基于二叉分割树和U-net的上消化道内镜图像交互式z线分割工具

X. Manh, Hai Vu, Xuan Dung Nguyen, Linh Hoang Pham Tu, V. Dao, Phuc Binh Nguyen, M. Nguyen
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引用次数: 2

摘要

z线是食管与胃粘膜的连接点,是探索胃食管反流病等食道疾病的重要标志。本文描述了一种有效的交互式分割工具,用于上消化道内镜(UGIE)图像的z线标注。为此,我们提出了一种包含两个主要步骤的方法:首先,设计一个粗略分割z线边界区域的粗格式;由于深度神经网络在生物医学成像中的最新进展,如U-net分割,z线标注可以自动实现,并且结果可以接受。然而,由于胃粘膜的复杂性,U-net的分割不够准确。然后,我们提出了一个微调方案,旨在减少U-net的结果。该方法基于二叉分割树(Binary Partition Tree, BPT)算法,该算法内置于图形用户界面中。提出的框架的目的是帮助内窥镜医生通过GUI以最少的交互努力获得最佳分割结果。通过比较四种不同分割方案的性能,建立了实验来评估该方法的有效性。它们分别是手工分割、U-net完全自动化分割、仅使用BPT的交互式分割以及提出的U-net+BPT方案。结果表明,该方法收敛到理想区域的速度比其他三种方法快。它花费了最少的时间成本和用户的努力,却达到了最好的精度。该方法也为UGIE图像中异常区域的分割提供了一种可行的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Z-line segmentation tool for Upper Gastrointestinal Endoscopy Images using Binary Partition Tree and U-net
Z-line is a junction between esophageal and gastric mucosa which is an important landmark in exploring esophageal diseases such as Gastroesophageal Reflux Diseases (GERD). This paper describes an effective interactive segmentation tool for Z-line annotation from Upper Gastrointestinal Endoscopy (UGIE) images. To this end, we propose a method containing of two main steps: firstly, a coarse scheme is designed to roughly segment boundary regions of Z-line. Thanks to recent advances of deep neural networks in biomedical imaging such as U-net segmentation, Z-line annotation is automatically achieved with acceptable results. However, the U-net’s segmentation is not accurate enough due to gastric mucosa complexity. We then propose a fine-tuning scheme, which aims to prune the U-net’s results. The proposed method is based on Binary Partition Tree (BPT) algorithms, which BPT is built-in into a Graphic User Interface. Objective of the proposed framework is to help endoscopy doctors achieve the best segmentation results with lowest efforts of interactions via the GUI. The experiment was setup to evaluate effectiveness of the proposed method by comparing performances of four different segmentation schemes. They are manual segmentation by hand, fully automation by U-net, the interactive segmentation via BPT only, and the proposed scheme (U-net+BPT). The results confirmed that the proposed method converged faster to ideal regions than the other three. It took the lowest time costs and users’ efforts but achieved the best accuracy. The proposed method also suggest a feasible solution for segmenting abnormal regions in UGIE images.
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