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The case for delegated AI autonomy for Human AI teaming in healthcare

24 March 2025
Yan Jia
Harriet Evans
Zoe Porter
S. Graham
John McDermid
T. Lawton
David R. J. Snead
Ibrahim Habli
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Abstract

In this paper we propose an advanced approach to integrating artificial intelligence (AI) into healthcare: autonomous decision support. This approach allows the AI algorithm to act autonomously for a subset of patient cases whilst serving a supportive role in other subsets of patient cases based on defined delegation criteria. By leveraging the complementary strengths of both humans and AI, it aims to deliver greater overall performance than existing human-AI teaming models. It ensures safe handling of patient cases and potentially reduces clinician review time, whilst being mindful of AI tool limitations. After setting the approach within the context of current human-AI teaming models, we outline the delegation criteria and apply them to a specific AI-based tool used in histopathology. The potential impact of the approach and the regulatory requirements for its successful implementation are then discussed.

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@article{jia2025_2503.18778,
  title={ The case for delegated AI autonomy for Human AI teaming in healthcare },
  author={ Yan Jia and Harriet Evans and Zoe Porter and Simon Graham and John McDermid and Tom Lawton and David Snead and Ibrahim Habli },
  journal={arXiv preprint arXiv:2503.18778},
  year={ 2025 }
}
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