Nayak J, Bhat P S, Acharya U R
Department of Electronics and Communication, Manipal Institute of Technology, Manipal, India.
J Med Eng Technol. 2009;33(2):119-29. doi: 10.1080/03091900701349602.
Diabetes mellitus is a major cause of visual impairment and blindness. Twenty years after the onset of diabetes, almost all patients with type 1 diabetes and over 60% of patients with type 2 diabetes will have some degree of retinopathy. Prolonged diabetes retinopathy leads to maculopathy, which impairs the normal vision depending on the severity of damage of the macula. This paper presents a computer-based intelligent system for the identification of clinically significant maculopathy, non-clinically significant maculopathy and normal fundus eye images. Features are extracted from these raw fundus images which are then fed to the classifier. Our protocol uses feed-forward architecture in an artificial neural network classifier for classification of different stages. Three different kinds of eye disease conditions were tested in 350 subjects. We demonstrated a sensitivity of more than 95% for these classifiers with a specificity of 100%, and results are very promising. Our systems are ready to run clinically on large amounts of datasets.
糖尿病是视力损害和失明的主要原因。糖尿病发病20年后,几乎所有1型糖尿病患者和60%以上的2型糖尿病患者都会出现一定程度的视网膜病变。长期的糖尿病视网膜病变会导致黄斑病变,根据黄斑受损的严重程度损害正常视力。本文提出了一种基于计算机的智能系统,用于识别具有临床意义的黄斑病变、无临床意义的黄斑病变和正常眼底图像。从这些原始眼底图像中提取特征,然后将其输入分类器。我们的方案在人工神经网络分类器中使用前馈架构对不同阶段进行分类。在350名受试者中测试了三种不同的眼部疾病情况。我们证明这些分类器的敏感性超过95%,特异性为100%,结果非常有前景。我们的系统已准备好在大量数据集上进行临床运行。