论文标题

通过操作场的清晰度对体内临床数据的手术技能评估

Surgical Skill Assessment on In-Vivo Clinical Data via the Clearness of Operating Field

论文作者

Liu, Daochang, Jiang, Tingting, Wang, Yizhou, Miao, Rulin, Shan, Fei, Li, Ziyu

论文摘要

手术技能评估对于手术训练和质量控制很重要。在此任务上的先前工作很大程度上关注基本的手术任务,例如在模拟设置中执行的缝合和结绑。相比之下,本文在一个真实的临床数据集上研究了手术技能评估,该数据集由五十七个体内腹腔镜手术和六名外科医生注释的相应技能分数组成。从该数据集的分析中,鉴于其与整体技能和高通道间的一致性的密切相关,操作场(COF)的清晰度(COF)被确定为整体手术技能的良好代理。然后提出了基于神经网络的客观和自动化框架,以通过COF的代理来预测手术技能。神经网络由监督回归损失和无监督的排名损失共同训练。在实验中,提出的方法达到了0.55 Spearman与整体技术技能的基础真理的相关性,这甚至与初级外科医生的人类表现相当。

Surgical skill assessment is important for surgery training and quality control. Prior works on this task largely focus on basic surgical tasks such as suturing and knot tying performed in simulation settings. In contrast, surgical skill assessment is studied in this paper on a real clinical dataset, which consists of fifty-seven in-vivo laparoscopic surgeries and corresponding skill scores annotated by six surgeons. From analyses on this dataset, the clearness of operating field (COF) is identified as a good proxy for overall surgical skills, given its strong correlation with overall skills and high inter-annotator consistency. Then an objective and automated framework based on neural network is proposed to predict surgical skills through the proxy of COF. The neural network is jointly trained with a supervised regression loss and an unsupervised rank loss. In experiments, the proposed method achieves 0.55 Spearman's correlation with the ground truth of overall technical skill, which is even comparable with the human performance of junior surgeons.

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