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需要一种系统观点来将基于人工智能/机器学习的软件作为医疗设备进行监管。

The need for a system view to regulate artificial intelligence/machine learning-based software as medical device.

作者信息

Gerke Sara, Babic Boris, Evgeniou Theodoros, Cohen I Glenn

机构信息

1Project on Precision Medicine, Artificial Intelligence, and the Law; Petrie-Flom Center for Health Law Policy, Biotechnology, and Bioethics at Harvard Law School, Harvard University, Cambridge, MA USA.

2INSEAD, 1 Ayer Rajah Ave, Singapore, 138676 Singapore.

出版信息

NPJ Digit Med. 2020 Apr 7;3:53. doi: 10.1038/s41746-020-0262-2. eCollection 2020.

DOI:10.1038/s41746-020-0262-2
PMID:32285013
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7138819/
Abstract

Artificial intelligence (AI) and Machine learning (ML) systems in medicine are poised to significantly improve health care, for example, by offering earlier diagnoses of diseases or recommending optimally individualized treatment plans. However, the emergence of AI/ML in medicine also creates challenges, which regulators must pay attention to. Which medical AI/ML-based products should be reviewed by regulators? What evidence should be required to permit marketing for AI/ML-based software as a medical device (SaMD)? How can we ensure the safety and effectiveness of AI/ML-based SaMD that may change over time as they are applied to new data? The U.S. Food and Drug Administration (FDA), for example, has recently proposed a discussion paper to address some of these issues. But it misses an important point: we argue that regulators like the FDA need to widen their scope from evaluating medical AI/ML-based products to assessing systems. This shift in perspective-from a product view to a system view-is central to maximizing the safety and efficacy of AI/ML in health care, but it also poses significant challenges for agencies like the FDA who are used to regulating products, not systems. We offer several suggestions for regulators to make this challenging but important transition.

摘要

医学中的人工智能(AI)和机器学习(ML)系统有望显著改善医疗保健,例如通过更早地诊断疾病或推荐最佳个性化治疗方案。然而,AI/ML在医学中的出现也带来了挑战,监管机构必须予以关注。哪些基于AI/ML的医疗产品应由监管机构进行审查?对于基于AI/ML的软件作为医疗器械(SaMD)上市,需要哪些证据?随着基于AI/ML的SaMD应用于新数据,其安全性和有效性可能会随时间变化,我们如何确保这一点?例如,美国食品药品监督管理局(FDA)最近提出了一份讨论文件来解决其中一些问题。但它忽略了一个重要问题:我们认为像FDA这样的监管机构需要将其范围从评估基于AI/ML的医疗产品扩大到评估系统。这种视角的转变——从产品视角到系统视角——对于在医疗保健中最大化AI/ML的安全性和有效性至关重要,但对于习惯于监管产品而非系统的FDA等机构来说,也带来了重大挑战。我们为监管机构提供了一些建议,以实现这一具有挑战性但又很重要的转变。