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Implementation of Clinical Artificial Intelligence in Radiology: Who Decides and How?

Dania DayeWalter F WigginsMatthew P LungrenTarik AlkasabNina KottlerBibb AllenChristopher J RothBernardo Canedo BizzoKimberly DurniakJames A BrinkDavid B LarsonKeith J DreyerCurtis P Langlotz
Published in: Radiology (2022)
As the role of artificial intelligence (AI) in clinical practice evolves, governance structures oversee the implementation, maintenance, and monitoring of clinical AI algorithms to enhance quality, manage resources, and ensure patient safety. In this article, a framework is established for the infrastructure required for clinical AI implementation and presents a road map for governance. The road map answers four key questions: Who decides which tools to implement? What factors should be considered when assessing an application for implementation? How should applications be implemented in clinical practice? Finally, how should tools be monitored and maintained after clinical implementation? Among the many challenges for the implementation of AI in clinical practice, devising flexible governance structures that can quickly adapt to a changing environment will be essential to ensure quality patient care and practice improvement objectives.
Keyphrases
  • artificial intelligence
  • quality improvement
  • machine learning
  • primary care
  • deep learning
  • patient safety
  • clinical practice
  • big data
  • healthcare
  • high resolution
  • global health
  • mass spectrometry
  • public health