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首页> 外文期刊>Biomedical signal processing and control >An automated glaucoma screening system using cup-to-disc ratio via Simple Linear Iterative Clustering superpixel approach
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An automated glaucoma screening system using cup-to-disc ratio via Simple Linear Iterative Clustering superpixel approach

机译:通过杯盘比的自动青光眼筛查系统,通过简单线性迭代聚类超像素方法

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摘要

Glaucoma is an ocular disease caused by damaged optic nerve head (ONH) due to high intraocular pressure (IOP) within the eyeball. Usually, glaucoma patients will not realize the presence of this disease due to lack of visible early symptoms such as pain and redness mark. The disease can cause permanent blindness if it is not treated immediately. Hence, glaucoma screening is very crucial in detecting the disease during the early stages. There are various types of glaucoma screening tests such as tonometry test which is based on IOP measurement, ophthalmology test which is based on shape and color of the eyes, and pachymetry test which is based on complete field vision measurement. All these three screening tests involve manual assessment which is time-consuming and costly. Therefore, an efficient glaucoma screening system that can automatically analyze the severity level of the disease is very much needed. Thus, the main objective of this paper is to develop an automatic glaucoma screening system based on superpixel classification by providing a high-quality input image. Firstly, input images are undergone preprocessing methods to cater for noise removal and illumination correction. This is emphasized in the implementation of the anisotropic diffusion filter and illumination correction method. The pixels of the input images are then aggregate into superpixels using Simple Linear Iterative Clustering (SLIC) approach. Then, image features based on histogram data and textural information are extracted on each superpixel using statistical pixel-level (SPL) method. The prominent features are then fed into Support Vector Machine (SVM) classifier to classify each superpixel into optic disc, optic cup, blood vessel, and background regions. The classifier is also used to determine the boundaries of both optic disc and optic cup. Lastly, the segmented optic disc and optic cup are used to determine the presence of glaucoma using cup-to-disc ratio (CDR) measurement. The proposed method has been tested on RIM-One database. The experimental results have successfully distinguished optic disc and optic cup from the background with an average accuracy and sensitivity of 98.6% and 92.3%, respectively tested on linear kernel. (C) 2019 Elsevier Ltd. All rights reserved.
机译:青光眼是一种由于眼球内高眼压(IOP)而导致视神经乳头(ONH)受损而引起的眼部疾病。通常,由于缺乏可见的早期症状,如疼痛和发红痕迹,青光眼患者不会意识到这种疾病的存在。如果不立即治疗,该疾病可能导致永久性失明。因此,青光眼筛查对于早期发现疾病至关重要。有各种类型的青光眼筛查测试,例如基于IOP测量的眼压测试,基于眼睛形状和颜色的眼科测试以及基于完整视场测量的眼压测试。所有这三个筛选测试都涉及手动评估,这既费时又昂贵。因此,非常需要一种能够自动分析疾病严重程度的有效的青光眼筛查系统。因此,本文的主要目的是通过提供高质量的输入图像来开发基于超像素分类的青光眼自动筛查系统。首先,对输入图像进行预处理以迎合噪声去除和照明校正。在各向异性扩散滤光片和照度校正方法的实施中强调了这一点。然后,使用简单线性迭代聚类(SLIC)方法将输入图像的像素聚合为超像素。然后,使用统计像素级(SPL)方法在每个超像素上提取基于直方图数据和纹理信息的图像特征。然后将突出的特征输入到支持向量机(SVM)分类器中,以将每个超像素分类为视盘,视杯,血管和背景区域。分类器还用于确定视盘和视杯的边界。最后,分段的视盘和视杯用于通过视盘比(CDR)测量来确定青光眼的存在。该方法已在RIM-One数据库上进行了测试。实验结果成功地将光盘和光盘杯与背景区分开,分别在线性核上测试的平均准确度和灵敏度分别为98.6%和92.3%。 (C)2019 Elsevier Ltd.保留所有权利。

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