Personnes LGBTQIA+ : Enjeux De Prise En Charge Aux Urgences
Hôpital Beau-Séjour | Acacia Pharma (United Kingdom)
Abstract
Visits to the emergency department are often a difficult time for LGBTQIA+ people, mainly because of the frequent discrimination in healthcare environments and the lack of knowledge of medical and nursing staff. This article begins by presenting some epidemiological features, before discussing specific issues such as contraception and fertility, hormone therapy, sexually transmitted infections, surgical complications, psychiatric pathologies, and traumatology, from the perspective of the emergency physician. Finally, suggestions for further reflection and improvement are proposed.Les visites aux urgences représentent souvent des moments difficiles pour les personnes LGBTQIA+, principalement en raison des discriminations particulièrement fréquentes dans les milieux de soins et du manque de connaissances du personnel médico-soignant. Cet article présente dans un premier temps quelques chiffres épidémiologiques, avant de discuter des enjeux spécifiques, comme la contraception et la fertilité, l’hormonothérapie, les infections sexuellement transmissibles, les complications opératoires, les pathologies psychiatriques ou la traumatologie, le tout sous le prisme de l’urgentiste. Enfin, des pistes de réflexion et d’amélioration sont proposées.
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LGBTQ+
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