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An image-based software tool for screening retinal fundus images using vascular morphology and network transport analysis

机译:一种基于图像的软件工具,可使用血管形态学和网络运输分析来筛查视网膜眼底图像

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As the number of digital retinal fundus images taken each year grows at an increasing rate, there exists a similarly increasing need for automatic eye disease detection through image-based analysis. A new method has been developed for classifying standard color fundus photographs into both healthy and diseased categories. This classification was based on the calculated network fluid conductance, a function of the geometry and connectivity of the vascular segments. To evaluate the network resistance, the retinal vasculature was first manually separated from the background to ensure an accurate representation of the geometry and connectivity. The arterial and venous networks were then semi-automatically separated into two separate binary images. The connectivity of the arterial network was then determined through a series of morphological image operations. The network comprised of segments of vasculature and points of bifurcation, with each segment having a characteristic geometric and fluid properties. Based on the connectivity and fluid resistance of each vascular segment, an arterial network flow conductance; was calculated, which described the ease with which blood can pass through a vascular system. In this work, 27 eyes (13 healthy and 14 diabetic) from patients roughly 65 years in age were evaluated using this methodology. Healthy arterial networks exhibited an average fluid conductance of 419 ± 89 μm~3/mPa-s while the average network fluid conductance of the diabetic set was 165 ± 87 μm~3/mPa-s (p < 0.001). The results of this new image-based software demonstrated an ability to automatically, quantitatively and efficiently screen diseased eyes from color fundus imagery.
机译:随着每年所获取的数字视网膜眼底图像的数量以增长的速度增长,通过基于图像的分析对自动眼部疾病检测的需求也同样增长。已经开发出一种用于将标准彩色眼底照片分类为健康和患病类别的新方法。该分类基于所计算的网络流体电导,血管段的几何形状和连通性的函数。为了评估网络阻力,首先将视网膜脉管系统与背景手动分离,以确保准确表示几何形状和连通性。然后将动脉和静脉网络半自动分离为两个单独的二进制图像。然后通过一系列形态学图像操作确定动脉网络的连通性。该网络由脉管系统段和分叉点组成,每个段都具有特征性的几何和流体特性。根据每个血管段的连通性和流体阻力,确定动脉网络的流导率。进行了计算,描述了血液可以通过血管系统的难易程度。在这项工作中,使用这种方法评估了大约65岁患者的27眼(13眼健康和14眼糖尿病)。健康的动脉网络表现出的平均流体电导为419±89μm〜3 / mPa-s,而糖尿病患者的平均网络流体的电导率为165±87μm〜3 / mPa-s(p <0.001)。这种基于图像的新软件的结果表明,该软件能够自动,定量和有效地从彩色眼底图像中筛选出患病的眼睛。

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