Minimally invasive surgery is highly operator dependant with a lengthy procedural time causing fatigue to surgeon and risks to patients such as injury to organs, infection, bleeding, and complications of anesthesia. To mitigate such risks, real-time systems are desired to be developed that can provide intra-operative guidance to surgeons. For example, an automated system for tool localization, tool (or tissue) tracking, and depth estimation can enable a clear understanding of surgical scenes preventing miscalculations during surgical procedures. In this work, we present a systematic review of recent machine learning-based approaches including surgical tool localization, segmentation, tracking, and 3D scene perception. Furthermore, we provide a detailed overview of publicly available benchmark datasets widely used for surgical navigation tasks. While recent deep learning architectures have shown promising results, there are still several open research problems such as a lack of annotated datasets, the presence of artifacts in surgical scenes, and non-textured surfaces that hinder 3D reconstruction of the anatomical structures. Based on our comprehensive review, we present a discussion on current gaps and needed steps to improve the adaptation of technology in surgery.
翻译:为了减轻这种风险,希望开发实时系统,为外科医生提供手术指导。例如,工具定位、工具(或组织)跟踪和深度估算自动化系统可以使人们清楚地了解外科手术场景,以防止外科手术过程中的误算。在这项工作中,我们系统地审查了最近的机器学习方法,包括外科工具定位、分解、跟踪和3D现场认知。此外,我们详细介绍了用于外科手术的可广泛使用的基准数据集。虽然最近的深层学习结构已经显示出令人振奋的结果,但仍有一些公开的研究问题,例如缺少附加说明的数据集、手术场景中存在艺术品,以及阻碍3D对解剖结构进行重建的非透水表面。我们全面审查后,我们讨论了目前的差距,并提出了改进外科手术技术改造所需的步骤。