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Empowering nurses to champion Health equity & BE FAIR: Bias elimination for fair and responsible AI in healthcare
20
Zitationen
7
Autoren
2024
Jahr
Abstract
As health systems learn how well-intentioned clinical algorithms can potentially perpetuate health disparities, we have an opportunity and an obligation to do better. New efforts empowering nurses to advocate for BE FAIR, involving them in AI governance, data collection methods, and the evaluation of tools intended to reduce bias, mark important steps in achieving equitable healthcare for all.
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