Executive Summary of the Spanish Society of Anesthesiology, Reanimation and Pain Therapy (SEDAR), Spanish Society of Emergency and Emergency Medicine (SEMES) and Spanish Society of Otolaryngology, Head and Neck Surgery (SEORL-CCC) Guideline for Difficult Airway Management
ACTA OTORRINOLARINGOLOGICA ESPANOLA(2024)
Complexo Hosp Univ A Coruna | Complejo Asistencial Univ Salamanca | Hosp Dr Peset | Hosp Univ Infanta Leonor | Hosp Univ Infanta Elena | Hosp Barbanza | Hosp Univ & Politecn La Fe | Complejo Hosp Univ Ourense | Hosp Clin Univ Navarra | Hosp Infanta Elena | Hosp Clin Univ | Complejo Hosp Univ Ferrol CHUF | Hosp Univ Puerta Hierro Majadahonda | SUMMA 112 | SAMUR Protecc Civil | Emergencias SAMUR Protecc Civil | SUMA 112 | Complexo Hosp Univ Coruna | Soc Espanola Med Urgencias & Emergencias SEMES | Univ Santiago de Compostela | Hosp Univ Donostia | Univ Barcelona
Abstract
The Airway section of the Spanish Society of Anesthesiology, Reanimation and Pain Therapy (SEDAR), Spanish Society of Emergency and Emergency Medicine (SEMES) and Spanish Society of Otolaryngology, Head and Neck Surgery (SEORL-CCC) present the Guidelines for the integral management of difficult airway in adult patients. This document provides recommendations based on current scientific evidence, theoretical-educational tools and implementation tools, mainly cognitive aids, applicable to the treatment of the airway in the field of anesthesiology, critical care, emergencies and prehospital medicine. Its principles are focused on the human factors, cognitive processes for decision-making in critical situations and optimization in the progression of the application of strategies to preserve adequate alveolar oxygenation in order to improve safety and quality of care.
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Key words
Airway management,Practice guideline,General anesthesia,Endotracheal intubation,Laryngeal mask,Tracheostomy,Monitoring,Rapid sequence induction,Airway extubation,Teaching
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