence Luebeck (ZKIL)
  • Research Area: Luebeck Integrated Oncology Network (LION)

DFG Research Classification Scheme

  • 2.22-02 Public Health, Healthcare Research, Social and Occupational Medicine
  • 2.22-21 Gynaecology and Obstetrics
  • 2.22-14 Hematology, Oncology

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