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人工智能对机器人辅助微创食管切除术期间喉返神经识别时机的影响

Impact of Artificial Intelligence on the Timing of Recurrent Laryngeal Nerve Recognition during Robot-Assisted Minimally Invasive Esophagectomy.

作者信息

Furube Tasuku, Takeuchi Masashi, Kawakubo Hirofumi, Noma Kazuhiro, Maeda Naoaki, Daiko Hiroyuki, Ishiyama Koshiro, Otsuka Koji, Kishimoto Yutaka, Koyanagi Kazuo, Tajima Kohei, Matsukawa Yuta, Maeda Yusuke, Matsuda Satoru, Kitagawa Yuko

机构信息

Department of Surgery, Keio University School of Medicine, Tokyo, Japan.

Department of Gastroenterological Surgery, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama, Japan.

出版信息

Ann Surg Oncol. 2025 Jun 26. doi: 10.1245/s10434-025-17649-3.

Abstract

BACKGROUND

As a first step to prevent recurrent laryngeal nerve (RLN) palsy, we have developed an artificial intelligence (AI)-based anatomical recognition system for critical anatomical structures in robot-assisted minimally invasive esophagectomy (RAMIE). In the present study, we investigated whether AI would enable surgeons to rapidly recognize the RLN.

PATIENTS AND METHODS

Five surgical videos of RAMIE were used to validate the AI. The confidence level (CL) was established as a new criterion to define how confidently surgeons recognize the RLN and stratified into three levels: CL0 is the level when looking for RLN candidates; CL1, after recognizing a candidate but before confirming it as the RLN; CL2, after confirming that the candidate is the RLN. Eight trainee surgeons watched the original and AI-enhanced videos with an interval of > 4 weeks, and they were instructed to declare the RLN's location at the start of CL1 and CL2. The time to CL1 and CL2 from the beginning of RLN lymph node dissection with and without AI were compared.

RESULTS

In all cases, the average time to CL1 and CL2 of the right and left RLN recognition was reduced by using AI. Particularly, in the right RLN recognition, significant differences were found between the surgeons using and not using AI (CL1, 134 vs. 178 s, p < 0.001; CL2, 233 vs. 325 s, p < 0.001).

CONCLUSIONS

This study demonstrated that AI would enable surgeons not only to rapidly identify the RLN but also to enhance their confidence in its identification.

摘要

背景

作为预防喉返神经(RLN)麻痹的第一步,我们开发了一种基于人工智能(AI)的解剖识别系统,用于机器人辅助微创食管切除术(RAMIE)中的关键解剖结构。在本研究中,我们调查了人工智能是否能使外科医生快速识别喉返神经。

患者与方法

使用五个RAMIE手术视频来验证人工智能。建立置信水平(CL)作为一个新标准,以定义外科医生识别喉返神经的自信程度,并分为三个级别:CL0是寻找喉返神经候选者时的级别;CL1是识别出候选者但尚未确认为喉返神经时的级别;CL2是确认候选者为喉返神经后的级别。八名实习外科医生观看原始视频和人工智能增强视频,间隔时间超过4周,并被要求在CL1和CL2开始时声明喉返神经的位置。比较了在有和没有人工智能的情况下,从开始进行喉返神经淋巴结清扫到达到CL1和CL2的时间。

结果

在所有病例中,使用人工智能后,左右喉返神经识别达到CL1和CL2的平均时间均缩短。特别是在右侧喉返神经识别中,使用和未使用人工智能的外科医生之间存在显著差异(CL1,134秒对178秒,p<0.001;CL2,233秒对325秒,p<0.001)。

结论

本研究表明,人工智能不仅能使外科医生快速识别喉返神经,还能增强他们对其识别的信心。

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