McKay Francis, Williams Bethany J, Prestwich Graham, Treanor Darren, Hallowell Nina
Department of Population Health, The Ethox Centre and the Wellcome Centre for Ethics and Humanities, Nuffield, University of Oxford, Oxford, OX3 7LF, England.
Department of Histopathology, St James University Hospital, Bexley Wing, Leeds, LS9 7TF, England.
Res Involv Engagem. 2022 May 21;8(1):21. doi: 10.1186/s40900-022-00357-7.
There is a growing consensus among scholars, national governments, and intergovernmental organisations of the need to involve the public in decision-making around the use of artificial intelligence (AI) in society. Focusing on the UK, this paper asks how that can be achieved for medical AI research, that is, for research involving the training of AI on data from medical research databases. Public governance of medical AI research in the UK is generally achieved in three ways, namely, via lay representation on data access committees, through patient and public involvement groups, and by means of various deliberative democratic projects such as citizens' juries, citizen panels, citizen assemblies, etc.-what we collectively call "citizen forums". As we will show, each of these public involvement initiatives have complementary strengths and weaknesses for providing oversight of medical AI research. As they are currently utilized, however, they are unable to realize the full potential of their complementarity due to insufficient information transfer across them. In order to synergistically build on their contributions, we offer here a multi-scale model integrating all three. In doing so we provide a unified public governance model for medical AI research, one that, we argue, could improve the trustworthiness of big data and AI related medical research in the future.
学者、各国政府和政府间组织日益达成共识,认为有必要让公众参与社会中围绕人工智能(AI)使用的决策。本文以英国为重点,探讨如何在医学人工智能研究中实现这一点,即涉及在医学研究数据库的数据上训练人工智能的研究。英国医学人工智能研究的公共治理通常通过三种方式实现,即通过数据访问委员会中的外行代表、患者和公众参与团体,以及通过各种协商民主项目,如公民陪审团、公民小组、公民大会等——我们统称为“公民论坛”。正如我们将展示的,这些公众参与举措在监督医学人工智能研究方面都有互补的优势和劣势。然而,就目前的使用情况而言,由于它们之间信息传递不足,无法充分发挥其互补潜力。为了协同利用它们的贡献,我们在此提供一个整合这三种方式的多尺度模型。这样做,我们为医学人工智能研究提供了一个统一的公共治理模型,我们认为,这个模型未来可以提高大数据和人工智能相关医学研究的可信度。