Management, Technology and Economics, ETH Zurich, Zürich, Switzerland
J Med Ethics. 2022 Jul;48(7):492-494. doi: 10.1136/medethics-2021-107482. Epub 2021 May 12.
In their article 'Who is afraid of black box algorithms? On the epistemological and ethical basis of trust in medical AI', Durán and Jongsma discuss the epistemic and ethical challenges raised by black box algorithms in medical practice. The opacity of black box algorithms is an obstacle to the trustworthiness of their outcomes. Moreover, the use of opaque algorithms is not normatively justified in medical practice. The authors introduce a formalism, called computational reliabilism, which allows generating justified beliefs on the algorithm reliability and trustworthy outcomes of artificial intelligence (AI) systems by means of epistemic warrants, called reliability indicators. However, they remark the need for reliability indicators specific to black box algorithms and that justified knowledge is not sufficient to justify normatively the actions of the physicians using medical AI systems. Therefore, Durán and Jongsma advocate for a more transparent design and implementation of black box algorithms, providing a series of recommendations to mitigate the epistemic and ethical challenges behind their use in medical practice. In this response, I argue that a peculiar form of black box algorithm transparency, called design publicity, may efficiently implement these recommendations. Design publicity encodes epistemic, that is, reliability indicators, and ethical recommendations for black box algorithms by means of four subtypes of transparency. These target the values and goals, their translation into design requirements, the performance and consistency of the algorithm altogether. I discuss design publicity applying it to a use case focused on the automated classification of skin lesions from medical images.
在他们的文章《谁害怕黑盒算法?论医学人工智能信任的认识论和伦理基础》中,Durán 和 Jongsma 讨论了黑盒算法在医学实践中引发的认识论和伦理挑战。黑盒算法的不透明性是其结果不可靠的障碍。此外,在医学实践中,使用不透明的算法在规范上是没有道理的。作者引入了一种形式主义,称为计算可靠性主义,它允许通过称为可靠性指标的认识论保证,生成关于算法可靠性和人工智能(AI)系统可信结果的合理信念。然而,他们指出需要针对黑盒算法的可靠性指标,并且合理的知识不足以在规范上证明使用医学 AI 系统的医生的行为是合理的。因此,Durán 和 Jongsma 主张对黑盒算法进行更透明的设计和实施,并提出了一系列建议,以减轻其在医学实践中使用所带来的认识论和伦理挑战。在这篇回应中,我认为一种特殊形式的黑盒算法透明度,称为设计公开,可能有效地实施这些建议。设计公开通过四种透明度子类型,对黑盒算法的认识论,即可靠性指标,以及伦理建议进行编码。这些目标是算法的价值观和目标、将其转化为设计要求、算法的性能和一致性。我将通过应用于一个专注于从医学图像自动分类皮肤病变的用例来讨论设计公开。