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规范黑箱医学

Regulating Black-Box Medicine.

作者信息

Price W Nicholson

机构信息

University of Michigan Law School.

出版信息

Mich Law Rev. 2017;116(3):421-74.

Abstract

Data drive modern medicine. And our tools to analyze those data are growing ever more powerful. As health data are collected in greater and greater amounts, sophisticated algorithms based on those data can drive medical innovation, improve the process of care, and increase efficiency. Those algorithms, however, vary widely in quality. Some are accurate and powerful, while others may be riddled with errors or based on faulty science. When an opaque algorithm recommends an insulin dose to a diabetic patient, how do we know that dose is correct? Patients, providers, and insurers face substantial difficulties in identifying high-quality algorithms; they lack both expertise and proprietary information. How should we ensure that medical algorithms are safe and effective? Medical algorithms need regulatory oversight, but that oversight must be appropriately tailored. Unfortunately, the Food and Drug Administration (FDA) has suggested that it will regulate algorithms under its traditional framework, a relatively rigid system that is likely to stifle innovation and to block the development of more flexible, current algorithms. This Article draws upon ideas from the new governance movement to suggest a different path. FDA should pursue a more adaptive regulatory approach with requirements that developers disclose information underlying their algorithms. Disclosure would allow FDA oversight to be supplemented with evaluation by providers, hospitals, and insurers. This collaborative approach would supplement the agency's review with ongoing real-world feedback from sophisticated market actors. Medical algorithms have tremendous potential, but ensuring that such potential is developed in high-quality ways demands a careful balancing between public and private oversight, and a role for FDA that mediates--but does not dominate--the rapidly developing industry.

摘要

数据驱动着现代医学。而且我们分析这些数据的工具正变得越来越强大。随着健康数据的收集量越来越大,基于这些数据的复杂算法能够推动医学创新、改善护理流程并提高效率。然而,这些算法的质量差异很大。有些准确且强大,而有些可能充满错误或基于错误的科学依据。当一个不透明的算法为糖尿病患者推荐胰岛素剂量时,我们如何知道这个剂量是正确的呢?患者、医疗服务提供者和保险公司在识别高质量算法方面面临巨大困难;他们既缺乏专业知识,也没有专有信息。我们应如何确保医学算法的安全与有效呢?医学算法需要监管,但这种监管必须适度调整。不幸的是,美国食品药品监督管理局(FDA)表示将在其传统框架下对算法进行监管,这是一个相对僵化的系统,很可能会抑制创新并阻碍更灵活的当前算法的开发。本文借鉴新治理运动的理念,提出一条不同的路径。FDA应采用一种更具适应性的监管方法,要求开发者披露其算法背后的信息。信息披露将使FDA的监管能够得到医疗服务提供者(医疗机构)、医院和保险公司的评估的补充。这种协作方法将通过来自经验丰富的市场参与者的持续现实世界反馈来补充该机构的审查。医学算法具有巨大潜力,但要确保以高质量的方式开发这种潜力,就需要在公共和私人监管之间仔细权衡,并且FDA要发挥调解作用——而非主导作用——于这个快速发展的行业。

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