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Artificial intelligence-assisted double reading of chest radiographs to detect clinically relevant missed findings: a two-centre evaluation.

Laurens TopffSanne SteltenpoolErik R RanschaertNaglis RamanauskasRenee MenezesJacob J VisserRegina G H Beets-TanNolan S Hartkamp
Published in: European radiology (2024)
• A commercially available double reading system supported by artificial intelligence was evaluated to detect reporting errors in chest radiographs (n=25,104) from two institutions. • Clinically relevant missed findings were found in 0.1% of chest radiographs and consisted of unreported lung nodules, pneumothoraces and consolidations. • Applying AI software as a secondary reader after report authorisation can assist in reducing diagnostic errors without interrupting the radiologist's reading workflow. However, the number of AI-detected discrepancies was considerable and required review by a radiologist to assess their relevance.
Keyphrases
  • artificial intelligence
  • machine learning
  • big data
  • working memory
  • deep learning
  • adverse drug
  • patient safety
  • emergency department
  • electronic health record
  • drug induced