使用算法进行医疗诊断在道德上有何利害关系?将讨论扩展到风险和危害之外。

IF 1.1 3区 哲学 Q3 ETHICS
Theoretical Medicine and Bioethics Pub Date : 2021-12-01 Epub Date: 2022-01-01 DOI:10.1007/s11017-021-09553-0
Bas de Boer, Olya Kudina
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引用次数: 0

摘要

在本文中,我们探讨了基于机器学习的临床决策支持系统在医疗诊断过程中的定性道德影响。迄今为止,有关机器学习的讨论主要集中在可以定量测量和评估的问题上,如估计潜在危害程度或计算产生的风险。我们认为,这种讨论忽视了这些技术在质量上的道德影响。技术道德变革和技术中介理论探讨了技术与道德之间的相互作用,我们借鉴这两种理论的哲学方法,对采用机器学习辅助医疗诊断的相关问题进行了分析。我们分析了机器学习系统对不同利益相关者带来的预期道德问题,如训练模型以产生诊断结果的方式存在偏差和不透明,医疗服务提供者、患者和开发者对自身角色和职业的理解发生了变化,以及现有医疗立法形式面临挑战。尽管是初步性的,但技术道德变革和技术调解方法所提供的见解扩展并丰富了当前关于诊断实践中机器学习的讨论,将独特的、目前尚未充分探索的关注领域带到了前沿。这些见解有助于在将机器学习技术应用于医疗诊断时,做出更全面、更明智的决策,同时承认多方利益相关者的利益,以及技术在产生、延续和改变医疗保健中的伦理问题方面所发挥的积极作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What is morally at stake when using algorithms to make medical diagnoses? Expanding the discussion beyond risks and harms.

In this paper, we examine the qualitative moral impact of machine learning-based clinical decision support systems in the process of medical diagnosis. To date, discussions about machine learning in this context have focused on problems that can be measured and assessed quantitatively, such as by estimating the extent of potential harm or calculating incurred risks. We maintain that such discussions neglect the qualitative moral impact of these technologies. Drawing on the philosophical approaches of technomoral change and technological mediation theory, which explore the interplay between technologies and morality, we present an analysis of concerns related to the adoption of machine learning-aided medical diagnosis. We analyze anticipated moral issues that machine learning systems pose for different stakeholders, such as bias and opacity in the way that models are trained to produce diagnoses, changes to how health care providers, patients, and developers understand their roles and professions, and challenges to existing forms of medical legislation. Albeit preliminary in nature, the insights offered by the technomoral change and the technological mediation approaches expand and enrich the current discussion about machine learning in diagnostic practices, bringing distinct and currently underexplored areas of concern to the forefront. These insights can contribute to a more encompassing and better informed decision-making process when adapting machine learning techniques to medical diagnosis, while acknowledging the interests of multiple stakeholders and the active role that technologies play in generating, perpetuating, and modifying ethical concerns in health care.

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来源期刊
CiteScore
1.80
自引率
14.30%
发文量
43
期刊介绍: AIMS & SCOPE Theoretical Medicine and Bioethics examines clinical judgment and reasoning, medical concepts such as health and disease, the philosophical basis of medical science, and the philosophical ethics of health care and biomedical research Theoretical Medicine and Bioethics is an international forum for interdisciplinary studies in the ethics of health care and in the philosophy and methodology of medical practice and biomedical research. Coverage in the philosophy of medicine includes the theoretical examination of clinical judgment and decision making; theories of health promotion and preventive care; the problems of medical language and knowledge acquisition; theory formation in medicine; analysis of the structure and dynamics of medical hypotheses and theories; discussion and clarification of basic medical concepts and issues; medical application of advanced methods in the philosophy of science, and the interplay between medicine and other scientific or social institutions. Coverage of ethics includes both clinical and research ethics, with an emphasis on underlying ethical theory rather than institutional or governmental policy analysis. All philosophical methods and orientations receive equal consideration. The journal pays particular attention to developing new methods and tools for analysis and understanding of the conceptual and ethical presuppositions of the medical sciences and health care processes. Theoretical Medicine and Bioethics publishes original scholarly articles, occasional special issues on important topics, and book reviews. Related subjects » Applied Ethics & Social Responsibility – Bioethics – Ethics – Epistemology & Philosophy of Science – Medical Ethics – Medicine – Philosophy – Philosophy of Medicine – Surgery
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