论文标题

AS-OCT组织分割的宏观微丝方弱监督框架

A Macro-Micro Weakly-supervised Framework for AS-OCT Tissue Segmentation

论文作者

Ning, Munan, Bian, Cheng, Lu, Donghuan, Zhou, Hong-Yu, Yu, Shuang, Yuan, Chenglang, Guo, Yang, Wang, Yaohua, Ma, Kai, Zheng, Yefeng

论文摘要

初级角度闭合青光眼(PACG)是亚洲人不可逆失明的主要原因。 PACG的早期检测至关重要,以便提供及时的治疗并最大程度地减少视力丧失。在临床实践中,PACG是通过用前部光学相干断层扫描(AS-OCT)分析角膜和虹膜之间的角度来诊断PACG的。深度学习技术的快速开发提供了建立计算机辅助系统的可行性,以快速,准确的角膜和虹膜组织的快速分割。但是,深度学习方法在医学成像领域中的应用仍受到缺乏足够全面注销的样本的限制。在本文中,我们提出了一个新颖的框架,通过使用弱宣布的图像(多数)和完全注销的图像(少数族裔)的组合,以精确的AS-OCT图像细分目标组织。提出的框架由两个模型组成,它们相互提供可靠的指导。此外,采用不确定性指导策略来提高指导的准确性和稳定性。关于公开年龄数据集的详细实验表明,所提出的框架的表现优于最先进的半/弱监督方法,并且具有可比的性能与完全监督的方法。因此,所提出的方法被证明可以有效利用弱通量图像中包含的信息,并具有实质上减轻注释工作量的能力。

Primary angle closure glaucoma (PACG) is the leading cause of irreversible blindness among Asian people. Early detection of PACG is essential, so as to provide timely treatment and minimize the vision loss. In the clinical practice, PACG is diagnosed by analyzing the angle between the cornea and iris with anterior segment optical coherence tomography (AS-OCT). The rapid development of deep learning technologies provides the feasibility of building a computer-aided system for the fast and accurate segmentation of cornea and iris tissues. However, the application of deep learning methods in the medical imaging field is still restricted by the lack of enough fully-annotated samples. In this paper, we propose a novel framework to segment the target tissues accurately for the AS-OCT images, by using the combination of weakly-annotated images (majority) and fully-annotated images (minority). The proposed framework consists of two models which provide reliable guidance for each other. In addition, uncertainty guided strategies are adopted to increase the accuracy and stability of the guidance. Detailed experiments on the publicly available AGE dataset demonstrate that the proposed framework outperforms the state-of-the-art semi-/weakly-supervised methods and has a comparable performance as the fully-supervised method. Therefore, the proposed method is demonstrated to be effective in exploiting information contained in the weakly-annotated images and has the capability to substantively relieve the annotation workload.

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