人工智能在复杂机器人辅助肿瘤手术中的情景感知外科指导:一项探索性可行性研究

IF 3.5 2区 医学 Q2 ONCOLOGY Ejso Pub Date : 2024-12-01 DOI:10.1016/j.ejso.2023.106996
Fiona R. Kolbinger , Sebastian Bodenstedt , Matthias Carstens , Stefan Leger , Stefanie Krell , Franziska M. Rinner , Thomas P. Nielen , Johanna Kirchberg , Johannes Fritzmann , Jürgen Weitz , Marius Distler , Stefanie Speidel
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引用次数: 0

摘要

复杂的肿瘤手术过程带来了各种各样的手术挑战,包括在不同的组织平面上进行解剖和在不同的手术阶段保存脆弱的解剖结构。在直肠手术中,侵犯解剖平面会增加局部复发和自主神经损伤的风险,导致尿失禁和性功能障碍。本研究探讨了利用机器学习在机器人辅助直肠切除(RARR)中进行相位识别和目标结构分割的可行性。材料和方法共记录了57例RARR,并对这些RARR的亚组进行了手术期和靶结构(解剖结构、组织类型、静态结构和解剖区域)的确切位置的注释。对于手术阶段识别,我们训练了三种机器学习模型:LSTM、MSTCN和Trans-SVNet。基于9037张图像中目标结构的逐像素标注,训练基于DeepLabv3的单个分割模型。模型的性能通过F1评分、交叉交叉(IoU)、准确性、精密度、召回率和特异性进行评估。结果MSTCN模型的相位识别效果最好,F1值为0.82±0.01,准确率为0.84±0.03。靶结构分割的平均白条范围为器官和组织类型的0.14±0.22 ~ 0.80±0.14,解剖区域的0.11±0.11 ~ 0.44±0.30。图像质量、扭曲因素(如血液、烟雾)和技术挑战(如缺乏深度感知)极大地影响了分割性能。结论基于机器学习的目标结构的相位识别和分割在RARR中是可行的。在未来,这些功能可以集成到直肠手术的上下文感知外科指导系统中。
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Artificial Intelligence for context-aware surgical guidance in complex robot-assisted oncological procedures: An exploratory feasibility study

Introduction

Complex oncological procedures pose various surgical challenges including dissection in distinct tissue planes and preservation of vulnerable anatomical structures throughout different surgical phases. In rectal surgery, violation of dissection planes increases the risk of local recurrence and autonomous nerve damage resulting in incontinence and sexual dysfunction. This work explores the feasibility of phase recognition and target structure segmentation in robot-assisted rectal resection (RARR) using machine learning.

Materials and methods

A total of 57 RARR were recorded and subsets of these were annotated with respect to surgical phases and exact locations of target structures (anatomical structures, tissue types, static structures, and dissection areas). For surgical phase recognition, three machine learning models were trained: LSTM, MSTCN, and Trans-SVNet. Based on pixel-wise annotations of target structures in 9037 images, individual segmentation models based on DeepLabv3 were trained. Model performance was evaluated using F1 score, Intersection-over-Union (IoU), accuracy, precision, recall, and specificity.

Results

The best results for phase recognition were achieved with the MSTCN model (F1 score: 0.82 ± 0.01, accuracy: 0.84 ± 0.03). Mean IoUs for target structure segmentation ranged from 0.14 ± 0.22 to 0.80 ± 0.14 for organs and tissue types and from 0.11 ± 0.11 to 0.44 ± 0.30 for dissection areas. Image quality, distorting factors (i.e. blood, smoke), and technical challenges (i.e. lack of depth perception) considerably impacted segmentation performance.

Conclusion

Machine learning-based phase recognition and segmentation of selected target structures are feasible in RARR. In the future, such functionalities could be integrated into a context-aware surgical guidance system for rectal surgery.
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来源期刊
Ejso
Ejso 医学-外科
CiteScore
6.40
自引率
2.60%
发文量
1148
审稿时长
41 days
期刊介绍: JSO - European Journal of Surgical Oncology ("the Journal of Cancer Surgery") is the Official Journal of the European Society of Surgical Oncology and BASO ~ the Association for Cancer Surgery. The EJSO aims to advance surgical oncology research and practice through the publication of original research articles, review articles, editorials, debates and correspondence.
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