Applications of Artificial Intelligence to Office Laryngoscopy: A Scoping Review

喉镜检查 喉科 医学 耳鼻咽喉科 民族 模式 医学物理学 医学教育 人工智能 计算机科学 外科 人类学 社会科学 社会学 插管
作者
Peter Yao,Moon Usman,Yu H. Chen,Alexander German,Katerina Andreadis,Keith Mages,Anaïs Rameau
出处
期刊:Laryngoscope [Wiley]
卷期号:132 (10): 1993-2016 被引量:19
标识
DOI:10.1002/lary.29886
摘要

This scoping review aims to provide a broad overview of the applications of artificial intelligence (AI) to office laryngoscopy to identify gaps in knowledge and guide future research.Scoping Review.Searches for studies on AI and office laryngoscopy were conducted in five databases. Title and abstract and then full-text screening were performed. Primary research studies published in English of any date were included. Studies were summarized by: AI applications, targeted conditions, imaging modalities, author affiliations, and dataset characteristics.Studies focused on vocal fold vibration analysis (43%), lesion recognition (24%), and vocal fold movement determination (19%). The most frequently automated tasks were recognition of vocal fold nodules (19%), polyp (14%), paralysis (11%), paresis (8%), and cyst (7%). Imaging modalities included high-speed laryngeal videos (45%), stroboscopy (29%), and narrow band imaging endoscopy (7%). The body of literature was primarily authored by science, technology, engineering, and math (STEM) specialists (76%) with only 30 studies (31%) involving co-authorship by STEM specialists and otolaryngologists. Datasets were mostly from single institution (84%) and most commonly originated from Germany (23%), USA (16%), Spain (9%), Italy (8%), and China (8%). Demographic information was only reported in 39 studies (40%), with age and sex being the most commonly reported, whereas race/ethnicity and gender were not reported in any studies.More interdisciplinary collaboration between STEM and otolaryngology research teams improved demographic reporting especially of race and ethnicity to ensure broad representation, and larger and more geographically diverse datasets will be crucial to future research on AI in office laryngoscopy.NA Laryngoscope, 132:1993-2016, 2022.
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