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Feature definition, analysis and selection for cystoid region characterization in Optical Coherence Tomography

机译:光学相干断层扫描中囊状区域特征的特征定义,分析和选择

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Optical Coherence Tomography (OCT) is, nowadays, a clinical standard imaging technique in opthalmology as it provides more information than other classical modalities as can be, for instance, retinographies. OCT scans show a 3D representation of the real layout of the eye fundus in a non-invasive way, letting clinicians inspect deeply the retinal layers in a cross-sectional visualization. For that reason, OCT scans are commonly used in the study of the retinal morphology and the identification of pathological structures. Among them, an appropriate identification and analysis of any present intraretinal cystoid region is crucial to perform an adequate diagnosis of the exudative macular disease, one of the main causes of blindness in developed countries. In this work, we analyzed and characterized the intraretinal cystoid regions in OCT images by the definition of a complete and heterogeneous set of 326 intensity and texture-based features. Relief-F and L0 feature selectors were used in order to identify the optimal feature subsets that provide the best discriminative power. Representative classifiers, as the Linear Bayes Normal Classifier (LDC), Quadratic Bayes Normal Classifier (QDC) and K-Nearest Neighbor Classifier (KNN) were finally used to evaluate the potential of identification of the feature subsets. The method was validated using 51 OCT images. From them, 363 and 360 samples of cystoid and non-cystoid regions were selected, respectively. The best results were offered by the LDC classifier that, using a feature subset identified by the L0 selector, provided an accuracy of 0.9060.
机译:如今,光学相干断层扫描(OCT)是眼科的一种临床标准成像技术,因为它提供的信息比其他经典形式(如视网膜成像)要多。 OCT扫描以无创方式显示眼底真实布局的3D表示,使临床医生可以在横截面可视化中深入检查视网膜层。因此,OCT扫描通常用于视网膜形态的研究和病理结构的识别。其中,对目前存在的视网膜内囊样区域进行适当的识别和分析,对于充分诊断渗出性黄斑疾病是至关重要的,这是发达国家失明的主要原因之一。在这项工作中,我们通过定义326个强度和基于纹理的特征的完整且异构的集合来分析和表征OCT图像中的视网膜内囊样区域。使用救济F和L0特征选择器来识别提供最佳区分能力的最佳特征子集。代表性的分类器,如线性贝叶斯常规分类器(LDC),二次贝叶斯常规分类器(QDC)和K最近邻分类器(KNN),最终被用来评估识别特征子集的潜力。使用51个OCT图像验证了该方法。从它们中分别选择了363个和360个囊状和非囊状区域样品。 LDC分类器可提供最佳结果,该分类器使用L0选择器标识的特征子集,可提供0.9060的精度。

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