糖尿病视网膜病变眼OCT自动识别的验证

T. Santos, L. Ribeiro, C. Lobo, Rui Bernardes, P. Serranho
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引用次数: 4

摘要

光学相干断层扫描(OCT)因其无创性和高分辨率而成为眼科最重要的成像方式之一。除了可以详细地显示人类视网膜结构外,最近有人提出OCT嵌入功能信息。具体来说,有人提出血视网膜屏障状态信息存在于从人视网膜获得的OCT数据中。在此,我们通过一种监督分类程序,即支持向量机(SVM)分类器,来验证之前关于区分健康志愿者和糖尿病视网膜病变患者眼睛的可能性,该分类程序仅基于人眼视网膜OCT数据分布的统计。为此,我们计算了监督分类与其各自的判别结果之间的依赖关系的机会线和统计显著性。在此基础上,利用遗传算法对支持向量机分类器的径向基函数核进行优化核和正则化参数的求解。已取得的结果加强了血液-视网膜屏障健康状况信息在人类视网膜的光学特性中编码的可能性。
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Validation of the automatic identification of eyes with diabetic retinopathy by OCT
Optical coherence tomography (OCT) is becoming one of the most important imaging modalities in ophthalmology due to its noninvasiveness and resolution. Besides allowing the visualization the human retina structure in detail, it was recently proposed that OCT embeds functional information. Specifically, it was proposed that blood-retinal barrier status information is present within OCT data acquired from the human retina. We herewith present the validation of previous work on the possibility to discriminate between eyes of healthy volunteers and eyes of patients with diabetic retinopathy resorting to a supervised classification procedure, the support vector machine (SVM) classifier, based solely on the statistics of the distribution of retinal human OCT data. For this purpose, we calculate the chance line and the statistical significance for the dependence between the supervised classification and their respective discrimination results. Furthermore, a genetic algorithm is used to find optimum kernel and regularization parameters for the radial basis function kernel of the SVM classifier. Achieved results strengthen the possibility that information on the health status of the blood-retinal barrier is encoded within the optical properties of the human retina.
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