Universidad Carlos III de Madrid, Av. Universidad 30, 28911, Leganés, Madrid, Spain.
Artif Intell Med. 2021 Feb;112:102007. doi: 10.1016/j.artmed.2020.102007. Epub 2021 Jan 5.
The assessment of surgical technical skills to be acquired by novice surgeons has been traditionally done by an expert surgeon and is therefore of a subjective nature. Nevertheless, the recent advances on IoT (Internet of Things), the possibility of incorporating sensors into objects and environments in order to collect large amounts of data, and the progress on machine learning are facilitating a more objective and automated assessment of surgical technical skills. This paper presents a systematic literature review of papers published after 2013 discussing the objective and automated assessment of surgical technical skills. 101 out of an initial list of 537 papers were analyzed to identify: 1) the sensors used; 2) the data collected by these sensors and the relationship between these data, surgical technical skills and surgeons' levels of expertise; 3) the statistical methods and algorithms used to process these data; and 4) the feedback provided based on the outputs of these statistical methods and algorithms. Particularly, 1) mechanical and electromagnetic sensors are widely used for tool tracking, while inertial measurement units are widely used for body tracking; 2) path length, number of sub-movements, smoothness, fixation, saccade and total time are the main indicators obtained from raw data and serve to assess surgical technical skills such as economy, efficiency, hand tremor, or mind control, and distinguish between two or three levels of expertise (novice/intermediate/advanced surgeons); 3) SVM (Support Vector Machines) and Neural Networks are the preferred statistical methods and algorithms for processing the data collected, while new opportunities are opened up to combine various algorithms and use deep learning; and 4) feedback is provided by matching performance indicators and a lexicon of words and visualizations, although there is considerable room for research in the context of feedback and visualizations, taking, for example, ideas from learning analytics.
传统上,新手外科医生的手术技术评估是由专家外科医生进行的,因此具有主观性。然而,物联网 (IoT) 的最新进展,即将传感器集成到物体和环境中以收集大量数据的可能性,以及机器学习的进步,正在促进手术技术技能的更客观和自动化评估。本文对 2013 年后发表的讨论手术技术技能客观和自动化评估的论文进行了系统的文献回顾。从最初的 537 篇论文中分析了 101 篇论文,以确定:1)使用的传感器;2)这些传感器收集的数据以及这些数据与手术技术技能和外科医生专业水平之间的关系;3)用于处理这些数据的统计方法和算法;以及 4)基于这些统计方法和算法的输出提供的反馈。特别是:1)机械和电磁传感器广泛用于工具跟踪,而惯性测量单元则广泛用于身体跟踪;2)路径长度、子运动次数、平滑度、固定、扫视和总时间是从原始数据中获得的主要指标,用于评估手术技术技能,例如经济性、效率、手部震颤或思维控制,并区分新手/中级/高级外科医生三个级别的技能;3)SVM(支持向量机)和神经网络是处理收集数据的首选统计方法和算法,而结合各种算法和使用深度学习则开辟了新的机会;以及 4)通过匹配性能指标和词汇表以及可视化提供反馈,尽管在反馈和可视化方面还有很大的研究空间,可以借鉴学习分析的思路。