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Feasibility of an AI-Based Measure of the Hand Motions of Expert and Novice Surgeons

机译:基于AI的专家和新手手部动作测量的可行性

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This study investigated whether parameters derived from hand motions of expert and novice surgeons accurately and objectively reflect laparoscopic surgical skill levels using an artificial intelligence system consisting of a three-layer chaos neural network. Sixty-seven surgeons (23 experts and 44 novices) performed a laparoscopic skill assessment task while their hand motions were recorded using a magnetic tracking sensor. Eight parameters evaluated as measures of skill in a previous study were used as inputs to the neural network. Optimization of the neural network was achieved after seven trials with a training dataset of 38 surgeons, with a correct judgment ratio of 0.99. The neural network that prospectively worked with the remaining 29 surgeons had a correct judgment rate of 79% for distinguishing between expert and novice surgeons. In conclusion, our artificial intelligence system distinguished between expert and novice surgeons among surgeons with unknown skill levels.
机译:这项研究使用由三层混沌神经网络组成的人工智能系统,研究了专家和新手外科手术的手部运动参数是否准确,客观地反映了腹腔镜手术技能水平。 67位外科医生(23位专家和44位新手)执行了腹腔镜技能评估任务,而他们的手部动作是使用磁性跟踪传感器记录的。在先前的研究中,作为技能指标评估的八个参数被用作神经网络的输入。神经网络的优化是在经过38位外科医生的训练数据集的七次试验后实现的,正确判断率为0.99。前瞻性地与其余29位外科医生一起工作的神经网络对专家和新手外科医生进行区分的正确判断率为79%。总之,我们的人工智能系统在技能水平未知的外科医生中区分了专家和新手外科医生。

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