Nwosu Obinna I, Ota Mitsuki, Goss Deborah, Crowson Matthew G
Harvard Medical School, Boston, MA.
Department of Otolaryngology-Head and Neck Surgery, Massachusetts Eye and Ear.
Otol Neurotol. 2025 Mar 1;46(3):248-255. doi: 10.1097/MAO.0000000000004427. Epub 2025 Jan 22.
OBJECTIVES/HYPOTHESIS: This scoping review aims to provide an overview of existing semi-automated and fully automated methods for technical skill and performance assessment in otologic and neurotologic procedures.
Scoping review.
Ovid MEDLINE (PubMed), Ovid EMBASE, Web of Science Core Collection, and IEEE Xplor Digital Library.
A literature search was conducted according to PRISMA-ScR. Included studies were full-text articles that detailed an automated method of technical skill and performance assessment in otologic/neurotologic procedures. Extracted elements included general study characteristics (publication year, study objective, validity type, surgical procedure, and setting) and assessment approach characteristics (method of analysis, metrics assessed, source of metric data, degree of automation, and use of artificial intelligence [AI]).
A total of 1,141 studies were identified from the literature search. After deduplication, title/abstract screening, and full-text review, 21 studies met the inclusion criteria. All but one of the included studies focused on mastoidectomy. Most studies assessed performance exclusively in VR-simulated mastoidectomy (n = 12) as opposed to cadaveric, 3D-printed, or live dissections. The majority of studies concentrated on establishing internal validity of their assessment methods (n = 13). Performance metrics were primarily obtained through motion analysis and final product analysis. Only a minority of studies used AI, which typically involved machine learning regression or classification to predict skill levels based on automatically extracted metrics.
This scoping review explores the developing landscape of automated technical skill and performance assessment in otology and neurotology. Though progress has been made in automating assessment in the field, most investigations are narrowly focused on performance in VR-simulated mastoidectomy and lack external validity evidence. AI and computer vision (CV), which have advanced automated assessment in other surgical fields, have been underutilized in assessing performance in otology and neurotology. Future work must explore the development and validation of automated assessment approaches across a wider range of otologic and neurotologic procedures. Incorporation of novel AI/CV techniques may facilitate real-time integration of automated assessment in a broader range of simulated procedures and live surgical settings.
目的/假设:本综述旨在概述用于耳科和神经耳科手术技术技能和操作评估的现有半自动和全自动方法。
综述。
Ovid MEDLINE(PubMed)、Ovid EMBASE、Web of Science核心合集和IEEE Xplor数字图书馆。
根据PRISMA-ScR进行文献检索。纳入的研究为详细介绍耳科/神经耳科手术技术技能和操作评估自动化方法的全文文章。提取的要素包括一般研究特征(发表年份、研究目的、效度类型、手术程序和环境)以及评估方法特征(分析方法、评估指标、指标数据来源、自动化程度和人工智能[AI]的使用)。
通过文献检索共识别出1141项研究。经过去重、标题/摘要筛选和全文审查后,21项研究符合纳入标准。除一项研究外,所有纳入研究均聚焦于乳突切除术。大多数研究仅在虚拟现实模拟乳突切除术中评估操作(n = 12),而非尸体、3D打印或活体解剖。大多数研究集中于确立其评估方法的内部效度(n = 13)。操作指标主要通过动作分析和最终产品分析获得。只有少数研究使用了人工智能,通常涉及机器学习回归或分类,以根据自动提取的指标预测技能水平。
本综述探讨了耳科和神经耳科自动化技术技能和操作评估的发展态势。尽管该领域在自动化评估方面已取得进展,但大多数研究都局限于虚拟现实模拟乳突切除术中的操作,且缺乏外部效度证据。在其他外科领域推动了自动化评估的人工智能和计算机视觉(CV),在耳科和神经耳科操作评估中未得到充分利用。未来的工作必须探索更广泛的耳科和神经耳科手术中自动化评估方法的开发和验证。采用新颖的人工智能/计算机视觉技术可能有助于在更广泛的模拟手术和实际手术环境中实时整合自动化评估。