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Mobile-aided screening system for proliferative diabetic retinopathy

机译:增殖性糖尿病视网膜病变的移动辅助筛查系统

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NeoVascularization (NV) occurs in the Proliferative Diabetic Retinopathy (PDR) stage, where the development progress of new vessels presents a high risk for severe vision loss and blindness. Therefore, early NV detection is primordial to preserve patient's vision. Several automated methods have been proposed to detect the NV on retinograph-captured fundus images. However, their employment is constrained by the reduced ophthalmologist-per-person ratio and the expensive equipment for image capturing.This paper presents a novel method for NV detection in smartphone-captured fundus images. The implementation of the method on a smartphone having an optical lens for fundus capturing leads to a Mobiles-Aided-Screening system of PDR (MAS-PDR). The challenge is to ensure accurate and robust detection even with moderate quality of fundus image, on reduced execution time. Within this objective, we identify the major criteria of neovascularized vessels which are tortuosity, width, bifurcation, and density. Our main contribution consists in proposing a sharp feature to reflect each criterion on reduced computational complexity processing. Therefore, the features are provided to a random forest classifier to deduce the PDR stage.A dataset raised from publicly databases is used on a 10-cross validation process where 98.69% accuracy, 97.73% sensitivity, and 99.12% specificity are achieved. To evaluate the robustness, the same experimentation is repeated after applying motion blur filters to the fundus image dataset, where 98.91% accuracy, 96.75% sensitivity, and 100% specificity are deduced. Moreover, NV screening is performed under 3 s when executed in smartphone devices demonstrating the appropriateness of our method to MAS-PDR.
机译:新血管化(NV)发生在增殖性糖尿病视网膜病变(PDR)阶段,其中新血管的发展进展呈现出严重视力丧失和失明的高风险。因此,早期的NV检测是原始的,以保护患者的愿景。已经提出了几种自动化方法来检测捕获的基底图像上的NV。然而,他们的就业受到每人的降低的每个人比例和用于图像捕获的昂贵设备的限制。本文提出了一种新的智能手机捕获的眼底图像中的NV检测方法。在具有用于基底捕获的光学镜头的智能手机上的实施方式导致PDR(MAS-PDR)的移动式辅助筛选系统。挑战是为了确保准确且稳健的检测,即使在减少的执行时间上也具有适度的眼底图像。在此目的之内,我们确定了新生血管化容器的主要标准,这些容器是曲折感,宽度,分叉和密度。我们的主要贡献包括提出一个尖锐的特征,以反映对减少计算复杂性处理的每个标准。因此,将特征提供给随机林分类器,推断PDR级。从公共数据库提出的数据集在10交叉验证过程中使用,实现了98.69%的精度,灵敏度为97.73%和99.12%的特异性。为了评估稳健性,在将运动模糊过滤器施加到眼底图像数据集后重复相同的实验,其中推导出98.91%的精度,灵敏度为96.75%和100%特异性。此外,当在智能手机设备中执行时,在3秒下执行NV筛选,证明我们对MAS-PDR的方法的适当性。

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