Two-level Fuzzy Logic Evaluation System for Surgeon's Hand Movement Using Object Detection

2022 IEEE Symposium Series on Computational Intelligence (SSCI)(2022)

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摘要
One significant aspect of surgical education and training is autonomous surgical skill assessment with feedback. In this paper, an autonomous two-level fuzzy logic assessment system for tracking and evaluation of laparoscopic instruments' tooltip movements for the FLS peg transfer task is proposed. The surgeon's left and right-hand movements are detected by using an Artificial Intelligence Network through instrument tooltip detection and position coordinates calculations. A first of its kind, custom laparoscopic box trainer dataset was built from experimental peg transfer task video recordings which were carried out by 9 doctors and OB/GYN residents, of the Homer Stryker M.D. School of Medicine, WMU, in the Intelligent Fuzzy Controllers Laboratory, WMU. A multi-class object detection algorithm, based on Deep Neural Networks, was developed.
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关键词
laparoscopic surgical skill assessment,multi-class object detection,fuzzy logic-based decision support system
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