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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >CURVELET FUSION ENHACEMENT BASED EVALUATION OF DIABETIC RETINOPATHY BY THE IDENTIFICATION OF EXUDATES IN OPTIC COLOR FUNDUS IMAGES
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CURVELET FUSION ENHACEMENT BASED EVALUATION OF DIABETIC RETINOPATHY BY THE IDENTIFICATION OF EXUDATES IN OPTIC COLOR FUNDUS IMAGES

机译:通过光学彩色眼底图像渗出液的鉴定,基于曲线融合增强的糖尿病视网膜病变评估

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摘要

Rapid growth of Diabetes mellitus in people causes damage to posterior part of eye vessel structures. Diabetic retinopathy (DR) is an important hurdle in diabetic people and it causes lesion formation in retina due to retinal vessel structures damage. Bright lesions (BLs) or exudates are initial clinical signs of DR. Early BLs detection can help avoiding vision loss. The severity can be recognized based on number of BLs formed in the color fundus image. Manually diagnosing a large amount of images is time consuming. So a computerized DR grading and BLs detection system is proposed. In this paper for BLs detection, curvelet fusion enhancement is done initially because bright objects maps to largest coefficients in an image by utilizing the curvelet transform, so that BLs can be recognized in the retina easily. Then optic disk (OD) appearance is similar to BLs and vessel structures are barriers for lesion exact detection and moreover OD falsely classified as BLs and that increases false positives in classification. So these structures are segmented and eliminated by thresholding techniques. Various features were obtained from detected BLs. Publicly available databases are used for DR severity testing. 260 fundus images were used for the performance evaluation of proposed work. The support vector machine classifier (SVM) used to separate fundus images in various levels of DR based on feature set extracted. The proposed system that obtained the statistical measures were sensitivity 100%, specificity 95.4% and accuracy 97.74%. Compared to existing state-of-art techniques, the proposed work obtained better results in terms of sensitivity, specificity and accuracy.
机译:人中糖尿病的快速生长导致眼球结构后部的损害。糖尿病性视网膜病(DR)在糖尿病患者中是一个重要的障碍,由于视网膜血管结构受损,它会导致视网膜病变形成。明亮的病灶(BLs)或渗出液是DR的初始临床体征。早期的BL检查可以帮助避免视力丧失。可以基于在彩色眼底图像中形成的BL的数量来识别严重程度。手动诊断大量图像非常耗时。因此,提出了一种计算机化的DR分级和BLs检测系统。在本文中用于BL的检测中,起初完成了Curvelet融合增强,因为通过利用Curvelet变换将明亮的对象映射到图像中的最大系数,从而可以轻松地在视网膜中识别BL。然后视盘(OD)的外观类似于BL,并且血管结构是病变精确检测的障碍,而且OD被错误地分类为BL,从而增加了分类中的假阳性。因此,通过阈值化技术将这些结构分割并消除。从检测到的BL中获得了各种特征。公开可用的数据库用于DR严重性测试。使用260个眼底图像对拟议工作进行绩效评估。支持向量机分类器(SVM)用于基于提取的特征集在不同级别的DR中分离眼底图像。提出的获得统计指标的系统灵敏度为100%,特异性为95.4%,准确性为97.74%。与现有的最新技术相比,拟议的工作在敏感性,特异性和准确性方面获得了更好的结果。

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