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Preoperative Airway Images for Difficult Airway Prediction
Sponsor: Memorial Atasehir Hospital
Summary
This prospective observational study will evaluate whether commonly available multimodal artificial intelligence models can predict difficult laryngoscopy and difficult intubation using standardized preoperative airway photographs. Adult patients scheduled for elective surgery requiring endotracheal intubation will undergo an eight-view preoperative airway photography protocol. The anonymized image sets will be assessed by ChatGPT, Gemini, and Grok using the same structured prompt. Their predictions will be compared with expert anesthesiologist image-based assessments, conventional airway evaluation findings, and prospectively recorded intraoperative airway outcomes. The primary aim is to determine the diagnostic performance of AI models for predicting difficult intubation. A key secondary aim is to evaluate their performance for predicting difficult laryngoscopy. The study is intended to explore whether image-based AI assessment may support preoperative airway risk stratification as a clinician-supervised screening tool.
Official title: Multimodal Artificial Intelligence for Image-Based Prediction of Difficult Airway: A Prospective Observational Study
Key Details
Gender
All
Age Range
18 Years - Any
Study Type
OBSERVATIONAL
Enrollment
319
Start Date
2026-06-25
Completion Date
2026-09-01
Last Updated
2026-07-14
Healthy Volunteers
No
Locations (1)
Dr. Siyami Ersek Thoracic and Cardiovascular Surgery Training and Research Hospital
Istanbul, Kadıköy, Turkey (Türkiye)