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Fuzzy Logic-Based Performance Assessment in the Virtual, Assistive Surgical Trainer (VAST)
March 31-April 04
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ECBS.2008.5115th Annual IEEE International Confer ...
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The Virtual Assistive Surgical Trainer (VAST) is an approach developed to train surgeons in minimally invasive procedures. It uses surgical instruments augmented with micro-sensors, and knowledge-based inference techniques to provide objective, data-driven feedback and performance assessment for complex exercises. The assessment is typically based on the expertise of senior surgeons and, thus, a single objective standard is difficult to define. To formulate such a standard, and to provide an accurate scoring method, a fuzzy logic method is proposed in this paper. This makes it easier to mimic tasks that are already successfully performed by human experts. A multi-level fuzzy inference engine and new performance metrics are implemented. Experimental results demonstrate the feasibility of this method and the efficacy of the new performance metrics.
Index Terms:
Surgical Training, MIS, Fuzzy Logic, Inference
Citation:
Chuan Feng, Jerzy W. Rozenblit, Allan Hamilton, "Fuzzy Logic-Based Performance Assessment in the Virtual, Assistive Surgical Trainer (VAST)," ecbs, pp.203-209, 15th Annual IEEE International Conference and Workshop on the Engineering of Computer Based Systems (ecbs 2008), 2008
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