The Application of Artificial Intelligence in Health Care Resource Allocation Before and During the COVID-19 Pandemic: Scoping Review

JMIR AI Pub Date : 2023-01-30 DOI:10.2196/38397
Hao Wu, Xiao-Lin Lu, H. Wang
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Abstract

Imbalanced health care resource distribution has been central to unequal health outcomes and political tension around the world. Artificial intelligence (AI) has emerged as a promising tool for facilitating resource distribution, especially during emergencies. However, no comprehensive review exists on the use and ethics of AI in health care resource distribution. This study aims to conduct a scoping review of the application of AI in health care resource distribution, and explore the ethical and political issues in such situations. A scoping review was conducted following the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews). A comprehensive search of relevant literature was conducted in MEDLINE (Ovid), PubMed, Web of Science, and Embase from inception to February 2022. The review included qualitative and quantitative studies investigating the application of AI in health care resource allocation. The review involved 22 articles, including 9 on model development and 13 on theoretical discussions, qualitative studies, or review studies. Of the 9 on model development and validation, 5 were conducted in emerging economies, 3 in developed countries, and 1 in a global context. In terms of content, 4 focused on resource distribution at the health system level and 5 focused on resource allocation at the hospital level. Of the 13 qualitative studies, 8 were discussions on the COVID-19 pandemic and the rest were on hospital resources, outbreaks, screening, human resources, and digitalization. This scoping review synthesized evidence on AI in health resource distribution, focusing on the COVID-19 pandemic. The results suggest that the application of AI has the potential to improve efficacy in resource distribution, especially during emergencies. Efficient data sharing and collecting structures are needed to make reliable and evidence-based decisions. Health inequality, distributive justice, and transparency must be considered when deploying AI models in real-world situations.
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人工智能在COVID-19大流行前和期间医疗资源配置中的应用:范围综述
卫生保健资源分配不平衡是造成世界各地卫生结果不平等和政治紧张局势的主要原因。人工智能(AI)已成为促进资源分配的有前途的工具,特别是在紧急情况下。然而,关于人工智能在卫生资源分配中的使用和伦理问题,目前还没有全面的综述。本研究旨在对人工智能在医疗资源分配中的应用进行范围审查,并探讨这种情况下的伦理和政治问题。根据PRISMA-ScR(系统评价和范围评价扩展元分析的首选报告项目)进行范围评价。在MEDLINE (Ovid)、PubMed、Web of Science和Embase中进行了从成立到2022年2月的相关文献的全面检索。该综述包括调查人工智能在卫生保健资源分配中的应用的定性和定量研究。该综述涉及22篇文章,其中9篇关于模型发展,13篇关于理论讨论、定性研究或综述研究。在9个关于模型开发和验证的研究中,5个在新兴经济体进行,3个在发达国家进行,1个在全球范围内进行。在内容上,4篇侧重于卫生系统层面的资源配置,5篇侧重于医院层面的资源配置。在13项定性研究中,8项是关于COVID-19大流行的讨论,其余的是关于医院资源、疫情、筛查、人力资源和数字化的讨论。本综述以COVID-19大流行为重点,综合了人工智能在卫生资源分配中的证据。结果表明,人工智能的应用有可能提高资源分配的效率,特别是在紧急情况下。需要有效的数据共享和收集结构来做出可靠和基于证据的决策。在现实世界中部署人工智能模型时,必须考虑健康不平等、分配公正和透明度。
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