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Artificial Intelligence to support ethical decision-making for incapacitated patients: a survey among German anesthesiologists and internists
4
Zitationen
4
Autoren
2024
Jahr
Abstract
German physicians frequently encountering incapacitated patients exhibit hesitance toward AI-driven preference prediction but hold a higher esteem for CESS. Addressing concerns about individuality, explicability, and human-machine roles may facilitate the acceptance of AI in clinical ethics. Further research into patient and surrogate perspectives is needed to ensure AI aligns with patient preferences and values in complex medical decisions.
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