Automated Detection of Anatomical Landmarks During Colonoscopy Using a Deep Learning Model.

Journal of the Canadian Association of Gastroenterology Pub Date : 2023-05-02 eCollection Date: 2023-08-01 DOI:10.1093/jcag/gwad017
Mahsa Taghiakbari, Sina Hamidi Ghalehjegh, Emmanuel Jehanno, Tess Berthier, Lisa di Jorio, Saber Ghadakzadeh, Alan Barkun, Mark Takla, Mickael Bouin, Eric Deslandres, Simon Bouchard, Sacha Sidani, Yoshua Bengio, Daniel von Renteln Md
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引用次数: 1

Abstract

Background and aims: Identification and photo-documentation of the ileocecal valve (ICV) and appendiceal orifice (AO) confirm completeness of colonoscopy examinations. We aimed to develop and test a deep convolutional neural network (DCNN) model that can automatically identify ICV and AO, and differentiate these landmarks from normal mucosa and colorectal polyps.

Methods: We prospectively collected annotated full-length colonoscopy videos of 318 patients undergoing outpatient colonoscopies. We created three nonoverlapping training, validation, and test data sets with 25,444 unaltered frames extracted from the colonoscopy videos showing four landmarks/image classes (AO, ICV, normal mucosa, and polyps). A DCNN classification model was developed, validated, and tested in separate data sets of images containing the four different landmarks.

Results: After training and validation, the DCNN model could identify both AO and ICV in 18 out of 21 patients (85.7%). The accuracy of the model for differentiating AO from normal mucosa, and ICV from normal mucosa were 86.4% (95% CI 84.1% to 88.5%), and 86.4% (95% CI 84.1% to 88.6%), respectively. Furthermore, the accuracy of the model for differentiating polyps from normal mucosa was 88.6% (95% CI 86.6% to 90.3%).

Conclusion: This model offers a novel tool to assist endoscopists with automated identification of AO and ICV during colonoscopy. The model can reliably distinguish these anatomical landmarks from normal mucosa and colorectal polyps. It can be implemented into automated colonoscopy report generation, photo-documentation, and quality auditing solutions to improve colonoscopy reporting quality.

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使用深度学习模型自动检测结肠镜检查过程中的解剖标志。
背景和目的:回盲瓣(ICV)和阑尾孔(AO)的识别和照片记录确认结肠镜检查的完整性。我们的目标是开发和测试一个深度卷积神经网络(DCNN)模型,该模型可以自动识别ICV和AO,并将这些标志与正常粘膜和结肠直肠息肉区分开来。方法:前瞻性收集318例门诊结肠镜检查患者的带注释的全长结肠镜检查视频。我们创建了三个非重叠的训练、验证和测试数据集,其中25,444帧从结肠镜检查视频中提取,显示了四种地标/图像类别(AO、ICV、正常粘膜和息肉)。在包含四个不同地标的图像的单独数据集中开发,验证和测试了DCNN分类模型。结果:经过训练和验证,DCNN模型在21例患者中有18例(85.7%)能同时识别出AO和ICV。该模型鉴别AO与正常黏膜、ICV与正常黏膜的准确率分别为86.4% (95% CI 84.1% ~ 88.5%)和86.4% (95% CI 84.1% ~ 88.6%)。此外,该模型区分息肉与正常粘膜的准确率为88.6% (95% CI 86.6% ~ 90.3%)。结论:该模型为协助内镜医师在结肠镜检查过程中自动识别AO和ICV提供了一种新的工具。该模型可以可靠地将这些解剖标志与正常粘膜和结直肠息肉区分开来。它可以实现到自动结肠镜检查报告生成,照片文档和质量审计解决方案,以提高结肠镜检查报告质量。
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