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Computerized Detection of Retinal Nerve Fiber Layer Defects in Retinal Fundus Images by Modified Polar Transformation and Gabor Filtering

机译:改进的极坐标变换和Gabor滤波技术自动检测视网膜眼底图像中的视网膜神经纤维层缺损

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Glaucoma is the second leading cause of vision loss in the world. Detection of retinal nerve fiber layer defects (NFLDs), which is one of the early glaucomatous changes, on retinal fundus images obtained in mass screening may prevent patients from becoming permanently blind. In this study, a technique for contrast enhancement and automated detection of NFLDs was investigated. Images used in this study were obtained from the Tajimi general screening database, which includes retinal fundus images obtained in the population glaucoma screening study at Tajimi, Japan. In this preliminary investigation, images with at least one identified NFLD were included. Lesions of NFLDs were individually marked by two ophthalmologists, and those identified by both ophthalmologists were considered as the target NFLDs. First, the blood vessel regions in retinal fundus images were identified and interpolated by the surrounding pixels for creating "blood-vessel-erased" images. The resulted color images were red and blue-freed and were transformed from the Cartesian coordinate system to a modified polar coordinate system based on a set of parabolic lines passing through the center of optic nerve head. By applying the Gabor filter, the contrast of NFLDs was enhanced, and candidate regions for NFLDs were detected. The simple image features, such as the areas, mean pixel values, and contrast, of the candidates were determined for the false positive reduction. For 95 NFLDs identified on 80 retinal fundus images, the proposed technique detected 86% of NFLDs when the number of false positives was 1.3 per image. Further evaluation is needed for testing on independent database and images without NFLDs. The proposed technique can be useful for computer-aided detection of NFLDs.
机译:青光眼是世界上第二大视力丧失的主要原因。在大规模筛查中获得的视网膜眼底图像上检测到视网膜神经纤维层缺损(NFLDs)是早期青光眼改变之一,可以防止患者永久性失明。在这项研究中,研究了一种用于对比度增强和自动检测NFLD的技术。本研究中使用的图像是从多治见综合筛查数据库中获得的,其中包括在日本多治见进行的人口青光眼筛查研究中获得的视网膜眼底图像。在这项初步调查中,包括了至少具有一个已识别NFLD的图像。 NFLD的病变由两名眼科医生单独标记,并且由两名眼科医生鉴定出的病变被视为目标NFLD。首先,识别视网膜眼底图像中的血管区域,并通过周围的像素进行插值,以创建“血管擦除”图像。得到的彩色图像是红色和蓝色的,并根据一组穿过视神经头中心的抛物线从笛卡尔坐标系转换为修改后的极坐标系。通过应用Gabor滤镜,可以增强NFLD的对比度,并检测到NFLD的候选区域。确定候选图像的简单图像特征,例如面积,平均像素值和对比度,以进行假阳性减少。对于在80个视网膜眼底图像上识别出的95个NFLD,当每个图像的假阳性数为1.3时,所提出的技术检测到86%的NFLD。需要在没有NFLD的独立数据库和图像上进行测试的进一步评估。所提出的技术可用于计算机辅助检测NFLD。

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