Abstracts
Résumé
L’intelligence artificielle (IA) s’impose progressivement dans nos systèmes de santé et soulève des enjeux majeurs pour la pratique infirmière. Si cette technologie promet des gains d’efficacité et de meilleurs processus cliniques, elle soulève des enjeux importants quant à la responsabilité, la transparence et le maintien du raisonnement clinique. Cet article met en lumière les bénéfices potentiels de l’IA tout en soulignant les risques associés à sa mise en oeuvre. Le maintien d’une posture réflexive, critique et éthique apparaît essentiel afin d’assurer une intégration judicieuse de l’IA dans nos urgences.
Mots-clés :
- Intelligence artificielle,
- Soins d’urgence,
- Prise de décision clinique,
- Raisonnement clinique
Abstract
Artificial intelligence (AI) is increasingly being integrated into our healthcare systems and raising major challenges for nursing practice. Although this technology promises to improve efficiency and clinical processes, it also raises significant concerns about accountability, transparency, and the preservation of clinical reasoning. This article highlights the potential benefits of AI, while also emphasising the risks associated with its implementation. Taking a reflective, critical, and ethical approach is essential to ensure the appropriate integration of AI in emergency care settings.
Keywords:
- Artificial intelligence,
- Emergency care,
- Clinical decision-making,
- Clinical reasoning
Appendices
Bibliographie
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