Newcastle Upon Tyne Hospitals NHS Foundation Trust and Newcastle University, Newcastle upon Tyne, UK.
Surgical Artificial Intelligence and Innovation Laboratory, Department of Surgery, Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts, USA.
BJS Open. 2020 Feb;4(1):27-44. doi: 10.1002/bjs5.50235. Epub 2019 Nov 29.
Increased uptake of robotic surgery has led to interest in learning curves for robot-assisted procedures. Learning curves, however, are often poorly defined. This systematic review was conducted to identify the available evidence investigating surgeon learning curves in robot-assisted surgery.
MEDLINE, Embase and the Cochrane Library were searched in February 2018, in accordance with PRISMA guidelines, alongside hand searches of key congresses and existing reviews. Eligible articles were those assessing learning curves associated with robot-assisted surgery in patients.
Searches identified 2316 records, of which 68 met the eligibility criteria, reporting on 68 unique studies. Of these, 49 assessed learning curves based on patient data across ten surgical specialties. All 49 were observational, largely single-arm (35 of 49, 71 per cent) and included few surgeons. Learning curves exhibited substantial heterogeneity, varying between procedures, studies and metrics. Standards of reporting were generally poor, with only 17 of 49 (35 per cent) quantifying previous experience. Methods used to assess the learning curve were heterogeneous, often lacking statistical validation and using ambiguous terminology.
Learning curve estimates were subject to considerable uncertainty. Robust evidence was lacking, owing to limitations in study design, frequent reporting gaps and substantial heterogeneity in the methods used to assess learning curves. The opportunity remains for the establishment of optimal quantitative methods for the assessment of learning curves, to inform surgical training programmes and improve patient outcomes.
机器人手术的应用增加引发了人们对机器人辅助手术学习曲线的兴趣。然而,学习曲线的定义往往不够明确。本系统评价旨在确定现有的关于机器人辅助手术中外科医生学习曲线的研究证据。
根据 PRISMA 指南,于 2018 年 2 月检索了 MEDLINE、Embase 和 Cochrane 图书馆,并辅以对重要会议和现有综述的手工检索。符合条件的文章是评估与机器人辅助手术相关的学习曲线的文章,这些研究的对象是患者。
检索共确定了 2316 条记录,其中 68 条符合纳入标准,报告了 68 项独特的研究。其中,49 项研究基于十个外科专业的患者数据评估学习曲线。所有 49 项研究均为观察性研究,主要为单臂研究(49 项中的 35 项,71%),纳入的外科医生较少。学习曲线表现出很大的异质性,在手术、研究和指标之间存在差异。报告标准普遍较差,仅有 49 项中的 17 项(35%)量化了之前的经验。用于评估学习曲线的方法存在异质性,通常缺乏统计学验证,并使用了模糊的术语。
学习曲线的估计存在很大的不确定性。由于研究设计的局限性、频繁的报告空白以及评估学习曲线的方法存在很大的异质性,缺乏稳健的证据。仍然有机会建立评估学习曲线的最佳定量方法,为外科医生培训计划提供信息,并改善患者的预后。