论文标题

内窥镜视频提要中肾结石的分割

Segmentation of kidney stones in endoscopic video feeds

论文作者

Stoebner, Zachary A, Lu, Daiwei, Hong, Seok Hee, Kavoussi, Nicholas L, Oguz, Ipek

论文摘要

由于最近的发展飙升了深度学习的潜在应用,因此图像细分已经越来越多地应用于医疗环境中。特别是泌尿外科是一种用于采用实时图像分割系统的药物领域,其长期目标是自动化内窥镜石材治疗。在这个项目中,我们探索了有监督的深度学习模型,以注释外科内窥镜视频饲料中的肾结石。在本文中,我们描述了如何从原始视频中构建数据集以及如何开发管道以尽可能多地自动化流程。对于分割任务,我们对三个基线深度学习模型(U-NET,U-NET ++和Densenet)进行了调整,以预测内窥镜视频框架的注释,其精度高于90 \%。为了显示实时使用的临床潜力,我们还确认,我们最佳训练的模型可以以每秒30帧的速度准确注释新视频。我们的结果表明,所提出的方法证明了对图像分割的持续开发和研究以注释输尿管镜视频提要。

Image segmentation has been increasingly applied in medical settings as recent developments have skyrocketed the potential applications of deep learning. Urology, specifically, is one field of medicine that is primed for the adoption of a real-time image segmentation system with the long-term aim of automating endoscopic stone treatment. In this project, we explored supervised deep learning models to annotate kidney stones in surgical endoscopic video feeds. In this paper, we describe how we built a dataset from the raw videos and how we developed a pipeline to automate as much of the process as possible. For the segmentation task, we adapted and analyzed three baseline deep learning models -- U-Net, U-Net++, and DenseNet -- to predict annotations on the frames of the endoscopic videos with the highest accuracy above 90\%. To show clinical potential for real-time use, we also confirmed that our best trained model can accurately annotate new videos at 30 frames per second. Our results demonstrate that the proposed method justifies continued development and study of image segmentation to annotate ureteroscopic video feeds.

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