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Artificial intelligence in medicine: mitigating risks and maximizing benefits via quality assurance, quality control, and acceptance testing.

Usman MahmoodAmita Shukla-DaveHeang-Ping ChanKenny H ChaRavi K SamalaQuan ChenDaniel VergaraHayit GreenspanNicholas PetrickBerkman SahinerZhimin HuoRonald M SummersKenny H ChaGeorgia TourassiThomas M DesernoKevin T GrizzardJanne J NäppiHiroyuki YoshidaDaniele ReggeRichard MazurchukKenji SuzukiLia MorraHenkjan HuismanSamuel G ArmatoLubomir Hadjiiski
Published in: BJR artificial intelligence (2024)
The adoption of artificial intelligence (AI) tools in medicine poses challenges to existing clinical workflows. This commentary discusses the necessity of context-specific quality assurance (QA), emphasizing the need for robust QA measures with quality control (QC) procedures that encompass (1) acceptance testing (AT) before clinical use, (2) continuous QC monitoring, and (3) adequate user training. The discussion also covers essential components of AT and QA, illustrated with real-world examples. We also highlight what we see as the shared responsibility of manufacturers or vendors, regulators, healthcare systems, medical physicists, and clinicians to enact appropriate testing and oversight to ensure a safe and equitable transformation of medicine through AI.
Keyphrases
  • artificial intelligence
  • quality control
  • machine learning
  • big data
  • healthcare
  • deep learning
  • transcription factor
  • palliative care
  • human health
  • electronic health record
  • climate change