Multiscale guided attention network for optic disc segmentation of retinal images

A Z M Ehtesham Chowdhury , Andrew Mehnert , Graham Mann , William H. Morgan , Ferdous Sohel
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Abstract

Optic disc (OD) segmentation from retinal images is crucial for diagnosing, assessing, and tracking the progression of several sight-threatening diseases. This paper presents a deep machine-learning method for semantically segmenting OD from retinal images. The method is named multiscale guided attention network (MSGANet-OD), comprising encoders for extracting multiscale features and decoders for constructing segmentation maps from the extracted features. The decoder also includes a guided attention module that incorporates features related to structural, contextual, and illumination information to segment OD. A custom loss function is proposed to retain the optic disc's geometrical shape (i.e., elliptical) constraint and to alleviate the blood vessels' influence in the overlapping region between the OD and vessels. MSGANet-OD was trained and tested on an in-house clinical color retinal image dataset captured during ophthalmodynamometry as well as on several publicly available color fundus image datasets, e.g., DRISHTI-GS, RIM-ONE-r3, and REFUGE1. Experimental results show that MSGANet-OD achieved superior OD segmentation performance from ophthalmodynamometry images compared to widely used segmentation methods. Our method also achieved competitive results compared to state-of-the-art OD segmentation methods on public datasets. The proposed method can be used in automated systems to quantitatively assess optic nerve head abnormalities (e.g., glaucoma, optic disc neuropathy) and vascular changes in the OD region.
从视网膜图像中分割视盘(OD)对于诊断、评估和跟踪几种威胁视力的疾病的进展至关重要。本文介绍了一种从视网膜图像中语义分割视盘的深度机器学习方法。该方法被命名为多尺度引导注意力网络(MSGANet-OD),包括用于提取多尺度特征的编码器和用于从提取的特征中构建分割图的解码器。解码器还包括一个引导注意力模块,该模块结合与结构、上下文和光照信息相关的特征来分割 OD。为了保留视盘的几何形状(即椭圆形)约束,并减轻血管在视盘和血管重叠区域的影响,提出了一种自定义损失函数。MSGANet-OD 在眼动力测定时捕获的内部临床彩色视网膜图像数据集以及几个公开的彩色眼底图像数据集(如 DRISHTI-GS、RIM-ONE-r3 和 REFUGE1)上进行了训练和测试。实验结果表明,与广泛使用的眼动力计图像分割方法相比,MSGANet-OD 的外径分割性能更为出色。与公共数据集上最先进的外径分割方法相比,我们的方法也取得了具有竞争力的结果。所提出的方法可用于自动系统,定量评估视神经头异常(如青光眼、视盘神经病变)和外径区域的血管变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.90
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0.00%
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10 weeks
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