Intraoperative video analysis and machine learning models will change the future of surgical training

Michal Kawka , Tamara MH. Gall , Chihua Fang , Rong Liu , Long R. Jiao
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引用次数: 20

Abstract

Background

Machine learning (ML) is an application of artificial intelligence (AI) which enables automatic learning from large datasets. The advances in this computer science coupled with the increase in minimally invasive surgery (MIS) and availability of surgical videos, has resulted in ML algorithms designed to analyse intraoperative videos. This technology aims to improve surgical training and surgical assessment resulting in improved surgical safety.

Methods

A literature search of MEDLINE and EMBASE was conducted. The search terms included the following, individually or in combination: ‘machine learning, ‘video analysis’, ‘computer vision’, ‘neural networks’ and ‘surgery’.

Results

Relevant articles were scanned and included in the discussion. These include research developing ML algorithms for surgical phase recognition, instrument recognition, gestures recognition, and anatomical landmark recognition. The implications for the future of surgical training are discussed.

Conclusions

The next decade is likely to see a huge increase in MIS, particularly robotic surgery, and ML video analytics of these operations. This is likely to enhance surgical training and reduce surgical errors. However, there is a necessity for much bigger datasets for all operative procedures to allow increasing accuracy of the ML algorithms.

术中视频分析和机器学习模型将改变外科培训的未来
机器学习(ML)是人工智能(AI)的一种应用,它可以从大型数据集中自动学习。计算机科学的进步,加上微创手术(MIS)的增加和手术视频的可用性,导致了用于分析术中视频的ML算法。这项技术旨在改善手术培训和手术评估,从而提高手术安全性。方法采用MEDLINE和EMBASE数据库进行文献检索。搜索词包括:“机器学习”、“视频分析”、“计算机视觉”、“神经网络”和“外科手术”。结果扫描相关文章并纳入讨论。这些研究包括开发用于外科阶段识别、仪器识别、手势识别和解剖地标识别的ML算法。对未来外科培训的意义进行了讨论。下一个十年可能会看到管理信息系统的巨大增长,特别是机器人手术,以及这些手术的ML视频分析。这可能会加强手术训练,减少手术错误。然而,为了提高机器学习算法的准确性,所有操作过程都需要更大的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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