A Personalized Patient Preference Predictor for Substituted Judgments in Healthcare: Technically Feasible and Ethically Desirable.

IF 17 1区 哲学 Q1 ETHICS American Journal of Bioethics Pub Date : 2024-07-01 Epub Date: 2024-01-16 DOI:10.1080/15265161.2023.2296402
Brian D Earp, Sebastian Porsdam Mann, Jemima Allen, Sabine Salloch, Vynn Suren, Karin Jongsma, Matthias Braun, Dominic Wilkinson, Walter Sinnott-Armstrong, Annette Rid, David Wendler, Julian Savulescu
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Abstract

When making substituted judgments for incapacitated patients, surrogates often struggle to guess what the patient would want if they had capacity. Surrogates may also agonize over having the (sole) responsibility of making such a determination. To address such concerns, a Patient Preference Predictor (PPP) has been proposed that would use an algorithm to infer the treatment preferences of individual patients from population-level data about the known preferences of people with similar demographic characteristics. However, critics have suggested that even if such a PPP were more accurate, on average, than human surrogates in identifying patient preferences, the proposed algorithm would nevertheless fail to respect the patient's (former) autonomy since it draws on the 'wrong' kind of data: namely, data that are not specific to the individual patient and which therefore may not reflect their actual values, or their reasons for having the preferences they do. Taking such criticisms on board, we here propose a new approach: the Personalized Patient Preference Predictor (P4). The P4 is based on recent advances in machine learning, which allow technologies including large language models to be more cheaply and efficiently 'fine-tuned' on person-specific data. The P4, unlike the PPP, would be able to infer an individual patient's preferences from material (e.g., prior treatment decisions) that is in fact specific to them. Thus, we argue, in addition to being potentially more accurate at the individual level than the previously proposed PPP, the predictions of a P4 would also more directly reflect each patient's own reasons and values. In this article, we review recent discoveries in artificial intelligence research that suggest a P4 is technically feasible, and argue that, if it is developed and appropriately deployed, it should assuage some of the main autonomy-based concerns of critics of the original PPP. We then consider various objections to our proposal and offer some tentative replies.

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医疗保健中替代判断的个性化患者偏好预测器:技术上可行,伦理上可取。
在为无行为能力的病人做出替代判断时,代理者往往很难猜测病人如果有行为能力会想要什么。代 理人也可能会为(独自)承担做出这种判断的责任而苦恼。为了解决这些问题,有人提出了患者偏好预测器(PPP),该预测器将使用一种算法,从具有类似人口特征的人群的已知偏好数据中推断出个别患者的治疗偏好。然而,批评者认为,即使这种 PPP 在识别患者偏好方面平均比人类代理更准确,但所提议的算法仍无法尊重患者(以前的)自主权,因为它使用的是 "错误 "的数据:即并非针对患者个人的数据,因此可能无法反映他们的实际价值观,或他们拥有这种偏好的原因。考虑到这些批评意见,我们在此提出一种新方法:个性化患者偏好预测器(P4)。P4 基于机器学习领域的最新进展,这些进展使得包括大型语言模型在内的技术能够以更低的成本、更高的效率对特定个人数据进行 "微调"。与 PPP 不同的是,P4 能够从资料(如先前的治疗决定)中推断出患者的个人偏好,而这些资料实际上是针对患者本人的。因此,我们认为,P4 除了在个体层面上可能比之前提出的 PPP 更准确之外,其预测还能更直接地反映每位患者自身的原因和价值观。在这篇文章中,我们回顾了人工智能研究的最新发现,这些发现表明 P4 在技术上是可行的,我们还认为,如果 P4 得到开发和适当部署,它应该可以缓解最初的 PPP 的批评者基于自主权的一些主要担忧。然后,我们考虑了对我们的建议提出的各种反对意见,并给出了一些初步答复。
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来源期刊
American Journal of Bioethics
American Journal of Bioethics 社会科学-科学史与科学哲学
CiteScore
12.30
自引率
26.90%
发文量
250
审稿时长
6-12 weeks
期刊介绍: The American Journal of Bioethics (AJOB) is a renowned global publication focused on bioethics. It tackles pressing ethical challenges in the realm of health sciences. With a commitment to the original vision of bioethics, AJOB explores the social consequences of advancements in biomedicine. It sparks meaningful discussions that have proved invaluable to a wide range of professionals, including judges, senators, journalists, scholars, and educators. AJOB covers various areas of interest, such as the ethical implications of clinical research, ensuring access to healthcare services, and the responsible handling of medical records and data. The journal welcomes contributions in the form of target articles presenting original research, open peer commentaries facilitating a dialogue, book reviews, and responses to open peer commentaries. By presenting insightful and authoritative content, AJOB continues to shape the field of bioethics and engage diverse stakeholders in crucial conversations about the intersection of medicine, ethics, and society.
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