Machine learning, healthcare resource allocation, and patient consent.

Jamie Webb
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Abstract

The impact of machine learning in healthcare on patient informed consent is now the subject of significant inquiry in bioethics. However, the topic has predominantly been considered in the context of black box diagnostic or treatment recommendation algorithms. The impact of machine learning involved in healthcare resource allocation on patient consent remains undertheorized. This paper will establish where patient consent is relevant in healthcare resource allocation, before exploring the impact on informed consent from the introduction of black box machine learning into resource allocation. It will then consider the arguments for informing patients about the use of machine learning in resource allocation, before exploring the challenge of whether individual patients could principally contest algorithmic prioritization decisions involving black box machine learning. Finally, this paper will examine how different forms of opacity in machine learning involved in resource allocation could be a barrier to patient consent to clinical decision-making in different healthcare contexts.

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机器学习、医疗资源分配和患者同意。
医疗保健领域的机器学习对患者知情同意的影响目前已成为生命伦理学的重要研究课题。然而,这一话题主要是在黑盒诊断或治疗建议算法的背景下被考虑的。医疗资源分配中的机器学习对患者同意的影响仍未被充分理论化。本文将在探讨将黑盒机器学习引入资源分配对知情同意的影响之前,先确定患者同意在医疗资源分配中的相关性。然后,本文将考虑让患者了解机器学习在资源分配中的应用的论据,然后探讨患者个人能否对涉及黑盒机器学习的算法优先级决定提出主要质疑。最后,本文将探讨在不同的医疗环境下,资源分配中涉及的机器学习的不同形式的不透明会如何阻碍患者对临床决策的同意。
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来源期刊
CiteScore
2.30
自引率
16.70%
发文量
45
期刊最新文献
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