During arthroscopic surgeries, surgeons are faced with challenges like cognitive re-projection of the 2D screen output into the 3D operating site or navigation through highly similar tissue. Training of these cognitive processes takes much time and effort for young surgeons, but is necessary and crucial for their education. In this study we want to show how to recognize states of confusion of young surgeons during an arthroscopic surgery, by looking at their eye and head movements and feeding them to a machine learning model. With an accuracy of over 94\% and detection speed of 0.039 seconds, our model is a step towards online diagnostic and training systems for the perceptual-cognitive processes of surgeons during arthroscopic surgeries.
翻译:在动脉外科手术期间,外科医生面临认知再投射二维屏幕输出进入三维操作场或通过高度类似的组织导航等挑战。这些认知过程的培训需要年轻外科医生花费大量时间和精力,但对于他们的教育是必要和至关重要的。在这项研究中,我们要通过观察他们的眼部和头部运动以及将其喂养到机器学习模式,展示如何识别在动脉外科手术期间年轻外科医生的混乱状态。精确度超过94 ⁇ 和检测速度为0.039秒,我们的模式是迈向在动脉外科手术期间外科医生的感知认知过程的在线诊断和培训系统的一个步骤。