Årg. 25 Nr. 44 (2026): Kunstig Intelligens og sundhed
Originalartikler

Between Theoretical and Empirical Ethics of Healthcare Artificial Intelligence: The Case of Autonomy in Breast Cancer Screening

Victor Vadmand Jensen
Institut for Klinisk Medicin - Interacting Minds Centre, Aarhus Universitet & Universitetsklinik for Interdisciplinære Ortopædkirurgiske Forløb, Regionshospitalet Silkeborg
Bio
Jens Christian Bjerring
Institut for Kultur og Samfund, Aarhus Universitet
Bio

Publiceret 2026-06-26

Nøgleord

  • etik,
  • autonomi,
  • empirical ethics,
  • AI in healthcare

Citation/Eksport

Jensen, V. V., & Bjerring , J. C. (2026). Between Theoretical and Empirical Ethics of Healthcare Artificial Intelligence: The Case of Autonomy in Breast Cancer Screening. Tidsskrift for Forskning I Sygdom Og Samfund, 25(44), 124–147. https://doi.org/10.7146/tfss.v25i44.155084

Resumé

The ethical challenges of healthcare artificial intelligence (AI) have received widespread attention, as they can undermine trust and limit AI’s potential benefits. A key concern is the delegation of autonomy to AI systems, a practice that has drawn criticism from practitioners, policymakers, and researchers. While theoretical ethical guidelines emphasize restricting AI autonomy, they are often seen as vague or impractical. In response, scholars have proposed an empirical ethics approach, which grounds ethical considerations in real-world clinical settings. However, little research has examined how this approach applies to healthcare AI in practice. This paper contrasts theoretical and empirical ethics in the context of AI autonomy. Using breast cancer screening in Danish healthcare as a case study, we explore how intra-normativity shapes perceptions of good care. Our findings show that while theoretical discourse deems autonomous AI unethical, clinical practice views it as ethically acceptable. We conclude by discussing how empirical ethics can inform more practical, context-sensitive guidelines for healthcare AI implementation.

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