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An automated decision-support system for non-proliferative diabetic retinopathy disease based on MAs and HAs detection

机译:基于MAs和HAs检测的非增殖性糖尿病视网膜病变疾病自动决策支持系统

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摘要

Diabetic retinopathy (DR) has become a serious threat in our society, which causes 45% of the legal blindness in diabetes patients. Early detection as well as the periodic screening of DR helps in reducing the progress of this disease and in preventing the subsequent loss of visual capability. This paper provides an automated diagnosis system for DR integrated with a user-friendly interface. The grading of the severity level of DR is based on detecting and analyzing the early clinical signs associated with the disease, such as microaneurysms (MAs) and hemorrhages (HAs). The system extracts some retinal features, such as optic disc, fovea, and retinal tissue for easier segmentation of dark spot lesions in the fundus images. That is followed by the classification of the correctly segmented spots into MAs and HAs. Based on the number and location of MAs and HAs, the system quantifies the severity level of DR. A database of 98 color images is used in order to evaluate the performance of the developed system. From the experimental results, it is found that the proposed system achieves 84.31% and 87.53% values in terms of sensitivity for the detection of MAs and HAs respectively. In terms of specificity, the system achieves 93.63% and 95.08% values for the detection of MAs and HAs respectively. Also, the proposed system achieves 68.98% and 74.91% values in terms of kappa coefficient for the detection of MAs and HAs respectively. Moreover, the system yields sensitivity and specificity values of 89.47% and 95.65% for the classification of DR versus normal.
机译:糖尿病性视网膜病(DR)已成为我们社会中的严重威胁,在糖尿病患者中造成45%的法律失明。早期发现以及定期筛查DR有助于减少该疾病的进展并防止随后的视力丧失。本文提供了集成了用户友好界面的DR自动诊断系统。 DR严重性级别的分级基于检测和分析与疾病相关的早期临床体征,例如微动脉瘤(MAs)和出血(HAs)。该系统提取一些视网膜特征,例如视盘,中央凹和视网膜组织,以便在眼底图像中更容易地分割暗斑病变。接下来是将正确分割的斑点分类为MA和HA。根据MA和HA的数量和位置,系统可以量化DR的严重性级别。为了评估已开发系统的性能,使用了98个彩色图像的数据库。从实验结果发现,所提出的系统在检测MA和HA方面的灵敏度分别达到84.31%和87.53%。在特异性方面,该系统分别可检测MA和HA的值达到93.63%和95.08%。同样,提出的系统在分别用于检测MA和HA的kappa系数方面实现了68.98%和74.91%的值。此外,该系统对DR与正常分类的敏感性和特异性值分别为89.47%和95.65%。

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