改善人工智能对健康公平影响的战略:范围审查。

Q1 Earth and Planetary Sciences Journal of Geophysical Research Pub Date : 2023-02-07 DOI:10.2196/42936
Carl Thomas Berdahl, Lawrence Baker, Sean Mann, Osonde Osoba, Federico Girosi
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引用次数: 0

摘要

背景:新兴的人工智能(AI)应用有可能改善健康状况,但也可能延续或加剧不平等:新兴的人工智能(AI)应用具有改善健康的潜力,但它们也可能延续或加剧不公平现象:本综述旨在全面概述与使用人工智能应用相关的健康公平问题,并确定为解决这些问题而提出的策略:我们搜索了 PubMed、Web of Science、IEEE(电气与电子工程师协会)Xplore 数字图书馆、ProQuest U.S. Newsstream、Academic Search Complete、食品药品管理局(FDA)网站和 ClinicalTrials.gov,以确定 2014 年至 2021 年间发表的与人工智能和健康公平相关的学术和灰色文献,以及 2020 年至 2021 年 COVID-19 大流行期间与人工智能和健康公平相关的其他文献。如果文献至少指出了一个公平问题并提出了相应的解决策略,则有资格纳入我们的综述。为了对公平问题进行整理和归纳,我们采用了 4 步人工智能应用框架:背景环境、数据特征、模型设计和部署。然后,我们创建了问题与战略之间多对多的关联映射:在 660 份文件中,我们确定了 18 个公平问题和 15 个解决策略。与数据特征和模型设计相关的公平问题最为常见。为改善公平性而推荐的最常见策略包括:提高数据的数量和质量、评估应用带来的差异、增加模型报告和透明度、让更广泛的社区参与人工智能应用开发以及改善治理:各利益相关者在规划、开发和实施医疗保健领域的人工智能应用时,应回顾我们对公平问题和策略的多对多映射,以便制定适当的计划,确保受其产品影响的人群享有公平。人工智能应用程序开发人员应考虑采用以公平为重点的核对表,食品与药物管理局等监管机构也应考虑要求采用这些核对表。鉴于我们的审查仅限于网上发布的文件,开发人员可能对我们未能发现的其他问题和策略有未公开的了解。
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Strategies to Improve the Impact of Artificial Intelligence on Health Equity: Scoping Review.

Background: Emerging artificial intelligence (AI) applications have the potential to improve health, but they may also perpetuate or exacerbate inequities.

Objective: This review aims to provide a comprehensive overview of the health equity issues related to the use of AI applications and identify strategies proposed to address them.

Methods: We searched PubMed, Web of Science, the IEEE (Institute of Electrical and Electronics Engineers) Xplore Digital Library, ProQuest U.S. Newsstream, Academic Search Complete, the Food and Drug Administration (FDA) website, and ClinicalTrials.gov to identify academic and gray literature related to AI and health equity that were published between 2014 and 2021 and additional literature related to AI and health equity during the COVID-19 pandemic from 2020 and 2021. Literature was eligible for inclusion in our review if it identified at least one equity issue and a corresponding strategy to address it. To organize and synthesize equity issues, we adopted a 4-step AI application framework: Background Context, Data Characteristics, Model Design, and Deployment. We then created a many-to-many mapping of the links between issues and strategies.

Results: In 660 documents, we identified 18 equity issues and 15 strategies to address them. Equity issues related to Data Characteristics and Model Design were the most common. The most common strategies recommended to improve equity were improving the quantity and quality of data, evaluating the disparities introduced by an application, increasing model reporting and transparency, involving the broader community in AI application development, and improving governance.

Conclusions: Stakeholders should review our many-to-many mapping of equity issues and strategies when planning, developing, and implementing AI applications in health care so that they can make appropriate plans to ensure equity for populations affected by their products. AI application developers should consider adopting equity-focused checklists, and regulators such as the FDA should consider requiring them. Given that our review was limited to documents published online, developers may have unpublished knowledge of additional issues and strategies that we were unable to identify.

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来源期刊
Journal of Geophysical Research
Journal of Geophysical Research 地学-地球科学综合
CiteScore
5.80
自引率
0.00%
发文量
0
审稿时长
1 months
期刊介绍: Journal of Geophysical Research (JGR) publishes original scientific research on the physical, chemical, and biological processes that contribute to the understanding of the Earth, Sun, and solar system and all of their environments and components. JGR is currently organized into seven disciplinary sections (Atmospheres, Biogeosciences, Earth Surface, Oceans, Planets, Solid Earth, Space Physics). Sections may be added or combined in response to changes in the science.
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