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A novel automated system of discriminating Microaneurysms in fundus images

机译:一种新颖的区分眼底图像中微动脉瘤的自动化系统

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摘要

Diabetic retinopathy, a chronic disease in diabetic patients leads to Vision loss, by disabling microvascular complications, if not recognized and cured at the earlier stage. This article explores a novel and reliable method for automatic early detection of Microaneurysms (MA) in fundus images. Microaneurysms characterized by small red spots on the retina, the red lesions are symptoms of early stage of DR. Development of an automated screening system would assist an ophthalmologist in diagnosing DR at an early stage. Hence, in this paper, a novel feature extraction technique using a Local Neighborhood Differential Coherence Pattern (LNDCP) is proposed. In this method, texture characteristics needed for classification by Feed Forward Neural Network (FFNN) is captured efficiently. The performance of the algorithm is validated using experiments on Retinopathy Online Challenge (ROC) public dataset and a single real-time dataset, AGAR300. Efficiency of the algorithm is benchmarked with state-of-art approaches and a Free-response Receiver Operating Characteristic (FROC) score of 0.481 and 0.442 have been achieved for ROC and AGAR300 respectively.
机译:糖尿病性视网膜病变(一种糖尿病患者的慢性疾病),如果不能在早期得到识别和治愈,则会通过禁用微血管并发症而导致视力丧失。本文探讨了一种新颖且可靠的方法,用于眼底图像中的微动脉瘤(MA)的自动早期检测。微动脉瘤的特征是视网膜上有小的红色斑点,红色病变是DR早期的症状。自动筛查系统的开发将有助于眼科医生在早期诊断DR。因此,在本文中,提出了一种使用局部邻域差分相干模式(LNDCP)的新颖特征提取技术。在这种方法中,可以有效地捕获前馈神经网络(FFNN)进行分类所需的纹理特征。使用视网膜病变在线挑战(ROC)公共数据集和单个实时数据集AGAR300进行的实验验证了算法的性能。该算法的效率已通过最新方法进行了基准测试,ROC和AGAR300的自由响应接收器工作特性(FROC)得分分别达到0.481和0.442。

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