Abstract

ObjectivesArtificial intelligence (AI) is reshaping health and medicine, especially through its potential to address health disparities in low- and middle-income countries (LMICs). However, there are several issues associated with the use of AI that may reduce its impact and potentially exacerbate global health disparities. This study presents the key issues in AI deployment faced by LMICs. Study designThematic analysis. MethodsPubMed, Scopus, Embase and the Web of Science databases were searched, from the date of their inception until September 2023, using the terms “artificial intelligence”, “LMICs”, “ethic∗” and “global health”. Additional searches were conducted by snowballing references before and after the primary search. The final studies were chosen based on their relevance to the topic of this article. ResultsAfter reviewing 378 articles, 14 studies were included in the final analysis. A concept named the ‘AI Deployment Paradox’ was introduced to focus on the challenges of using AI to address health disparities in LMICs, and the following three categories were identified: (1) data poverty and contextual shifts; (2) cost-effectiveness and health equity; and (3) new technological colonisation and potential exploitation. ConclusionsThe relationship between global health, AI and ethical considerations is an area that requires systematic investigation. Relying on health data inherent with structural biases and deploying AI without systematic ethical considerations may exacerbate global health inequalities. Addressing these challenges requires nuanced socio-political comprehension, localised stakeholder engagement, and well-considered ethical and regulatory frameworks.

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