Division of Otolaryngology-Head and Neck Surgery, Department of Surgery, University of British Columbia, Vancouver, Canada.
Department of Otolaryngology-Head and Neck Surgery, School of Medicine, Johns Hopkins University, Baltimore, Maryland, USA.
Otolaryngol Head Neck Surg. 2023 Jul;169(1):21-30. doi: 10.1177/01945998221110076. Epub 2023 Jan 29.
To provide a comprehensive overview on the applications of artificial intelligence (AI) in rhinology, highlight its limitations, and propose strategies for its integration into surgical practice.
Medline, Embase, CENTRAL, Ei Compendex, IEEE, and Web of Science.
English studies from inception until January 2022 and those focusing on any application of AI in rhinology were included. Study selection was independently performed by 2 authors; discrepancies were resolved by the senior author. Studies were categorized by rhinology theme, and data collection comprised type of AI utilized, sample size, and outcomes, including accuracy and precision among others.
An overall 5435 articles were identified. Following abstract and title screening, 130 articles underwent full-text review, and 59 articles were selected for analysis. Eleven studies were from the gray literature. Articles were stratified into image processing, segmentation, and diagnostics (n = 27); rhinosinusitis classification (n = 14); treatment and disease outcome prediction (n = 8); optimizing surgical navigation and phase assessment (n = 3); robotic surgery (n = 2); olfactory dysfunction (n = 2); and diagnosis of allergic rhinitis (n = 3). Most AI studies were published from 2016 onward (n = 45).
This state of the art review aimed to highlight the increasing applications of AI in rhinology. Next steps will entail multidisciplinary collaboration to ensure data integrity, ongoing validation of AI algorithms, and integration into clinical practice. Future research should be tailored at the interplay of AI with robotics and surgical education.
全面概述人工智能(AI)在鼻科学中的应用,强调其局限性,并提出将其整合到外科实践中的策略。
Medline、Embase、CENTRAL、Ei Compendex、IEEE 和 Web of Science。
纳入截至 2022 年 1 月的所有英语研究,以及关注 AI 在鼻科学中任何应用的研究。由 2 位作者独立进行研究选择;如有分歧,由资深作者解决。研究按鼻科学主题进行分类,数据收集包括使用的 AI 类型、样本量和结果,包括准确性和精密度等。
共确定了 5435 篇文章。经过摘要和标题筛选后,有 130 篇文章进行了全文审查,选择了 59 篇文章进行分析。其中 11 项研究来自灰色文献。文章分为图像处理、分割和诊断(n = 27);鼻窦炎分类(n = 14);治疗和疾病结果预测(n = 8);优化手术导航和阶段评估(n = 3);机器人手术(n = 2);嗅觉功能障碍(n = 2);和过敏性鼻炎的诊断(n = 3)。大多数 AI 研究发表于 2016 年以后(n = 45)。
本研究旨在强调 AI 在鼻科学中的应用日益增多。下一步将需要多学科合作,以确保数据完整性、持续验证 AI 算法,并将其整合到临床实践中。未来的研究应针对 AI 与机器人技术和外科教育的相互作用进行调整。