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For the sake of multifacetedness. Why artificial intelligence patient preference prediction systems shouldn’t be for next of kin

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INTRODUCTION In their contribution ‘Ethics of the algorithmic prediction of goal of care preferences’ Ferrario et al elaborate a from theory to practice contribution concerning the realisation of artificial intelligence… Click to show full abstract

INTRODUCTION In their contribution ‘Ethics of the algorithmic prediction of goal of care preferences’ Ferrario et al elaborate a from theory to practice contribution concerning the realisation of artificial intelligence (AI)based patient preference prediction (PPP) systems. Such systems are intended to help find the treatment that the patient would have chosen in clinical situations—especially in the intensive care or emergency units—where the patient is no longer capable of making that decision herself. The authors identify several challenges that complicate their effective development, application and evaluation—and offer solutions to them. One of these issues is the question of who should ultimately use said systems. While it is undisputed that clinicians should use these AI systems for their decisionmaking process, there is an ongoing debate about whether next of kin should use them as well. The authors advocate that ‘’access should be provided to both clinicians and loved ones with due explanations and as desired’. We will disagree with this assessment and explain in our commentary why it is important that surrogates provide their own assessments with as little external (AI) influence as possible.

Keywords: patient preference; next kin; artificial intelligence; prediction; preference prediction

Journal Title: Journal of Medical Ethics
Year Published: 2023

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