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      Ontology-Based Surgical Subtask Automation, Automating Blunt Dissection

      1 , 2 , 1 , 1 , 1 , 1 , 2
      Journal of Medical Robotics Research
      World Scientific Pub Co Pte Lt

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          Abstract

          Automation of surgical processes (SPs) is an utterly complex, yet highly demanded feature by medical experts. Currently, surgical tools with advanced sensory and diagnostic capabilities are only available. A major criticism towards the newly developed instruments that they are not fitting into the existing medical workflow often creating more annoyance than benefit for the surgeon. The first step in achieving streamlined integration of computer technologies is gaining a better understanding of the SP. Surgical ontologies provide a generic platform for describing elements of the surgical procedures. Surgical Process Models (SPMs) built on top of these ontologies have the potential to accurately represent the surgical workflow. SPMs provide the opportunity to use ontological terms as the basis of automation, allowing the developed algorithm to easily integrate into the surgical workflow, and to apply the automated SPMs wherever the linked ontological term appears in the workflow. In this work, as an example to this concept, the subtask level ontological term “blunt dissection” was targeted for automation. We implemented a computer vision-driven approach to demonstrate that automation on this task level is feasible. The algorithm was tested on an experimental silicone phantom as well as in several ex vivo environments. The implementation used the da Vinci surgical robot, controlled via the Da Vinci Research Kit (DVRK), relying on a shared code-base among the DVRK institutions. It is believed that developing and linking further building blocks of lower level surgical subtasks could lead to the introduction of automated soft tissue surgery. In the future, the building blocks could be individually unit tested, leading to incremental automation of the domain. This framework could potentially standardize surgical performance, eventually improving patient outcomes.

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          Most cited references5

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          Surgical process modelling: a review.

          Surgery is continuously subject to technological and medical innovations that are transforming daily surgical routines. In order to gain a better understanding and description of surgeries, the field of surgical process modelling (SPM) has recently emerged. The challenge is to support surgery through the quantitative analysis and understanding of operating room activities. Related surgical process models can then be introduced into a new generation of computer-assisted surgery systems.
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            Towards automatic skill evaluation: detection and segmentation of robot-assisted surgical motions.

            This paper reports our progress in developing techniques for "parsing" raw motion data from a simple surgical task into a labeled sequence of surgical gestures. The ability to automatically detect and segment surgical motion can be useful in evaluating surgical skill, providing surgical training feedback, or documenting essential aspects of a procedure. If processed online, the information can be used to provide context-specific information or motion enhancements to the surgeon. However, in every case, the key step is to relate recorded motion data to a model of the procedure being performed. Robotic surgical systems such as the da Vinci system from Intuitive Surgical provide a rich source of motion and video data from surgical procedures. The application programming interface (API) of the da Vinci outputs 192 kinematics values at 10 Hz. Through a series of feature-processing steps, tailored to this task, the highly redundant features are projected to a compact and discriminative space. The resulting classifier is simple and effective.Cross-validation experiments show that the proposed approach can achieve accuracies higher than 90% when segmenting gestures in a 4-throw suturing task, for both expert and intermediate surgeons. These preliminary results suggest that gesture-specific features can be extracted to provide highly accurate surgical skill evaluation.
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              Hierarchical decomposition of laparoscopic surgery: a human factors approach to investigating the operating room environment

              Hierarchical decomposition of complex behaviour and systems is a valuable research methodology from human factors and information-processing psychology that can be applied to laparoscopic surgery. This article describes results of research on surgeons performing several different laparoscopic procedures, conducted in Vancouver, Canada 1995–98. Through top-down analyses of surgical procedures and bottom-up analyses of tool motions, results included detailed decomposition of the procedures through surgical steps, sub-steps, tasks, sub-tasks and tool motions. Analyses at all levels provided valuable information. In addition to specific surgeon- and technology-related observations, such as the effect of dividing the short gastrics on performance of Nissen fundoplication, gaze patterns of surgeons and factors related to patient safety were analysed. The hierarchical decomposition approach can be extended to other aspects of the complex system that consists of the surgeon and operating room team, the technologies and the operating room environment. Other frameworks for assessment are also considered.
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                Author and article information

                Journal
                Journal of Medical Robotics Research
                J. Med. Robot. Res.
                World Scientific Pub Co Pte Lt
                2424-905X
                2424-9068
                December 11 2018
                September 2018
                December 11 2018
                September 2018
                : 03
                : 03n04
                : 1841005
                Affiliations
                [1 ]Antal Bejczy Center for Intelligent Robotics, Óbuda University, Bécsi út 96/B, Budapest 1034, Hungary
                [2 ]Austrian Center for Medical Innovation and Technology (ACMIT), Viktor-Kaplan-Straße 2/1, Building A, Wiener Neustadt 2700, Austria
                Article
                10.1142/S2424905X18410052
                6bb1dc3b-6d52-443c-8799-f920a649549a
                © 2018
                History

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