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Artificial intelligence and breast screening: French Radiology Community position paper.

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This review evaluates artificial intelligence (AI) in breast imaging, offering expert consensus on its clinical value and future research directions for breast cancer screening.

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Oncology

Background:

  • Artificial intelligence (AI) is increasingly explored for applications in medical diagnostics.
  • Breast imaging is a critical area for improving cancer detection and patient outcomes.

Framework:

  • A multidisciplinary working group of physicists and radiologists convened to assess current evidence.
  • A comprehensive literature review informed the group's discussions on AI applications.

Implementation:

  • The group focused on AI's role in breast screening and diagnostic processes.
  • Discussions covered evidence from plenary and focused sessions.

Implications:

  • This paper outlines expert recommendations for the future application of AI in breast imaging.
  • Key research areas for advancing AI in breast cancer detection are identified.