不确定性、证据和机器学习与医疗实践的整合。

IF 1.3 3区 哲学 Q3 ETHICS Journal of Medicine and Philosophy Pub Date : 2023-02-17 DOI:10.1093/jmp/jhac034
Thomas Grote, Philipp Berens
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引用次数: 7

摘要

鉴于机器学习在医疗应用方面的最新进展,医疗诊断的自动化迫在眉睫。也就是说,在机器学习算法进入临床实践之前,需要克服认知层面的各种问题。在本文中,我们讨论了临床医生在做出诊断判断时试图评估算法证据的可信度时产生的不同不确定性来源。因此,我们研究了当前机器学习算法(特别是深度学习)的许多局限性,并强调了它们与医学诊断的相关性。我们考察的问题包括深度学习的理论基础(尚未得到充分理解)、算法决策的不透明性、机器学习模型的脆弱性,以及对用于训练模型的医疗数据质量的担忧。在此基础上,我们讨论了不确定性改善策略的不同需求,以确保将机器学习整合到临床环境中以有意义的方式证明在医学上有益。
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Uncertainty, Evidence, and the Integration of Machine Learning into Medical Practice.

In light of recent advances in machine learning for medical applications, the automation of medical diagnostics is imminent. That said, before machine learning algorithms find their way into clinical practice, various problems at the epistemic level need to be overcome. In this paper, we discuss different sources of uncertainty arising for clinicians trying to evaluate the trustworthiness of algorithmic evidence when making diagnostic judgments. Thereby, we examine many of the limitations of current machine learning algorithms (with deep learning in particular) and highlight their relevance for medical diagnostics. Among the problems we inspect are the theoretical foundations of deep learning (which are not yet adequately understood), the opacity of algorithmic decisions, and the vulnerabilities of machine learning models, as well as concerns regarding the quality of medical data used to train the models. Building on this, we discuss different desiderata for an uncertainty amelioration strategy that ensures that the integration of machine learning into clinical settings proves to be medically beneficial in a meaningful way.

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来源期刊
CiteScore
2.90
自引率
6.20%
发文量
30
期刊介绍: This bimonthly publication explores the shared themes and concerns of philosophy and the medical sciences. Central issues in medical research and practice have important philosophical dimensions, for, in treating disease and promoting health, medicine involves presuppositions about human goals and values. Conversely, the concerns of philosophy often significantly relate to those of medicine, as philosophers seek to understand the nature of medical knowledge and the human condition in the modern world. In addition, recent developments in medical technology and treatment create moral problems that raise important philosophical questions. The Journal of Medicine and Philosophy aims to provide an ongoing forum for the discussion of such themes and issues.
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