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Lens opacity detection for serious posterior subcapsular cataract

机译:镜片不透明度检测严重后亚面容性白内障

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摘要

Cataract leads to visual impairment. Among different types of cataract, posterior subcapsular cataract (PSC) can develop rapidly and surgery is usually needed. An approach to detect PSC opacities in retro-illumination images is proposed. Watershed and Markov random fields (MRF) method are employed to opacities in anterior retro-illumination images. It results in a mixture of PSC, cortical opacities and noise. Then, information in both anterior and posterior retro-illumination images is utilized. Two features are extracted to identify PSC: mean gradient comparison (MGC) between anterior and posterior retro-illumination images, and spatial location. This is the first time that comparison between anterior and posterior retro-illumination images is proposed and MGC is proposed as the feature of comparison in PSC detection. Experiments show that the sensitivity and specificity of PSC screening is 91.2 and 90.1 %, respectively, based on the 519 pairs of testing images. To the best of our knowledge, it is the best performance reported in automatic detection of PSC. Compared with the methods in the literatures, considerable improvement is achieved when there are large areas of PSC opacities.
机译:白内障导致视力障碍。在不同类型的白内障中,后亚面容性白内障(PSC)可以快速发展,通常需要手术。提出了一种检测复古 - 照明图像中PSC不透明度的方法。流域和马尔可夫随机字段(MRF)方法用于前部复古照明图像中的不透明度。它导致PSC,皮质不透明度和噪声的混合物。然后,利用前后和后部辐射照明图像中的信息。提取两个特征以识别PSC:平均和后验 - 辐射图像之间的平均梯度比较(MGC),以及空间位置。这是第一次提出前后和后部复古照明图像之间的比较,并且提出了MGC作为PSC检测中比较的特征。实验表明,基于519对测试图像,PSC筛选的敏感性和特异性分别为91.2和90.1%。据我们所知,它是在PSC的自动检测中报告的最佳性能。与文献中的方法相比,当有大面积的PSC不透明度时,实现了相当大的改进。

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