Addressing health disparities in the Food and Drug Administration’s artificial intelligence and machine learning regulatory framework

Author:

Ferryman Kadija1ORCID

Affiliation:

1. Tandon School of Engineering, New York University, Brooklyn, New York, USA

Abstract

Abstract The exponential growth of health data from devices, health applications, and electronic health records coupled with the development of data analysis tools such as machine learning offer opportunities to leverage these data to mitigate health disparities. However, these tools have also been shown to exacerbate inequities faced by marginalized groups. Focusing on health disparities should be part of good machine learning practice and regulatory oversight of software as medical devices. Using the Food and Drug Administration (FDA)'s proposed framework for regulating machine learning tools in medicine, I show that addressing health disparities during the premarket and postmarket stages of review can help anticipate and mitigate group harms.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference18 articles.

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2. Envisioning a better U.S. Health Care System for all: reducing barriers to care and addressing social determinants of health;Butkus;Ann Intern Med,2020

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