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Novel expert system for glaucoma identification using non-parametric spatial envelope energy spectrum with fundus images

机译:使用非参数空间信封能谱与眼底图像的新型青光眼识别专家系统

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Glaucoma is the prime cause of blindness and early detection of it may prevent patients from vision loss. An expert system plays a vital role in glaucoma screening, which assist the ophthalmologists to make accurate decision. This paper proposes a novel technique for glaucoma detection using optic disk localization and non-parametric GIST descriptor. The method proposes a novel area based optic disk segmentation followed by the Radon transformation (RT). The change in the illumination levels of Radon transformed image are compensated using modified census transformation (MCT). The MCT images are then subjected to GIST descriptor to extract the spatial envelope energy spectrum. The obtained dimension of the GIST descriptor is reduced using locality sensitive discriminant analysis (LSDA) followed by various feature selection and ranking schemes. The ranked features are used to build an efficient classifier to detect glaucoma. Our system yielded a maximum accuracy (97.00%), sensitivity (97.80%) and specificity (95.80%) using support vector machine (SVM) classifier with nineteen features. Developed expert system also achieved maximum accuracy (93.62%), sensitivity (87.50%) and specificity (98.43%) for public dataset using twenty six features. The proposed method is efficient and computationally less expensive as it require only nineteen features to model a classifier for the huge dataset. Therefore the proposed method can be effectively utilized in hospitals for glaucoma screening. (C) 2017 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:青光眼是失明的主要原因,早期发现它可能会阻止患者免病变丧失。专家系统在青光眼筛查中起着至关重要的作用,这有助于眼科医生做出准确的决定。本文提出了一种使用视镜磁盘定位和非参数学设计符的青光眼检测新技术。该方法提出了一种基于面积的光盘分割,后跟氡变换(RT)。使用修改的人口普查变换(MCT)来补偿氡变换图像的照明水平的变化。然后对MCT图像进行GIST描述符以提取空间包络能谱。使用局部敏感判别分析(LSDA)随后是各种特征选择和排名方案来减少所获得的GIST描述符的维度。排名特征用于构建有效的分类器以检测青光眼。我们的系统产生了最高精度(97.00%),灵敏度(97.80%)和特异性(97.80%),使用载体矢量机(SVM)分类器具有19个特征。开发的专家系统还实现了使用二十六个功能的公共数据集的最高精度(93.62%),灵敏度(87.50%)和特异性(98.43%)。所提出的方法是有效的,并且计算不太昂贵,因为它需要只需要19个特征来为庞大数据集进行模拟分类器。因此,所提出的方法可以在医院中有效地利用青光眼筛选。 (c)2017年纳雷斯州纳雷斯省生物庭院研究所和波兰科学院生物医学工程。 elsevier b.v出版。保留所有权利。

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