Towards clinical AI fairness: A translational perspective
Mingxuan Liu
Yilin Ning
Salinelat Teixayavong
M. Mertens
Jie Xu
Daniel Ting
L. T. Cheng
J. Ong
Zhen Ling Teo
Ting Fang Tan
Ravi Chandran Narrendar
Fei-Yue Wang
L. A. Celi
M. Ong
Nan Liu

Abstract
Artificial intelligence (AI) has demonstrated the ability to extract insights from data, but the issue of fairness remains a concern in high-stakes fields such as healthcare. Despite extensive discussion and efforts in algorithm development, AI fairness and clinical concerns have not been adequately addressed. In this paper, we discuss the misalignment between technical and clinical perspectives of AI fairness, highlight the barriers to AI fairness' translation to healthcare, advocate multidisciplinary collaboration to bridge the knowledge gap, and provide possible solutions to address the clinical concerns pertaining to AI fairness.
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