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使用基于手术视频的自动性能指标预测神经外科手术中模拟血管损伤控制的失血量和成功率:一项初步研究。

Use of surgical video-based automated performance metrics to predict blood loss and success of simulated vascular injury control in neurosurgery: a pilot study.

作者信息

Pangal Dhiraj J, Kugener Guillaume, Cardinal Tyler, Lechtholz-Zey Elizabeth, Collet Casey, Lasky Sasha, Sundaram Shivani, Zhu Yichao, Roshannai Arman, Chan Justin, Sinha Aditya, Hung Andrew J, Anandkumar Animashree, Zada Gabriel, Donoho Daniel A

机构信息

1Department of Neurosurgery, Keck School of Medicine of the University of Southern California, Los Angeles, California.

2Center for Robotic Simulation and Education, USC Institute of Urology, Keck School of Medicine of the University of Southern California, Los Angeles, California.

出版信息

J Neurosurg. 2021 Dec 31;137(3):840-849. doi: 10.3171/2021.10.JNS211064. Print 2022 Sep 1.

Abstract

OBJECTIVE

Experts can assess surgeon skill using surgical video, but a limited number of expert surgeons are available. Automated performance metrics (APMs) are a promising alternative but have not been created from operative videos in neurosurgery to date. The authors aimed to evaluate whether video-based APMs can predict task success and blood loss during endonasal endoscopic surgery in a validated cadaveric simulator of vascular injury of the internal carotid artery.

METHODS

Videos of cadaveric simulation trials by 73 neurosurgeons and otorhinolaryngologists were analyzed and manually annotated with bounding boxes to identify the surgical instruments in the frame. APMs in five domains were defined-instrument usage, time-to-phase, instrument disappearance, instrument movement, and instrument interactions-on the basis of expert analysis and task-specific surgical progressions. Bounding-box data of instrument position were then used to generate APMs for each trial. Multivariate linear regression was used to test for the associations between APMs and blood loss and task success (hemorrhage control in less than 5 minutes). The APMs of 93 successful trials were compared with the APMs of 49 unsuccessful trials.

RESULTS

In total, 29,151 frames of surgical video were annotated. Successful simulation trials had superior APMs in each domain, including proportionately more time spent with the key instruments in view (p < 0.001) and less time without hemorrhage control (p = 0.002). APMs in all domains improved in subsequent trials after the participants received personalized expert instruction. Attending surgeons had superior instrument usage, time-to-phase, and instrument disappearance metrics compared with resident surgeons (p < 0.01). APMs predicted surgeon performance better than surgeon training level or prior experience. A regression model that included APMs predicted blood loss with an R2 value of 0.87 (p < 0.001).

CONCLUSIONS

Video-based APMs were superior predictors of simulation trial success and blood loss than surgeon characteristics such as case volume and attending status. Surgeon educators can use APMs to assess competency, quantify performance, and provide actionable, structured feedback in order to improve patient outcomes. Validation of APMs provides a benchmark for further development of fully automated video assessment pipelines that utilize machine learning and computer vision.

摘要

目的

专家可以通过手术视频评估外科医生的技能,但可用的专家外科医生数量有限。自动性能指标(APM)是一种很有前景的替代方法,但迄今为止尚未从神经外科手术视频中创建出来。作者旨在评估基于视频的APM是否能够在经过验证的颈内动脉血管损伤尸体模拟器中预测鼻内镜手术期间的任务成功率和失血量。

方法

分析了73名神经外科医生和耳鼻喉科医生进行尸体模拟试验的视频,并用边界框进行手动标注,以识别画面中的手术器械。基于专家分析和特定任务的手术进展,在五个领域定义了APM——器械使用、阶段时间、器械消失、器械移动和器械交互。然后使用器械位置的边界框数据为每个试验生成APM。采用多元线性回归来检验APM与失血量和任务成功率(5分钟内控制出血)之间的关联。将93次成功试验的APM与49次失败试验的APM进行比较。

结果

总共标注了29151帧手术视频。成功的模拟试验在每个领域都有更好的APM,包括关键器械在视野中的时间比例更高(p<0.001)以及无出血控制的时间更短(p = 0.002)。在参与者接受个性化专家指导后的后续试验中,所有领域的APM都有所改善。与住院医生相比,主治医生在器械使用、阶段时间和器械消失指标方面表现更优(p<0.01)。APM比外科医生的培训水平或既往经验更能预测外科医生的表现。一个包含APM的回归模型预测失血量的R2值为0.87(p<

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