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“Deep-Onto”网络用于手术流程和上下文识别。

"Deep-Onto" network for surgical workflow and context recognition.

机构信息

Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, Piazza Leonardo da Vinci 32, 20133, Milan, Italy.

Department of Urology, European Institute of Oncology (IEO), Via Giuseppe Ripamonti, 435, 20141, Milan, Italy.

出版信息

Int J Comput Assist Radiol Surg. 2019 Apr;14(4):685-696. doi: 10.1007/s11548-018-1882-8. Epub 2018 Nov 16.

Abstract

PURPOSE

Surgical workflow recognition and context-aware systems could allow better decision making and surgical planning by providing the focused information, which may eventually enhance surgical outcomes. While current developments in computer-assisted surgical systems are mostly focused on recognizing surgical phases, they lack recognition of surgical workflow sequence and other contextual element, e.g., "Instruments." Our study proposes a hybrid approach, i.e., using deep learning and knowledge representation, to facilitate recognition of the surgical workflow.

METHODS

We implemented "Deep-Onto" network, which is an ensemble of deep learning models and knowledge management tools, ontology and production rules. As a prototypical scenario, we chose robot-assisted partial nephrectomy (RAPN). We annotated RAPN videos with surgical entities, e.g., "Step" and so forth. We performed different experiments, including the inter-subject variability, to recognize surgical steps. The corresponding subsequent steps along with other surgical contexts, i.e., "Actions," "Phase" and "Instruments," were also recognized.

RESULTS

The system was able to recognize 10 RAPN steps with the prevalence-weighted macro-average (PWMA) recall of 0.83, PWMA precision of 0.74, PWMA F1 score of 0.76, and the accuracy of 74.29% on 9 videos of RAPN.

CONCLUSION

We found that the combined use of deep learning and knowledge representation techniques is a promising approach for the multi-level recognition of RAPN surgical workflow.

摘要

目的

通过提供重点信息,手术工作流程识别和上下文感知系统可以帮助更好地做出决策和进行手术规划,从而最终提高手术效果。虽然当前计算机辅助手术系统的发展主要集中在识别手术阶段,但它们缺乏对手术工作流程序列和其他上下文元素(例如“器械”)的识别。我们的研究提出了一种混合方法,即使用深度学习和知识表示来促进手术工作流程的识别。

方法

我们实现了“Deep-Onto”网络,这是一个深度学习模型和知识管理工具、本体和产生式规则的集成。作为一个原型场景,我们选择了机器人辅助部分肾切除术(RAPN)。我们使用手术实体(例如“步骤”等)对 RAPN 视频进行注释。我们进行了不同的实验,包括受试者间变异性实验,以识别手术步骤。还识别了相应的后续步骤以及其他手术上下文,例如“操作”、“阶段”和“器械”。

结果

该系统能够识别出 10 个 RAPN 步骤,在 9 个 RAPN 视频上的流行加权宏平均(PWMA)召回率为 0.83,PWMA 精度为 0.74,PWMA F1 分数为 0.76,准确率为 74.29%。

结论

我们发现,深度学习和知识表示技术的结合使用是一种很有前途的 RAPN 手术工作流程多层次识别方法。

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