迈向统一的手术技能评估

Daochang Liu, Qiyue Li, Tingting Jiang, Yizhou Wang, R. Miao, F. Shan, Ziyu Li
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引用次数: 32

摘要

手术技巧对手术安全和患者的健康有很大的影响。传统的手术技能评估涉及繁重的手工工作,缺乏效率和可重复性。因此,我们尝试使用手术视频自动预测手术的执行情况。本文提出了一个统一的多路径手术技能自动评估框架,该框架考虑了手术技能的多个组成方面,包括手术工具的使用、术中事件模式和其他技能代理。这些不同方面之间的依赖关系由框架中的路径依赖模块专门建模。我们在模拟手术任务的JIGSAWS数据集和真实腹腔镜手术的新临床数据集上进行了广泛的实验。所提出的框架在两个数据集上都取得了令人满意的结果,模拟数据集上的最新技术从0.71 Spearman相关提高到0.80。研究还表明,结合多个技能方面比依赖单一方面产生更好的性能。
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Towards Unified Surgical Skill Assessment
Surgical skills have a great influence on surgical safety and patients’ well-being. Traditional assessment of surgical skills involves strenuous manual efforts, which lacks efficiency and repeatability. Therefore, we attempt to automatically predict how well the surgery is performed using the surgical video. In this paper, a unified multi-path framework for automatic surgical skill assessment is proposed, which takes care of multiple composing aspects of surgical skills, including surgical tool usage, intraoperative event pattern, and other skill proxies. The dependency relationships among these different aspects are specially modeled by a path dependency module in the framework. We conduct extensive experiments on the JIGSAWS dataset of simulated surgical tasks, and a new clinical dataset of real laparoscopic surgeries. The proposed framework achieves promising results on both datasets, with the state-of-the-art on the simulated dataset advanced from 0.71 Spearman’s correlation to 0.80. It is also shown that combining multiple skill aspects yields better performance than relying on a single aspect.
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