Z. H. Nasiruddin, W. Zaki, S. A. Hudaibah, A. H. N. Asyiqin
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引用次数: 0
摘要
视网膜微血管网络表现出其他系统和器官的健康,因为它们在结构和生理上是相似的。它提供了一个独特的窗口来评估许多疾病,如高血压、心脏病和神经系统疾病。然而,人工分析数字眼底图像中的视网膜血管是具有挑战性的。此外,低对比度图像限制了视网膜血管相关眼病的诊断。因此,本工作采用数字图像处理方法自动提取和选择重要的血管特征,即动脉和静脉的宽度和像素强度。数字眼底图像采集自digital Retinal images for Vessel Extraction (DRIVE)数据库,由20张584×565-pixel数字眼底和地面真值图像组成。该方法基于识别出的血管骨架图像坐标,自动提取视网膜宽度和强度。通过单因素方差分析统计检验计算,我们发现在数字眼底图像中,宽度和绿色通道强度像素是区分动脉和静脉的重要特征(p值<0.005)。
Automated Retinal Blood Vessel Feature Extraction in Digital Fundus Images
The retinal microvascular network manifests the well-being of other systems and organs as they are structurally and physiologically similar. It offers a unique window to assess numerous disorders such as hypertension, heart disease and nervous system illnesses. However, manually analysing retinal blood vessels in digital fundus images is challenging. In addition, the low contrast images limit the diagnosis of retinal blood vessel-related eye diseases. Thus, this work uses the digital image processing approach to automate the extraction and selection of significant blood vessel features, i.e., the width and pixel intensity of the artery and vein. The digital fundus images are collected from the Digital Retinal Images for Vessel Extraction (DRIVE) database, consisting of twenty 584×565-pixel digital fundus and ground truth images. The proposed method automatically extracts the retinal width and intensity based on the identified coordinates of the blood vessel's skeleton images. Using a one-way ANOVA statistical test computation, we found that the width and the green channel intensity pixel are significant features (p-value <0.005) that can be used to differentiate artery and vein in digital fundus images.