Bridging the gap between formal and experience-based knowledge for context-aware laparoscopy

Int J Comput Assist Radiol Surg. 2016 Jun;11(6):881-8. doi: 10.1007/s11548-016-1379-2. Epub 2016 Mar 30.

Abstract

Purpose: Computer assistance is increasingly common in surgery. However, the amount of information is bound to overload processing abilities of surgeons. We propose methods to recognize the current phase of a surgery for context-aware information filtering. The purpose is to select the most suitable subset of information for surgical situations which require special assistance.

Methods: We combine formal knowledge, represented by an ontology, and experience-based knowledge, represented by training samples, to recognize phases. For this purpose, we have developed two different methods. Firstly, we use formal knowledge about possible phase transitions to create a composition of random forests. Secondly, we propose a method based on cultural optimization to infer formal rules from experience to recognize phases.

Results: The proposed methods are compared with a purely formal knowledge-based approach using rules and a purely experience-based one using regular random forests. The comparative evaluation on laparoscopic pancreas resections and adrenalectomies employs a consistent set of quality criteria on clean and noisy input. The rule-based approaches proved best with noisefree data. The random forest-based ones were more robust in the presence of noise.

Conclusion: Formal and experience-based knowledge can be successfully combined for robust phase recognition.

Keywords: Cognition-guided assistance; Context-awareness; Ontology.

MeSH terms

  • Algorithms
  • Decision Trees
  • Humans
  • Knowledge Bases*
  • Laparoscopy / methods*
  • Surgery, Computer-Assisted / methods*