Purpose: The objective of this investigation is to provide a comprehensive analysis of state-of-the-art methods for video-based assessment of surgical skill in the operating room. Methods: Using a data set of 99 videos of capsulorhexis, a critical step in cataract surgery, we evaluate feature based methods previously developed for surgical skill assessment mostly under benchtop settings. In addition, we present and validate two deep learning methods that directly assess skill using RGB videos. In the first method, we predict instrument tips as keypoints, and learn surgical skill using temporal convolutional neural networks. In the second method, we propose a novel architecture for surgical skill assessment that includes a frame-wise encoder (2D convolutional neural network) followed by a temporal model (recurrent neural network), both of which are augmented by visual attention mechanisms. We report the area under the receiver operating characteristic curve, sensitivity, specificity, and predictive values with each method through 5-fold cross-validation. Results: For the task of binary skill classification (expert vs. novice), deep neural network based methods exhibit higher AUC than the classical spatiotemporal interest point based methods. The neural network approach using attention mechanisms also showed high sensitivity and specificity. Conclusion: Deep learning methods are necessary for video-based assessment of surgical skill in the operating room. Our findings of internal validity of a network using attention mechanisms to assess skill directly using RGB videos should be evaluated for external validity in other data sets.
翻译:调查的目的是:全面分析手术室外科手术技能的视频评估最新技术方法。方法:使用一套99个卡萨苏洛赫希克斯视频数据集,这是白内障手术的一个重要步骤,我们评价以前为外科技能评估开发的基于特征的方法,主要在台式外设置下;此外,我们介绍并验证两种直接使用RGB视频评估技能的深层次学习方法。在第一个方法中,我们预测仪器提示为关键点,并利用时空共振动神经网络网络学习外科技能。在第二个方法中,我们提出一个新的外科技能评估结构,其中包括一个符合框架的摄像头(2D convolual 神经网络),随后有一个时间模型(经常性神经网络),这两个模型都得到视觉关注机制的加强。我们通过5倍的交叉校正校正,报告每个方法下的区域。结果:对于二元技能分类(专家 v. novice),基于深度神经网络的方法展示了比我们古型外科外科智能网络的更高程度,同时评估使用了基于深层变异性网络研究方法。