A2 Refereed review article in a scientific journal

The Untapped Potential of Nursing and Allied Health Data for Improved Representation of Social Determinants of Health and Intersectionality in Artificial Intelligence Applications: A Rapid Review




AuthorsRonquillo Charlene Esteban, Mitchell James, Alhuwail Dari, Peltonen Laura-Maria, Topaz Maxim, Block Lorraine J

PublisherSchattauer

Publication year2022

JournalIMIA Yearbook of Medical Informatics

Journal name in sourceYearbook of medical informatics

Journal acronymYearb Med Inform

Volume31

Issue1

First page 94

Last page99

ISSN0943-4747

eISSN2364-0502

DOIhttps://doi.org/10.1055/s-0042-1742504

Self-archived copy’s web addresshttps://www.ncbi.nlm.nih.gov/pmc/articles/PMC9719779/


Abstract

OBJECTIVES

The objective of this paper is to draw attention to the currently underused potential of clinical documentation by nursing and allied health professions to improve the representation of social determinants of health (SDoH) and intersectionality data in electronic health records (EHRs), towards the development of equitable artificial intelligence (AI) technologies.

METHODS

A rapid review of the literature on the inclusion of nursing and allied health data and the nature of health equity information representation in the development and/or use of artificial intelligence approaches alongside expert perspectives from the International Medical Informatics Association (IMIA) Student and Emerging Professionals Working Group.

RESULTS

Consideration of social determinants of health and intersectionality data are limited in both the medical AI and nursing and allied health AI literature. As a concept being newly discussed in the context of AI, the lack of discussion of intersectionality in the literature was unsurprising. However, the limited consideration of social determinants of health was surprising, given its relatively longstanding recognition and the importance of representation of the features of diverse populations as a key requirement for equitable AI.

CONCLUSIONS

Leveraging the rich contextual data collected by nursing and allied health professions has the potential to improve the capture and representation of social determinants of health and intersectionality. This will require addressing issues related to valuing AI goals (e.g., diagnostics versus supporting care delivery) and improved EHR infrastructure to facilitate documentation of data beyond medicine. Leveraging nursing and allied health data to support equitable AI development represents a current open question for further exploration and research.



Last updated on 2024-26-11 at 18:05