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令人不安的透明度:临床应用中的人工智能 (AI)。

(De)troubling transparency: artificial intelligence (AI) for clinical applications.

机构信息

School of Sociology, Politics and International Studies, University of Bristol, Bristol, UK

Interchange Research, London, UK.

出版信息

Med Humanit. 2023 Mar;49(1):17-26. doi: 10.1136/medhum-2021-012318. Epub 2022 May 11.

Abstract

Artificial intelligence (AI) and machine learning (ML) techniques occupy a prominent role in medical research in terms of the innovation and development of new technologies. However, while many perceive AI as a technology of promise and hope-one that is allowing for more early and accurate diagnosis-the acceptance of AI and ML technologies in hospitals remains low. A major reason for this is the lack of transparency associated with these technologies, in particular epistemic transparency, which results in AI disturbing or troubling established knowledge practices in clinical contexts. In this article, we describe the development process of one AI application for a clinical setting. We show how epistemic transparency is negotiated and co-produced in close collaboration between AI developers and clinicians and biomedical scientists, forming the context in which AI is accepted as an epistemic operator. Drawing on qualitative research with collaborative researchers developing an AI technology for the early diagnosis of a rare respiratory disease (pulmonary hypertension/PH), this paper examines how including clinicians and clinical scientists in the collaborative practices of AI developers de-troubles transparency. Our research shows how de-troubling transparency occurs in three dimensions of AI development relating to PH: , and The close collaboration results in an AI application that is at once social and technological: it integrates and inscribes into the technology the knowledge processes of the different participants in its development. We suggest that it is a misnomer to call these applications 'artificial' intelligence, and that they would be better developed and implemented if they were reframed as forms of sociotechnical intelligence.

摘要

人工智能(AI)和机器学习(ML)技术在医学研究中处于创新和发展新技术的突出地位。然而,尽管许多人认为 AI 是一种充满希望和潜力的技术,可以实现更早、更准确的诊断,但医院对 AI 和 ML 技术的接受程度仍然很低。造成这种情况的一个主要原因是这些技术缺乏透明度,特别是认识论透明度,这导致 AI 在临床环境中扰乱或困扰既定的知识实践。在本文中,我们描述了一种用于临床环境的 AI 应用程序的开发过程。我们展示了认识论透明度是如何在 AI 开发人员与临床医生和生物医学科学家密切合作的过程中进行协商和共同产生的,形成了 AI 被接受为认识论算子的背景。本研究通过与合作研究人员进行的定性研究,这些研究人员正在开发一种用于早期诊断罕见呼吸道疾病(肺动脉高压/PH)的 AI 技术,探讨了让临床医生和临床科学家参与 AI 开发人员的合作实践如何解决透明度问题。我们的研究表明,解决透明度问题发生在与 PH 相关的 AI 开发的三个维度中:、和。这种密切的合作导致了一种既是社会的又是技术的 AI 应用程序:它将不同参与者的知识过程整合并铭刻在技术中。我们认为,将这些应用程序称为“人工智能”是用词不当,如果将它们重新定义为社会技术智能形式,它们将得到更好的开发和实施。

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