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An automatic skill evaluation framework for robotic surgery training

机译:用于机器人手术培训的自动技能评估框架

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Background To provide feedback to surgeons in robotic surgery training, many surgical skill evaluation methods have been developed. However, they hardly focus on the performance of the surgical motion segments. This paper proposes a method of specifying a trainee's skill weakness in the surgical training. Methods This paper proposed an automatic skill evaluation framework by comparing the trainees' operations with the template operation in each surgical motion segment, which is mainly based on dynamic time warping (DTW) and continuous hidden Markov model (CHMM). Results The feasibility of this proposed framework has been preliminarily verified. For specifying the skill weakness in instrument handling and efficiency, the result of this proposed framework was significantly correlated with that of manual scoring. Conclusion The automatic skill evaluation framework has shown its superiority in efficiency, objectivity, and being targeted, which can be used in robotic surgery training.
机译:背景技术为机器人外科培训提供反馈,已经开发出许多外科技能评估方法。 然而,他们几乎没有专注于外科运动段的性能。 本文提出了一种在手术训练中指定实习生技能弱点的方法。 方法本文提出了一种自动技能评估框架,通过将学员的操作与每个外科运动段中的模板操作进行比较,主要基于动态时间翘曲(DTW)和连续隐马尔可夫模型(CHMM)。 结果初步验证了这一提议框架的可行性。 为了指定仪器处理和效率的技能弱点,该框架的结果与手动评分显着相关。 结论自动技能评估框架已经效率,客观性和靶向的优势,可用于机器人手术培训。

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