我们为什么要讨论机构(不)可信度和医学机器学习?

IF 2.3 2区 哲学 Q1 ETHICS
Michiel De Proost, Giorgia Pozzi
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引用次数: 0

摘要

信任原则一直是临床机器学习系统的核心态度。然而,在哲学和伦理学文献中,信任和不信任的概念仍存在激烈的争论。在本文中,我们将从结构层面进行否定,旨在分析 "机构不信任 "的概念,从而正确诊断我们不应该如何使用医疗机器学习。首先,我们从几个例子入手,暗示在医疗机器学习方面出现的不信任氛围。其次,我们在扩展霍利承诺论的基础上引入了机构可信度的概念。第三,我们认为机构的不透明会破坏医疗机构的可信度,并可能导致新形式的证词不公正。最后,我们重点讨论了修复机构失信的可能构件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Why we should talk about institutional (dis)trustworthiness and medical machine learning.

The principle of trust has been placed at the centre as an attitude for engaging with clinical machine learning systems. However, the notions of trust and distrust remain fiercely debated in the philosophical and ethical literature. In this article, we proceed on a structural level ex negativo as we aim to analyse the concept of "institutional distrustworthiness" to achieve a proper diagnosis of how we should not engage with medical machine learning. First, we begin with several examples that hint at the emergence of a climate of distrust in the context of medical machine learning. Second, we introduce the concept of institutional trustworthiness based on an expansion of Hawley's commitment account. Third, we argue that institutional opacity can undermine the trustworthiness of medical institutions and can lead to new forms of testimonial injustices. Finally, we focus on possible building blocks for repairing institutional distrustworthiness.

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来源期刊
CiteScore
4.30
自引率
4.80%
发文量
64
期刊介绍: Medicine, Health Care and Philosophy: A European Journal is the official journal of the European Society for Philosophy of Medicine and Health Care. It provides a forum for international exchange of research data, theories, reports and opinions in bioethics and philosophy of medicine. The journal promotes interdisciplinary studies, and stimulates philosophical analysis centered on a common object of reflection: health care, the human effort to deal with disease, illness, death as well as health, well-being and life. Particular attention is paid to developing contributions from all European countries, and to making accessible scientific work and reports on the practice of health care ethics, from all nations, cultures and language areas in Europe.
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