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利用深度学习进行脉络膜结构分析的脉络膜层和血管协同分割。

Synergistically segmenting choroidal layer and vessel using deep learning for choroid structure analysis.

机构信息

Institute of Medical Technology, Peking University Health Science Center, Peking University, Beijing 100191, People's Republic of China.

Department of Biomedical Engineering, College of Future Technology, Peking University, Beijing 100871, People's Republic of China.

出版信息

Phys Med Biol. 2022 Apr 1;67(8). doi: 10.1088/1361-6560/ac5ed7.

Abstract

. The choroid is the most vascularized structure in the human eye, whose layer structure and vessel distribution are both critical for the physiology of the retina, and disease pathogenesis of the eye. Although some works have used graph-based methods or convolutional neural networks to separate the choroid layer from the outer-choroid structure, few works focused on further distinguishing the inner-choroid structure, such as the choroid vessel and choroid stroma.Inspired by the multi-task learning strategy, in this paper, we propose a segmentation pipeline for choroid analysis which can separate the choroid layer from other structures and segment the choroid vessel synergistically. The key component of this pipeline is the proposed choroidal U-shape network (CUNet), which catches both correlation features and specific features between the choroid layer and the choroid vessel. Then pixel-wise classification is generated based on these two types of features to obtain choroid layer segmentation and vessel segmentation. Besides, the training process of CUNet is supervised by a proposed adaptive multi-task segmentation loss which adds a regularization term that is used to balance the performance of the two tasks.Experiments show the high performance (4% higher dice score) and less computational complexity (18.85 M lower size) of our proposed strategy.The high performance and generalization on both choroid layer and vessel segmentation indicate the clinical potential of our proposed pipeline.

摘要

脉络膜是人体眼中血管化程度最高的结构,其层结构和血管分布对视网膜的生理学和眼部疾病的发病机制都至关重要。尽管已有一些工作使用基于图的方法或卷积神经网络来将脉络膜层与外脉络膜结构分离,但很少有工作专注于进一步区分内脉络膜结构,例如脉络膜血管和脉络膜基质。受多任务学习策略的启发,本文提出了一种用于脉络膜分析的分割流水线,可以将脉络膜层与其他结构分离,并协同分割脉络膜血管。该流水线的关键组成部分是提出的脉络膜 U 形网络(CUNet),它可以捕捉脉络膜层和脉络膜血管之间的相关特征和特定特征。然后基于这两种特征生成逐像素分类,以获得脉络膜层分割和血管分割。此外,CUNet 的训练过程由一个提出的自适应多任务分割损失进行监督,该损失添加了一个正则化项,用于平衡两个任务的性能。实验表明,我们提出的策略具有较高的性能(比骰子分数高 4%)和较少的计算复杂度(大小低 18.85M)。在脉络膜层和血管分割方面的高性能和泛化能力表明了我们提出的流水线的临床潜力。

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