Artificial Intelligence for Predicting Difficult Airways: A Review
Alatau M. Bauer J. Sazonov V.
December 2025Multidisciplinary Digital Publishing Institute (MDPI)
Journal of Clinical Medicine
2025#14Issue 23
Background: Accurately predicting difficult airways is essential to ensuring patient safety in anesthesiology and emergency medicine. However, traditional assessment tools often lack sufficient sensitivity and specificity, particularly in high-pressure or resource-limited settings. Artificial intelligence (AI) and machine learning (ML) have emerged as promising tools for enhancing airway assessment. Objective: This review evaluates the performance of AI- and ML-based models for predicting difficult airways and compares them with traditional clinical methods. The review also analyzes the models’ methodological robustness, clinical applicability, and ethical considerations. Methods: A comprehensive literature search was conducted across PubMed, Web of Science, and Scopus to identify studies published between 2020 and 2025 that employed AI/ML models to predict difficult airways. Both original research and review articles were included. Key metrics, such as the area under the curve (AUC), sensitivity, and specificity, were extracted and compared. A qualitative analysis was performed to focus on dataset characteristics, validation strategies, model interpretability, and clinical relevance. Results: AI models demonstrated superior performance compared to traditional assessment tools. The MixMatch semi-supervised deep learning (DL) model achieved the highest performance (area under the curve [AUC] of 0.9435, sensitivity of 89.58%, and specificity of 90.13%). Models that used facial imaging combined with deep learning consistently outperformed those that relied solely on clinical parameters. However, methodological heterogeneity, a lack of standardized evaluation metrics, and limited population diversity impeded cross-study comparability. Few studies incorporated interpretability frameworks or addressed ethical challenges related to data privacy and algorithmic bias. Conclusions: AI and ML models have the potential to transform the assessment of difficult airways by improving diagnostic accuracy and enabling real-time clinical decision support.
airway management , artificial intelligence , difficult airway , intubation prediction , machine learning
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Department of Medicine, School of Medicine, Nazarbayev University, Kerey Zhanibek Handar Street 5/1, Astana, 010000, Kazakhstan
Centre for Cognitive Science, Institut für Psychologie, Technische Universität, Alexanderstraße 10, Darmstadt, 64283, Germany
Pediatric Anesthesiology and Intensive Care Unit, Mother and Child Health Center, University Medical Center, Turan 32, Astana, 010000, Kazakhstan
Department of Surgery, School of Medicine, Nazarbayev University, Kerey Zhanibek Handar Street 5/1, Astana, 010000, Kazakhstan
Department of Medicine
Centre for Cognitive Science
Pediatric Anesthesiology and Intensive Care Unit
Department of Surgery
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