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Supervised Pixel Classification for Segmenting Geographic Atrophy in Fundus Autofluorescene Images

机译:监督像素分类以分割眼底自荧光图像中的地理萎缩

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Age-related macular degeneration (AMD) is the leading cause of blindness in people over the age of 65. Geographic atrophy (GA) is a manifestation of the advanced or late-stage of the AMD, which may result in severe vision loss and blindness. Techniques to rapidly and precisely detect and quantify GA lesions would appear to be of important value in advancing the understanding of the pathogenesis of GA and the management of GA progression. The purpose of this study is to develop an automated supervised pixel classification approach for segmenting GA including uni-focal and multi-focal patches in fundus autofluorescene (FAF) images. The image features include region wise intensity (mean and variance) measures, gray level co-occurrence matrix measures (angular second moment, entropy, and inverse difference moment), and Gaussian filter banks. A k-nearest-neighbor (k-NN) pixel classifier is applied to obtain a GA probability map, representing the likelihood that the image pixel belongs to GA. A voting binary iterative hole filling filter is then applied to fill in the small holes. Sixteen randomly chosen FAF images were obtained from sixteen subjects with GA. The algorithm-defined GA regions are compared with manual delineation performed by certified graders. Two-fold cross-validation is applied for the evaluation of the classification performance. The mean Dice similarity coefficients (DSC) between the algorithm- and manually-defined GA regions are 0.84 ± 0.06 for one test and 0.83 ± 0.07 for the other test and the area correlations between them are 0.99 (p < 0.05) and 0.94 (p < 0.05) respectively.
机译:年龄相关性黄斑变性(AMD)是65岁以上人群失明的主要原因。地理萎缩(GA)是AMD晚期或晚期的一种表现,可能导致严重的视力丧失和失明。快速准确地检测和定量GA病变的技术在增进对GA的发病机理和GA进展的管理的理解中似乎具有重要的价值。这项研究的目的是开发一种自动监督的像素分类方法,用于分割眼底自发荧光(FAF)图像中的GA,包括单焦点和多焦点斑块。图像特征包括区域级强度(均值和方差)度量,灰度共生矩阵度量(角第二矩,熵和逆差分矩)和高斯滤波器组。应用k最近邻(k-NN)像素分类器以获得GA概率图,该概率图表示图像像素属于GA的可能性。然后应用投票二进制迭代孔填充过滤器填充小孔。从16位接受GA的受试者中获得16张随机选择的FAF图像。将算法定义的GA区域与认证的评分员执行的手动划定进行比较。双重交叉验证应用于分类性能的评估。一种测试的算法和手动定义的GA区域之间的平均Dice相似系数(DSC)为0.84±0.06,另一项测试为0.83±0.07,它们之间的面积相关性分别为0.99(p <0.05)和0.94(p <0.05)。

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