2023
DOI: 10.1002/lary.31175
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Automatic Recognition of Concealed Fish Bones under Laryngoscopy: A Practical AI Model Based on YOLO‐V5

Xiaoyao Tao,
Xu Zhao,
Hairui Liu
et al.

Abstract: BackgroundFish bone impaction is one of the most common problems encountered in otolaryngology emergencies. Due to their small and transparent nature, as well as the complexity of pharyngeal anatomy, identifying fish bones efficiently under laryngoscopy requires substantial clinical experience. This study aims to create an AI model to assist clinicians in detecting pharyngeal fish bones more efficiently under laryngoscopy.MethodsTotally 3133 laryngoscopic images related to fish bones were collected for model t… Show more

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