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一种从彩色眼底图像自动量化视网膜动静脉狭窄的方法。

An automated method for retinal arteriovenous nicking quantification from color fundus images.

出版信息

IEEE Trans Biomed Eng. 2013 Nov;60(11):3194-203. doi: 10.1109/TBME.2013.2271035. Epub 2013 Jun 25.

DOI:10.1109/TBME.2013.2271035
PMID:23807422
Abstract

Retinal arteriovenous (AV) nicking is one of the prominent and significant microvascular abnormalities. It is characterized by the decrease in the venular caliber at both sides of an artery-vein crossing. Recent research suggests that retinal AV nicking is a strong predictor of eye diseases such as branch retinal vein occlusion and cardiovascular diseases such as stroke. In this study, we present a novel method for objective and quantitative AV nicking assessment. From the input retinal image, the vascular network is first extracted using the multiscale line detection method. The crossover point detection method is then performed to localize all AV crossing locations. At each detected crossover point, the four vessel segments, two associated with the artery and two associated with the vein, are identified and two venular segments are then recognized through the artery-vein classification method. The vessel widths along the two venular segments are measured and analyzed to compute the AV nicking severity of that crossover. The proposed method was validated on 47 high-resolution retinal images obtained from two population-based studies. The experimental results indicate a strong correlation between the computed AV nicking values and the expert grading with a Spearman correlation coefficient of 0.70. Sensitivity was 77% and specificity was 92% (Kappa κ = 0.70) when comparing AV nicking detected using the proposed method to that detected using a manual grading method, performed by trained photographic graders.

摘要

视网膜动静脉(AV)分叉是一种显著且重要的微血管异常。其特征在于在动脉-静脉交叉处两侧的静脉口径减小。最近的研究表明,视网膜 AV 分叉是眼部疾病(如分支视网膜静脉阻塞)和心血管疾病(如中风)的强有力预测指标。在本研究中,我们提出了一种用于客观定量评估 AV 分叉的新方法。从输入的视网膜图像开始,首先使用多尺度线检测方法提取血管网络。然后执行交叉点检测方法以定位所有 AV 交叉位置。在每个检测到的交叉点处,识别与动脉和静脉相关联的四个血管段,然后通过动脉-静脉分类方法识别两个静脉段。测量和分析两条静脉段上的血管宽度,以计算该交叉点的 AV 分叉严重程度。该方法在来自两项基于人群的研究的 47 张高分辨率视网膜图像上进行了验证。实验结果表明,计算出的 AV 分叉值与专家分级之间具有很强的相关性,Spearman 相关系数为 0.70。与由受过训练的摄影分级员执行的手动分级方法相比,当比较使用所提出的方法检测到的 AV 分叉时,灵敏度为 77%,特异性为 92%(Kappa κ=0.70)。

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