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Machine learning-based operation skills assessment with vascular difficulty index for vascular intervention surgery

机译:基于机器学习的操作技能评估,血管干预手术血管难度指数

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An accurate assessment of surgical operation skills is essential for improving the vascular intervention surgical outcome and the performance of endovascular surgery robots. In existing studies, subjective and objective assessments of surgical operation skills use a variety of indicators, such as the operation speed and operation smoothness. However, the vascular conditions of particular patients have not been considered in the assessment, leading to deviations in the evaluation. Therefore, in this paper, an operation skills assessment method including the vascular difficulty level index for catheter insertion at the aortic arch in endovascular surgery is proposed. First, the model describing the difficulty of the vascular anatomical structure is established with characteristics of different aortic arch branches based on machine learning. Afterwards, the vascular difficulty level is set as an objective index combined with operating characteristics extracted from the operations performed by surgeons to evaluate the surgical operation skills at the aortic arch using machine learning. The accuracy of the assessment improves from 86.67 to 96.67% after inclusion of the vascular difficulty as an evaluation indicator to more objectively and accurately evaluate skills. The method described in this paper can be adopted to train novice surgeons in endovascular surgery, and for studies of vascular interventional surgery robots.
机译:对外科手术技能的准确评估对于改善血管干预手术结果以及血管内手术机器人的性能至关重要。在现有的研究中,外科手术技能的主观和客观评估使用各种指标,如操作速度和操作平滑。然而,在评估中未考虑特定患者的血管条件,导致评估中的偏差。因此,在本文中,提出了一种操作技能评估方法,包括在血管内手术中的主动脉弓中的主动脉弓的导管插入的血管难度水平指数。首先,基于机器学习的不同主动脉弓分支的特征建立了描述血管解剖结构难度的模型。之后,将血管难度水平设定为目标指数,该目标指数与外科医生执行的操作提取的操作特性相结合,以使用机器学习评估主动脉拱的手术操作技能。在将血管困难中作为评估指标纳入更客观和准确评估技能后,评估的准确性从86.67%增加到96.67%。本文中描述的方法可以采用培训血管内手术中的新手外科医生,以及对血管介入手术机器人的研究。

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