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基于鼻中隔成形术中非结构化工具运动的手术室自动化客观手术技能评估。

Automated objective surgical skill assessment in the operating room from unstructured tool motion in septoplasty.

作者信息

Ahmidi Narges, Poddar Piyush, Jones Jonathan D, Vedula S Swaroop, Ishii Lisa, Hager Gregory D, Ishii Masaru

机构信息

Department of Computer Science, Johns Hopkins University, Baltimore, MD, USA,

出版信息

Int J Comput Assist Radiol Surg. 2015 Jun;10(6):981-91. doi: 10.1007/s11548-015-1194-1. Epub 2015 Apr 17.

Abstract

PURPOSE

Previous work on surgical skill assessment using intraoperative tool motion has focused on highly structured surgical tasks such as cholecystectomy and used generic motion metrics such as time and number of movements. Other statistical methods such as hidden Markov models (HMM) and descriptive curve coding (DCC) have been successfully used to assess skill in structured activities on bench-top tasks. Methods to assess skill and provide effective feedback to trainees for unstructured surgical tasks in the operating room, such as tissue dissection in septoplasty, have yet to be developed.

METHODS

We proposed a method that provides a descriptive structure for septoplasty by automatically segmenting it into higher-level meaningful activities called strokes. These activities characterize the surgeon's tool motion pattern. We constructed a spatial graph from the sequence of strokes in each procedure and used its properties to train a classifier to distinguish between expert and novice surgeons. We compared the results from our method with those from HMM, DCC, and generic metric-based approaches.

RESULTS

We showed that our method--with an average accuracy of 91 %--performs better or equal than these state-of-the-art methods, while simultaneously providing surgeons with an intuitive understanding of the procedure.

CONCLUSIONS

In this study, we developed and evaluated an automated approach to objectively assess surgical skill during unstructured task of tissue dissection in nasal septoplasty.

摘要

目的

以往利用术中工具运动进行手术技能评估的研究主要集中在高度结构化的手术任务上,如胆囊切除术,并使用诸如时间和动作次数等通用运动指标。其他统计方法,如隐马尔可夫模型(HMM)和描述性曲线编码(DCC),已成功用于评估台式任务中结构化活动的技能。然而,尚未开发出用于评估手术室中非结构化手术任务(如鼻中隔成形术中的组织解剖)技能并向受训者提供有效反馈的方法。

方法

我们提出了一种方法,通过自动将鼻中隔成形术分割为称为“笔画”的更高级别的有意义活动,为鼻中隔成形术提供一种描述性结构。这些活动表征了外科医生的工具运动模式。我们从每个手术过程中的笔画序列构建了一个空间图,并利用其属性训练一个分类器,以区分专家外科医生和新手外科医生。我们将我们方法的结果与HMM、DCC和基于通用指标的方法的结果进行了比较。

结果

我们表明,我们的方法平均准确率为91%,比这些现有方法表现更好或相当,同时为外科医生提供了对手术过程的直观理解。

结论

在本研究中,我们开发并评估了一种自动化方法,用于在鼻中隔成形术组织解剖的非结构化任务期间客观评估手术技能。

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