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开发一种有效的胸腔镜食管闭锁手术在职培训模型及自动评估系统。

Developing an Effective Off-the-job Training Model and an Automated Evaluation System for Thoracoscopic Esophageal Atresia Surgery.

作者信息

Yasui Akihiro, Hayashi Yuichiro, Hinoki Akinari, Amano Hizuru, Shirota Chiyoe, Tainaka Takahisa, Sumida Wataru, Makita Satoshi, Kano Yoko, Takimoto Aitaro, Nakagawa Yoichi, Takuya Maeda, Kato Daiki, Gohda Yousuke, Liu Jiahui, Guo Yaohui, Mori Kensaku, Uchida Hiroo

机构信息

Department of Pediatric Surgery, Nagoya University Graduate School of Medicine, 65 Tsurumai-cho, Showa-ku, Nagoya, Aichi 466-8550, Japan.

Graduate School of Informatics, Nagoya University, Furo-cho, Chikusa-ku, Nagoya, Aichi, Japan.

出版信息

J Pediatr Surg. 2025 Feb;60(2):161615. doi: 10.1016/j.jpedsurg.2024.06.023. Epub 2024 Jul 6.

Abstract

BACKGROUND

Pediatric minimally invasive surgery requires advanced technical skills. Off-the-job training (OJT), especially when using disease-specific models, is an effective method of acquiring surgical skills. To achieve effective OJT, it is necessary to provide objective and appropriate skill assessment feedback to trainees. We aimed to construct a system that automatically evaluates surgical skills based on forceps movement using deep learning (DL).

METHODS

Using our original esophageal atresia OJT model, participants were tasked with performing esophageal anastomosis. All tasks were recorded for image analysis. Based on manual objective skill assessments, each participant's surgical skills were categorized into two groups: good and poor. The motion of the forceps in both groups was used as training data. Employing this training data, we constructed an automated system that recognized the movement of forceps and determined the quality of the surgical technique.

RESULTS

Thirteen participants were assigned to the good skill group and 32 to the poor skill group. These cases were validated using an automated skill assessment system. This system showed a precision of 75%, a specificity of 94%, and an area under the receiver operating characteristic curve of 0.81.

CONCLUSIONS

We constructed a system that automatically evaluated the quality of surgical techniques based on the movement of forceps using DL. Artificial intelligence diagnostics further revealed the procedures important for suture manipulation.

LEVELS OF EVIDENCE

Level IV.

摘要

背景

小儿微创手术需要先进的技术技能。在职培训(OJT),尤其是使用特定疾病模型时,是获得手术技能的有效方法。为了实现有效的在职培训,有必要向学员提供客观且恰当的技能评估反馈。我们旨在构建一个基于深度学习(DL)通过镊子运动自动评估手术技能的系统。

方法

使用我们原始的食管闭锁在职培训模型,让参与者进行食管吻合术。所有任务均被记录以进行图像分析。基于人工客观技能评估,将每位参与者的手术技能分为两组:良好和较差。两组中镊子的运动用作训练数据。利用这些训练数据,我们构建了一个自动系统,该系统可识别镊子的运动并确定手术技术的质量。

结果

13名参与者被分配到良好技能组,32名被分配到较差技能组。这些病例使用自动技能评估系统进行验证。该系统的精度为75%,特异性为94%,受试者操作特征曲线下面积为0.81。

结论

我们构建了一个基于深度学习通过镊子运动自动评估手术技术质量的系统。人工智能诊断进一步揭示了缝合操作中重要的步骤。

证据级别

四级。

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