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治理医疗保健领域的数据与人工智能:达成国际共识。

Governing Data and Artificial Intelligence for Health Care: Developing an International Understanding.

作者信息

Morley Jessica, Murphy Lisa, Mishra Abhishek, Joshi Indra, Karpathakis Kassandra

机构信息

Oxford Internet Institute, University of Oxford, Oxford, United Kingdom.

NHSX, London, United Kingdom.

出版信息

JMIR Form Res. 2022 Jan 31;6(1):e31623. doi: 10.2196/31623.

Abstract

BACKGROUND

Although advanced analytical techniques falling under the umbrella heading of artificial intelligence (AI) may improve health care, the use of AI in health raises safety and ethical concerns. There are currently no internationally recognized governance mechanisms (policies, ethical standards, evaluation, and regulation) for developing and using AI technologies in health care. A lack of international consensus creates technical and social barriers to the use of health AI while potentially hampering market competition.

OBJECTIVE

The aim of this study is to review current health data and AI governance mechanisms being developed or used by Global Digital Health Partnership (GDHP) member countries that commissioned this research, identify commonalities and gaps in approaches, identify examples of best practices, and understand the rationale for policies.

METHODS

Data were collected through a scoping review of academic literature and a thematic analysis of policy documents published by selected GDHP member countries. The findings from this data collection and the literature were used to inform semistructured interviews with key senior policy makers from GDHP member countries exploring their countries' experience of AI-driven technologies in health care and associated governance and inform a focus group with professionals working in international health and technology to discuss the themes and proposed policy recommendations. Policy recommendations were developed based on the aggregated research findings.

RESULTS

As this is an empirical research paper, we primarily focused on reporting the results of the interviews and the focus group. Semistructured interviews (n=10) and a focus group (n=6) revealed 4 core areas for international collaborations: leadership and oversight, a whole systems approach covering the entire AI pipeline from data collection to model deployment and use, standards and regulatory processes, and engagement with stakeholders and the public. There was a broad range of maturity in health AI activity among the participants, with varying data infrastructure, application of standards across the AI life cycle, and strategic approaches to both development and deployment. A demand for further consistency at the international level and policies was identified to support a robust innovation pipeline. In total, 13 policy recommendations were developed to support GDHP member countries in overcoming core AI governance barriers and establishing common ground for international collaboration.

CONCLUSIONS

AI-driven technology research and development for health care outpaces the creation of supporting AI governance globally. International collaboration and coordination on AI governance for health care is needed to ensure coherent solutions and allow countries to support and benefit from each other's work. International bodies and initiatives have a leading role to play in the international conversation, including the production of tools and sharing of practical approaches to the use of AI-driven technologies for health care.

摘要

背景

尽管属于人工智能(AI)范畴的先进分析技术可能会改善医疗保健,但在医疗保健中使用AI引发了安全和伦理问题。目前,在医疗保健领域开发和使用AI技术尚无国际认可的治理机制(政策、伦理标准、评估和监管)。缺乏国际共识给医疗保健AI的使用造成了技术和社会障碍,同时可能阻碍市场竞争。

目的

本研究旨在回顾委托开展这项研究的全球数字健康伙伴关系(GDHP)成员国正在开发或使用的当前健康数据和AI治理机制,确定方法上的共性和差距,找出最佳实践案例,并理解政策背后的理由。

方法

通过对学术文献的范围综述以及对选定的GDHP成员国发布的政策文件进行主题分析来收集数据。收集到的数据和文献的研究结果被用于对GDHP成员国的关键高级政策制定者进行半结构化访谈,探讨他们国家在医疗保健中AI驱动技术的经验以及相关治理情况,并为一个由从事国际健康和技术工作的专业人员组成的焦点小组提供信息,以讨论相关主题和提出的政策建议。基于汇总的研究结果制定了政策建议。

结果

由于这是一篇实证研究论文,我们主要专注于报告访谈和焦点小组的结果。半结构化访谈(n = 10)和焦点小组(n = 6)揭示了国际合作的4个核心领域:领导与监督、涵盖从数据收集到模型部署和使用的整个AI流程的全系统方法、标准和监管流程,以及与利益相关者和公众的互动。参与者在医疗保健AI活动方面的成熟度差异很大,数据基础设施各不相同,AI生命周期内标准的应用情况各异,开发和部署的战略方法也不尽相同。确定需要在国际层面进一步保持一致性并制定政策,以支持强大的创新流程。总共制定了13项政策建议,以支持GDHP成员国克服核心AI治理障碍并为国际合作奠定共同基础。

结论

用于医疗保健的AI驱动技术的研发速度超过了全球支持性AI治理机制的创建速度。需要在医疗保健AI治理方面开展国际合作与协调,以确保形成连贯的解决方案,并使各国能够相互支持并从彼此的工作中受益。国际机构和倡议在国际对话中应发挥主导作用,包括制作工具以及分享使用AI驱动技术进行医疗保健的实用方法。

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