Till Holger, Esposito Ciro, Yeung Chung Kwong, Patkowski Dariusz, Shehata Sameh, Rothenberg Steve, Singer Georg, Till Tristan
Department of Pediatric and Adolescent Surgery, Medical University of Graz, Graz, Austria.
Division of Pediatric Surgery, Federico II University Hospital, Naples, Italy.
Front Pediatr. 2025 May 23;13:1584628. doi: 10.3389/fped.2025.1584628. eCollection 2025.
Computer vision (CV), a subset of artificial intelligence (AI), enables deep learning models to detect specific events within digital images or videos. Especially in medical imaging, AI/CV holds significant promise analyzing data from x-rays, CT scans, and MRIs. However, the application of AI/CV to support surgery has progressed more slowly. This study presents the development of the first image-based AI/CV model classifying quality indicators of laparoscopic Nissen fundoplication (LNF).
Six visible quality indicators (VQIs) for Nissen fundoplication were predefined as parameters to build datasets including correct (360° fundoplication) and incorrect configurations (incomplete, twisted wraps, too long (>four knots), too loose, too long, malpositioning (at/below the gastroesophageal junction). In a porcine model, multiple iterations of each VQI were performed. A total of 57 video sequences were processed, extracting 3,138 images at 0.5-second intervals. These images were annotated corresponding to their respective VQIs. The EfficientNet architecture, a typical deep learning model, was employed to train an ensemble of image classifiers, as well as a multi-class classifier, to distinguish between correct and incorrect Nissen wraps.
The AI/CV models demonstrated strong performance in predicting image-based VQIs for Nissen fundoplication. The individual image classifiers achieved an average F1-Score of 0.9738 ± 0.1699 when adjusted for the optimal Equal Error Rate (EER) as the decision boundary. A similar performance was observed using the multi-class classifier. The results remained robust despite extensive image augmentation. For 3/5 classifiers the results remained identical; detection of incomplete and too loose LNFs showed a slight decline in predictive power.
This experimental study demonstrates that an AI/CV algorithm can effectively detect VQIs in digital images of Nissen fundoplications. This proof of concept does not aim to test clinical Nissen fundoplication, but provides experimental evidence that AI/CV models can be trained to classify various laparoscopic images of surgical configurations. In the future, this concept could be developed into AI based real-time surgical support to enhance surgical outcome and patient safety.
计算机视觉(CV)是人工智能(AI)的一个子集,它使深度学习模型能够检测数字图像或视频中的特定事件。特别是在医学成像领域,人工智能/计算机视觉在分析来自X光、CT扫描和MRI的数据方面具有巨大潜力。然而,人工智能/计算机视觉在支持手术方面的应用进展较为缓慢。本研究展示了首个基于图像的人工智能/计算机视觉模型的开发,该模型用于对腹腔镜Nissen胃底折叠术(LNF)的质量指标进行分类。
将Nissen胃底折叠术的六个可见质量指标(VQIs)预先定义为参数,以构建数据集,包括正确配置(360°胃底折叠)和错误配置(折叠不完全、扭曲、过长(>四个结)、过松、过长、位置不当(在胃食管交界处或其下方))。在猪模型中,对每个VQI进行了多次迭代。总共处理了57个视频序列,以0.5秒的间隔提取了3138张图像。这些图像根据各自的VQIs进行了标注。采用典型的深度学习模型EfficientNet架构来训练图像分类器集合以及多类分类器,并区分正确和错误的Nissen折叠。
人工智能/计算机视觉模型在预测基于图像的Nissen胃底折叠术VQIs方面表现出色。当以最佳等错误率(EER)作为决策边界进行调整时,各个图像分类器的平均F1分数达到0.9738±0.1699。使用多类分类器时也观察到了类似的性能。尽管进行了大量的图像增强,结果仍然稳健。对于3/5的分类器,结果保持不变;检测不完全和过松的LNF时预测能力略有下降。
本实验研究表明,人工智能/计算机视觉算法可以有效地检测Nissen胃底折叠术数字图像中的VQIs。这一概念验证并非旨在测试临床Nissen胃底折叠术,而是提供了实验证据,表明可以训练人工智能/计算机视觉模型对各种手术配置的腹腔镜图像进行分类。未来,这一概念可以发展为基于人工智能的实时手术支持,以提高手术效果和患者安全性。