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Full automation of morphological segmentation of retinal images ― A comparison with human-based analysis

机译:视网膜图像形态分割的全自动-与基于人的分析的比较

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Age-Related Macular Degeneration (ARMD) is the leading cause of irreversible visual loss among the elderly in the US and Europe. A computer-based system has been developed to provide the ability to track the position and margin of the ARMD associated lesion; drusen. Variations in the subject's retinal pigmentation, size and profusion of the lesions, and differences in image illumination and quality present significant challenges to most segmentation algorithms. An algorithm is presented that first classifies the image to optimize the variables of a mathematical morphology algorithm. A binary image is found by applying Otsu's method to the reconstructed image. Lesion size and area distribution statistics are then calculated. For training and validation, the University of Wisconsin provided longitudinal images of 22 subjects from their 10 year Beaver Dam Study. Using the Wisconsin Age-Related Maculopathy Grading System, three graders classified the retinal images according to drusen size and area of involvement. The percentages within the acceptable error between the three graders and the computer are as follows: Grader-A: Area: 84% Size: 81%; Grader-B: Area: 63% Size: 76%; Grader-C: Area: 81% Size: 88%. To validate the segmented position and boundary one grader was asked to digitally outline the drusen boundary. The average accuracy based on sensitivity and specificity was 0.87 for thirty four marked regions.
机译:年龄相关的黄斑变性(ARMD)是美国和欧洲老年人不可逆转的视力丧失的主要原因。已经开发了一种基于计算机的系统来提供跟踪ARMD相关病变的位置和边缘的能力;德鲁森。受试者的视网膜色素沉着,尺寸和分裂的变化,以及图像照明和质量的差异对大多数分段算法产生了重大挑战。提出了一种算法,其首先对图像进行分类以优化数学形态学算法的变量。通过将OTSU的方法应用于重建图像来找到二进制图像。然后计算病变尺寸和区域分布统计。为了培训和验证,威斯康星州大学提供了来自10年的Beaver Dam Research的22个科目的纵向图像。使用威斯康星素年龄相关的小疗化分级系统,三个分级机根据德鲁森尺寸和参与区域分类视网膜图像。三年级学生和计算机之间可接受误差内的百分比如下:GERSER-A:面积:84%尺寸:81%; Grader-B:面积:63%尺寸:76%; Grader-C:面积:81%尺寸:88%。为了验证分段位置和边界,将要求一个评级机构数字概述德鲁森边界。基于灵敏度和特异性的平均精度为三十四个标记区域的0.87。

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