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

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.

Keywords: Deep learning; Knowledge representation; Robot-assisted partial nephrectomy; Surgical workflow.

MeSH terms

  • Deep Learning*
  • Humans
  • Kidney Neoplasms / surgery*
  • Nephrectomy / methods*
  • Robotic Surgical Procedures / methods*
  • Workflow*