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Showing 1–2 of 2 results
Advanced filters: Author: Robert Vandersluis Clear advanced filters
  • The wide adoption of AI in biomedical research raises concerns about misuse risks. Trotsyuk, Waeiss et al. propose a framework that provides a starting point for researchers to consider how risks specific to their work could be mitigated, using existing ethical frameworks, regulatory measures and off-the-shelf AI solutions.

    • Artem A. Trotsyuk
    • Quinn Waeiss
    • David Magnus
    Reviews
    Nature Machine Intelligence
    Volume: 6, P: 1435-1442
  • Generalization – the ability of AI systems to apply and/or extrapolate their knowledge to new data which might differ from the original training data – is a major challenge for the effective and responsible implementation of human-centric AI applications. Current debate in bioethics proposes selective prediction as a solution. Here we explore data-based reasons for generalization challenges and look at how selective predictions might be implemented technically, focusing on clinical AI applications in real-world healthcare settings.

    • Lea Goetz
    • Nabeel Seedat
    • Mihaela van der Schaar
    Comments & OpinionOpen Access
    npj Digital Medicine
    Volume: 7, P: 1-4