Novel evaluation of surgical activity recognition models using task-based efficiency metrics.

Journal: International journal of computer assisted radiology and surgery
PMID:

Abstract

PURPOSE: Surgical task-based metrics (rather than entire procedure metrics) can be used to improve surgeon training and, ultimately, patient care through focused training interventions. Machine learning models to automatically recognize individual tasks or activities are needed to overcome the otherwise manual effort of video review. Traditionally, these models have been evaluated using frame-level accuracy. Here, we propose evaluating surgical activity recognition models by their effect on task-based efficiency metrics. In this way, we can determine when models have achieved adequate performance for providing surgeon feedback via metrics from individual tasks.

Authors

  • Aneeq Zia
    College of Computing, Georgia Institute of Technology, North Ave NW, Atlanta, GA, 30332, USA. aneeqzia@gmail.com.
  • Liheng Guo
    Medical Research, Intuitive Surgical, Inc., 5655 Spalding Drive, Norcross, GA, 30092, USA.
  • Linlin Zhou
    Medical Research, Intuitive Surgical, Inc., 5655 Spalding Drive, Norcross, GA, 30092, USA.
  • Irfan Essa
    College of Computing, Georgia Institute of Technology, North Ave NW, Atlanta, GA, 30332, USA.
  • Anthony Jarc
    3 Medical Research, Intuitive Surgical, Inc. , Norcross, Georgia .