Deep Learning-Based Detection of Malignant Bile Duct Stenosis in Fluoroscopy Images of Endoscopic Retrograde Cholangiopancreatography.

IF 3 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY Digestion Pub Date : 2024-12-13 DOI:10.1159/000543049
Kien Vu Trung, Marcus Hollenbach, Gregory Patrick Veldhuizen, Oliver Lester Saldanha, Jakob Garbe, Jonas Rosendahl, Sebastian Krug, Patrick Michl, Jürgen Feisthammel, Thomas Karlas, Jochen Hampe, Albrecht Hoffmeister, Jakob Nikolas Kather
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Abstract

Introduction: The accurate distinction between benign and malignant biliary strictures (BS) poses a significant challenge. Despite the use of bile duct biopsies and brush cytology via endoscopic retrograde cholangiopancreaticography (ERCP), the results remain suboptimal. Single-operator cholangioscopy can enhance the diagnostic yield in BS, but its limited availability and high costs are substantial barriers. Convolutional Neural Network (CNN)-based systems may improve the diagnostic process and enhance reproducibility. Therefore, we assessed the feasibility of using deep learning to differentiate BS using fluoroscopy images during ERCP.

Methods: We conducted a retrospective review of adult patients (n=251) from three university centers in Germany (Leipzig, Dresden, Halle) who underwent ERCP. We developed and evaluated a deep learning-based model using fluoroscopy images. The performance of the classifier was evaluated by measuring the area under the receiver operating characteristic curve (AUROC) and we utilized saliency map analyses to understand the decision-making process of the model.

Results: In cross-validation experiments, malignant BS were detected with a mean AUROC of 0.89 ± 0.03. The test set of the Leipzig cohort demonstrated an AUROC of 0.90. In two independent external validation cohorts (Dresden, Halle), the deep learning-based classifier achieved an AUROC of 0.72 and 0.76, respectively. The artificial intelligence model's predictions identified plausible characteristics within the fluoroscopy images.

Conclusion: By using a deep learning model, we were able to discriminate malignant BS from benign biliary conditions. The application of artificial intelligence enhances the diagnostic yield of malignant BS and should be validated in a prospective design.

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基于深度学习的内镜逆行胆管造影透视图像中恶性胆管狭窄的检测。
导言:准确区分良性和恶性胆道狭窄(BS)是一个重大挑战。尽管通过内窥镜逆行胆管胰胆管造影(ERCP)进行胆管活检和刷细胞学检查,结果仍然不理想。单个操作人员的胆道镜检查可以提高BS的诊断率,但其有限的可用性和高昂的费用是主要障碍。基于卷积神经网络(CNN)的系统可以改善诊断过程并提高可重复性。因此,我们评估了在ERCP期间使用透视图像使用深度学习来区分BS的可行性。方法:我们对来自德国三所大学中心(莱比锡、德累斯顿、哈雷)接受ERCP的成年患者(n=251)进行了回顾性研究。我们利用透视图像开发并评估了一种基于深度学习的模型。通过测量接收者工作特征曲线(AUROC)下的面积来评估分类器的性能,并利用显著性图分析来了解模型的决策过程。结果:在交叉验证实验中,检测到恶性BS,平均AUROC为0.89±0.03。莱比锡队列的检验集显示AUROC为0.90。在两个独立的外部验证队列(Dresden, Halle)中,基于深度学习的分类器分别实现了0.72和0.76的AUROC。人工智能模型的预测在透视图像中识别出合理的特征。结论:通过使用深度学习模型,我们能够区分恶性BS和良性胆道疾病。人工智能的应用提高了恶性BS的诊断率,应在前瞻性设计中进行验证。
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来源期刊
Digestion
Digestion 医学-胃肠肝病学
CiteScore
7.90
自引率
0.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: ''Digestion'' concentrates on clinical research reports: in addition to editorials and reviews, the journal features sections on Stomach/Esophagus, Bowel, Neuro-Gastroenterology, Liver/Bile, Pancreas, Metabolism/Nutrition and Gastrointestinal Oncology. Papers cover physiology in humans, metabolic studies and clinical work on the etiology, diagnosis, and therapy of human diseases. It is thus especially cut out for gastroenterologists employed in hospitals and outpatient units. Moreover, the journal''s coverage of studies on the metabolism and effects of therapeutic drugs carries considerable value for clinicians and investigators beyond the immediate field of gastroenterology.
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