To ensure satisfactory clinical outcomes, surgical skill assessment must be objective, time-efficient, and preferentially automated - none of which is currently achievable. Video-based assessment (VBA) is being deployed in intraoperative and simulation settings to evaluate technical skill execution. However, VBA remains manually- and time-intensive and prone to subjective interpretation and poor inter-rater reliability. Herein, we propose a deep learning (DL) model that can automatically and objectively provide a high-stakes summative assessment of surgical skill execution based on video feeds and low-stakes formative assessment to guide surgical skill acquisition. Formative assessment is generated using heatmaps of visual features that correlate with surgical performance. Hence, the DL model paves the way to the quantitative and reproducible evaluation of surgical tasks from videos with the potential for broad dissemination in surgical training, certification, and credentialing.
翻译:为了确保令人满意的临床结果,外科技能评估必须是客观、有时间效率的、优先自动化的(目前无法实现),在内科和模拟环境中正在部署视频评估,以评价技术技能执行情况,但是,VBA仍然是人工和时间密集的,容易进行主观解释,而且跨部之间可靠性差。在这里,我们提议了一个深层次学习(DL)模式,可以自动和客观地提供对外科技能执行的高度考量性评估,其依据是视频资料和低取量的成型评估,以指导外科技能的获取。成型评估是利用与外科工作有关的视觉特征的热图进行。因此,DL模型为从具有在外科培训、认证和证书方面广泛传播潜力的视频对外科任务进行定量和再生评估铺平了道路。