首页> 外文会议>2018 IEEE 4th Middle East Conference on Biomedical Engineering >Optic cup and optic disc analysis for glaucoma screening using pulse-coupled neural networks and line profile analysis
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Optic cup and optic disc analysis for glaucoma screening using pulse-coupled neural networks and line profile analysis

机译:使用脉冲耦合神经网络和线轮廓分析对青光眼进行筛查的视杯和视盘分析

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摘要

This paper proposes an image processing algorithm that segments and measures the optic cup and the optic disc, by using a pulsed coupled artificial neural network and a line profile technique respectively. Our approach extracts two key glaucoma prediction features-the vertical cup-to-disc ratio (vCDR) and the Inferior Superior Nasal Temporal (ISNT) rule. A total of 126 fundus images have been used to evaluate the proposed algorithm. The vCDR and ISNT rule evaluation was manually determined by experienced eye specialists. The proposed algorithm was then used to automatically estimate the same parameters on the same images. The algorithm achieved a RMSE of 0.11. Furthermore, we conducted a similarity test between the values for the parameters extracted using our algorithm and that of the manual estimation, using a student's T-test. The probability of difference in datasets was 2.08·10n-13n%. This could be a key step in providing good features for subsequent autonomous screening of glaucoma.
机译:本文提出了一种图像处理算法,分别通过脉冲耦合人工神经网络和线轮廓技术对视杯和视盘进行分割和测量。我们的方法提取了两个关键的青光眼预测特征-垂直杯碟比(vCDR)和下鼻上颞叶(ISNT)规则。总共126个眼底图像已用于评估该算法。 vCDR和ISNT规则评估由经验丰富的眼科专家手动确定。然后,将所提出的算法用于自动估计相同图像上的相同参数。该算法的RMSE为0.11。此外,我们使用学生的T检验对使用我们的算法提取的参数值与人工估算的参数值之间进行了相似性测试。数据集差异的概率为2.08·10n ​​-13 n%。这可能是为以后的青光眼自主筛查提供良好功能的关键步骤。

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