Evelyn Wong, Alvaro Bermudez-Cañete, Matthew J Campbell, David C Rhew
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引用次数: 0
Abstract
In recent decades, the integration of artificial intelligence (AI) into health care has revolutionized diagnostics, treatment customization, and delivery. In low-resource settings, AI offers significant potential to address health care disparities exacerbated by shortages of medical professionals and other resources. However, implementing AI effectively and responsibly in these settings requires careful consideration of context-specific needs and barriers to equitable care. This article explores the practical deployment of AI in low-resource environments through a review of existing literature and interviews with experts, ranging from health care providers and administrators to AI tool developers and government consultants. The authors highlight 4 critical areas for effective AI deployment: infrastructure requirements, deployment and data management, education and training, and responsible AI practices. By addressing these aspects, the proposed framework aims to guide sustainable AI integration, minimizing risk, and enhancing health care access in underserved regions.
期刊介绍:
Population Health Management provides comprehensive, authoritative strategies for improving the systems and policies that affect health care quality, access, and outcomes, ultimately improving the health of an entire population. The Journal delivers essential research on a broad range of topics including the impact of social, cultural, economic, and environmental factors on health care systems and practices.
Population Health Management coverage includes:
Clinical case reports and studies on managing major public health conditions
Compliance programs
Health economics
Outcomes assessment
Provider incentives
Health care reform
Resource management
Return on investment (ROI)
Health care quality
Care coordination.