Building health systems capable of leveraging AI: applying Paul Farmer's 5S framework for equitable global health.

Liam G McCoy, Azra Bihorac, Leo Anthony Celi, Matthew Elmore, Divya Kewalramani, Teddy Kwaga, Nicole Martinez-Martin, Renata Prôa, Joel Schamroth, Jonathan D Shaffer, Alaa Youssef, Amelia Fiske
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Abstract

The development of artificial intelligence (AI) applications in healthcare is often positioned as a solution to the greatest challenges facing global health. Advocates propose that AI can bridge gaps in care delivery and access, improving healthcare quality and reducing inequity, including in resource-constrained settings. A broad base of critical scholarship has highlighted important issues with healthcare AI, including algorithmic bias and inequitable and inaccurate model outputs. While such criticisms are valid, there exists a much more fundamental challenge that is often overlooked in global health policy debates: the dangerous mismatch between AI's imagined benefits and the material realities of healthcare systems globally. AI cannot be deployed effectively or ethically in contexts lacking sufficient social and material infrastructure and resources to provide effective healthcare services. Continued investments in AI within unprepared, under-resourced contexts risk misallocating resources and potentially causing more harm than good. The article concludes by providing concrete questions to assess AI systemic capacity and socio-technical readiness in global health.

建立能够利用人工智能的卫生系统:应用Paul Farmer的5S框架实现公平的全球卫生。
人工智能(AI)在医疗保健领域的应用发展通常被定位为解决全球卫生面临的最大挑战的解决方案。倡导者提出,人工智能可以弥合医疗服务和获取方面的差距,提高医疗质量,减少不平等,包括在资源有限的环境中。广泛的批判性学术研究强调了医疗人工智能的重要问题,包括算法偏见以及不公平和不准确的模型输出。尽管这些批评是有道理的,但在全球卫生政策辩论中,存在着一个往往被忽视的更为根本的挑战:人工智能想象中的好处与全球医疗体系的物质现实之间存在危险的不匹配。在缺乏足够的社会和物质基础设施和资源以提供有效的医疗保健服务的情况下,人工智能无法得到有效或合乎道德的部署。在没有准备、资源不足的情况下继续投资人工智能,可能会导致资源分配不当,并可能造成弊大于利。文章最后提出了评估全球卫生领域人工智能系统能力和社会技术准备情况的具体问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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