Minimally invasive image-guided surgery heavily relies on vision. Deep learning models for surgical video analysis could therefore support visual tasks such as assessing the critical view of safety (CVS) in laparoscopic cholecystectomy (LC), potentially contributing to surgical safety and efficiency. However, the performance, reliability and reproducibility of such models are deeply dependent on the quality of data and annotations used in their development. Here, we present a protocol, checklists, and visual examples to promote consistent annotation of hepatocystic anatomy and CVS criteria. We believe that sharing annotation guidelines can help build trustworthy multicentric datasets for assessing generalizability of performance, thus accelerating the clinical translation of deep learning models for surgical video analysis.
翻译:微小侵入性图像制导手术在很大程度上依赖于视觉。 因此,外科视频分析的深学习模式可以支持视觉任务,如评估腹腔细胞切除(LC)中安全临界观点,这有可能促进外科手术的安全和效率,但是,这些模型的性能、可靠性和可复制性在很大程度上取决于其开发过程中使用的数据和说明的质量。在这里,我们提出了一个协议、清单和视觉范例,以促进对肝细胞解剖和外科解剖标准进行一致的注释。 我们认为,共享说明准则有助于建立可靠的多中心数据集,以评估外科手术的可普及性,从而加快外科视频分析深层学习模型的临床翻译。