Empowering nurses to champion Health equity & BE FAIR: Bias elimination for fair and responsible AI in healthcare

被引:10
作者
Cary Jr, Michael P. [1 ,2 ,3 ]
Bessias, Sophia [2 ,3 ]
McCall, Jonathan [2 ]
Pencina, Michael J. [2 ,3 ]
Grady, Siobahn D. [4 ]
Lytle, Kay [1 ,3 ]
Economou-Zavlanos, Nicoleta J. [2 ,3 ]
机构
[1] Duke Univ, Sch Nursing, 307 Trent Dr, DUMC 3322, Durham, NC 27710 USA
[2] Duke Univ, Sch Med, Durham, NC USA
[3] Duke Univ Hlth Syst, Durham, NC USA
[4] North Carolina Cent Univ, Durham, NC USA
基金
美国国家卫生研究院;
关键词
artificial intelligence; ethics; Health equity; nursing; social determinants of health; ARTIFICIAL-INTELLIGENCE; PALLIATIVE CARE; ALGORITHMS;
D O I
10.1111/jnu.13007
中图分类号
R47 [护理学];
学科分类号
1011 ;
摘要
BackgroundThe concept of health equity by design encompasses a multifaceted approach that integrates actions aimed at eliminating biased, unjust, and correctable differences among groups of people as a fundamental element in the design of algorithms. As algorithmic tools are increasingly integrated into clinical practice at multiple levels, nurses are uniquely positioned to address challenges posed by the historical marginalization of minority groups and its intersections with the use of "big data" in healthcare settings; however, a coherent framework is needed to ensure that nurses receive appropriate training in these domains and are equipped to act effectively.PurposeWe introduce the Bias Elimination for Fair AI in Healthcare (BE FAIR) framework, a comprehensive strategic approach that incorporates principles of health equity by design, for nurses to employ when seeking to mitigate bias and prevent discriminatory practices arising from the use of clinical algorithms in healthcare. By using examples from a "real-world" AI governance framework, we aim to initiate a wider discourse on equipping nurses with the skills needed to champion the BE FAIR initiative.MethodsDrawing on principles recently articulated by the Office of the National Coordinator for Health Information Technology, we conducted a critical examination of the concept of health equity by design. We also reviewed recent literature describing the risks of artificial intelligence (AI) technologies in healthcare as well as their potential for advancing health equity. Building on this context, we describe the BE FAIR framework, which has the potential to enable nurses to take a leadership role within health systems by implementing a governance structure to oversee the fairness and quality of clinical algorithms. We then examine leading frameworks for promoting health equity to inform the operationalization of BE FAIR within a local AI governance framework.ResultsThe application of the BE FAIR framework within the context of a working governance system for clinical AI technologies demonstrates how nurses can leverage their expertise to support the development and deployment of clinical algorithms, mitigating risks such as bias and promoting ethical, high-quality care powered by big data and AI technologies.Conclusion and RelevanceAs 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.
引用
收藏
页码:130 / 139
页数:10
相关论文
共 32 条
[1]   Addressing algorithmic bias and the perpetuation of health inequities: An AI bias aware framework [J].
Agarwal, R. ;
Bjarnadottir, M. ;
Rhue, L. ;
Dugas, M. ;
Crowley, K. ;
Clark, J. ;
Gao, G. .
HEALTH POLICY AND TECHNOLOGY, 2023, 12 (01)
[2]   Prediction of hospital no-show appointments through artificial intelligence algorithms [J].
AlMuhaideb, Sarab ;
Alswailem, Osama ;
Alsubaie, Nayef ;
Ferwana, Ibtihal ;
Alnajem, Afnan .
ANNALS OF SAUDI MEDICINE, 2019, 39 (06) :373-381
[3]   Using Google Flu Trends data in forecasting influenza-like-illness related ED visits in Omaha, Nebraska [J].
Araz, Ozgur M. ;
Bentley, Dan ;
Muelleman, Robert L. .
AMERICAN JOURNAL OF EMERGENCY MEDICINE, 2014, 32 (09) :1016-1023
[4]  
Argentieri R., 2022, EMBRACING HLTH EQUIT
[5]   A framework for the oversight and local deployment of safe and high-quality prediction models [J].
Bedoya, Armando D. ;
Economou-Zavlanos, Nicoleta J. ;
Goldstein, Benjamin A. ;
Young, Allison ;
Jelovsek, J. Eric ;
O'Brien, Cara ;
Parrish, Amanda B. ;
Elengold, Scott ;
Lytle, Kay ;
Balu, Suresh ;
Huang, Erich ;
Poon, Eric G. ;
Pencina, Michael J. .
JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2022, 29 (09) :1631-1636
[6]  
Brenan M., 2024, Ethics ratings of nearly all professions down in U.S. Politics
[7]   Mitigating Racial And Ethnic Bias And Advancing Health Equity In Clinical Algorithms: A Scoping Review [J].
Cary Jr, Michael P. ;
Zink, Anna ;
Wei, Sijia ;
Olson, Andrew ;
Yan, Mengying ;
Senior, Rashaud ;
Bessias, Sophia ;
Gadhoumi, Kais ;
Jean-Pierre, Genevieve ;
Wang, Demy ;
Ledbetter, Leila S. ;
Economou-Zavlanos, Nicoleta J. ;
Obermeyer, Ziad ;
Pencina, Michael J. .
HEALTH AFFAIRS, 2023, 42 (10) :1359-1368
[8]   Machine Learning Algorithms to Predict Mortality and Allocate Palliative Care for Older Patients With Hip Fracture [J].
Cary, Michael P., Jr. ;
Zhuang, Farica ;
Draelos, Rachel Lea ;
Pan, Wei ;
Amarasekara, Sathya ;
Douthit, Brian J. ;
Kang, Yunah ;
Colon-Emeric, Cathleen S. .
JOURNAL OF THE AMERICAN MEDICAL DIRECTORS ASSOCIATION, 2021, 22 (02) :291-296
[9]   Artificial Intelligence and Nursing: The Future Is Now [J].
Clancy, Thomas R. .
JOURNAL OF NURSING ADMINISTRATION, 2020, 50 (03) :125-127
[10]   What Artificial Intelligence Means for Health Care [J].
Cutler, David M. .
JAMA HEALTH FORUM, 2023, 4 (07)