机器学习模型、可信的研究环境和英国健康数据:确保医疗保健领域人工智能发展的安全和有益的未来。

IF 3.3 2区 哲学 Q1 ETHICS
Charalampia Xaroula Kerasidou, Maeve Malone, Angela Daly, Francesco Tava
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引用次数: 1

摘要

健康数字化以及在人工智能和机器学习(ML)中使用健康数据,包括随后将用于医疗保健的应用程序,是当前英国和其他国家医疗保健系统和政策的主要主题。获得丰富和具有代表性的数据是强大的机器学习开发的关键,英国健康数据集是特别有吸引力的来源。然而,确保这些研究和发展符合公众利益、产生公共利益和保护隐私是关键的挑战。可信研究环境(TREs)被定位为平衡医疗数据研究与隐私和公共利益的不同利益的一种方式。使用TRE数据来训练ML模型对之前在这些社会利益之间取得的平衡提出了各种挑战,迄今为止尚未在文献中讨论过。这些挑战包括在ML模型中披露个人数据的可能性,ML模型的动态性以及如何在此背景下(重新)构思公共利益。为了使用英国健康数据促进机器学习研究,TREs和其他参与英国健康数据政策生态系统的人需要意识到这些问题,并努力解决这些问题,以继续确保真正为公众服务的“安全”健康和护理数据环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning models, trusted research environments and UK health data: ensuring a safe and beneficial future for AI development in healthcare.

Digitalisation of health and the use of health data in artificial intelligence, and machine learning (ML), including for applications that will then in turn be used in healthcare are major themes permeating current UK and other countries' healthcare systems and policies. Obtaining rich and representative data is key for robust ML development, and UK health data sets are particularly attractive sources for this. However, ensuring that such research and development is in the public interest, produces public benefit and preserves privacy are key challenges. Trusted research environments (TREs) are positioned as a way of balancing the diverging interests in healthcare data research with privacy and public benefit. Using TRE data to train ML models presents various challenges to the balance previously struck between these societal interests, which have hitherto not been discussed in the literature. These challenges include the possibility of personal data being disclosed in ML models, the dynamic nature of ML models and how public benefit may be (re)conceived in this context. For ML research to be facilitated using UK health data, TREs and others involved in the UK health data policy ecosystem need to be aware of these issues and work to address them in order to continue to ensure a 'safe' health and care data environment that truly serves the public.

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来源期刊
Journal of Medical Ethics
Journal of Medical Ethics 医学-医学:伦理
CiteScore
7.80
自引率
9.80%
发文量
164
审稿时长
4-8 weeks
期刊介绍: Journal of Medical Ethics is a leading international journal that reflects the whole field of medical ethics. The journal seeks to promote ethical reflection and conduct in scientific research and medical practice. It features articles on various ethical aspects of health care relevant to health care professionals, members of clinical ethics committees, medical ethics professionals, researchers and bioscientists, policy makers and patients. Subscribers to the Journal of Medical Ethics also receive Medical Humanities journal at no extra cost. JME is the official journal of the Institute of Medical Ethics.
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