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Developing Ethics and Equity Principles, Terms, and Engagement Tools to Advance Health Equity and Researcher Diversity in AI and Machine Learning: Modified Delphi Approach.

Rachele M Hendricks-SturrupMalaika SimmonsShilo H AndersKammarauche AneniEllen Wright ClaytonJoseph CocoBenjamin CollinsElizabeth HeitmanSajid HussainKaruna JoshiJosh LemieuxLaurie Lovett NovakDaniel J RubinAnil ShankerTalitha WashingtonGabriella WatersJoyce Webb HarrisRui YinTeresa WagnerZhijun YinBradley A Malin
Published in: JMIR AI (2023)
Ongoing engagement is needed around our principles and glossary to identify and predict potential limitations in their uses in AI and ML research settings, especially for institutions with limited resources. This requires time, careful consideration, and honest discussions around what classifies an engagement incentive as meaningful to support and sustain their full engagement. By slowing down to meet historically and presently underresourced institutions and communities where they are and where they are capable of engaging and competing, there is higher potential to achieve needed diversity, ethics, and equity in AI and ML implementation in health research.
Keyphrases
  • artificial intelligence
  • social media
  • public health
  • machine learning
  • global health
  • big data
  • healthcare
  • primary care
  • human health
  • mental health
  • deep learning
  • quality improvement