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首页> 外文期刊>Journal of Taibah University for Science >Enforcing artificial neural network in the early detection of diabetic retinopathy OCTA images analysed by multifractal geometry
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Enforcing artificial neural network in the early detection of diabetic retinopathy OCTA images analysed by multifractal geometry

机译:在多法几何学分析的糖尿病视网膜病变八藻图像的早期检测中实施人工神经网络

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Diabetic retinopathy (DR) is one of the leading causes of vision loss. It causes neovascularization with blocking the regular small blood vessels. Early detection helps the ophthalmologist in patient treatment and prevents or delays vision loss. In this work, multifractal analysis has been used in some details to automate the diagnosis of diabetic without diabetic retinopathy and non-proliferative DR. Concerning using number of multifractal geometrical methods, as a necessary second step the enforcement of the sophisticated artificial neural network has been consultant in order to improve the accuracy of the obtained results. Patients and methods: Thirty normal cases’ eyes, 30 diabetic without DR patients’ eyes and 30 non-proliferative diabetic retinopathy (mild to moderate)?eyes?are exposed to optical coherence tomography angiography (OCTA) to get image superficial layer of macula for all cases. These images were approved in Ophthalmology Center in Mansoura University, Egypt, and medically were diagnosed by the ophthalmologists. We extract the most changeable features that associated to the morphological retinal vascular network alternations. The seven extracted features are related to the multifractal analysis results, which describe the vascular network architecture and gaps distribution. A supervised Artificial Neural Network (ANN) is used to classify the images into three categories: normal, diabetic without diabetic retinopathy and non-proliferative DR. Results: The human retinal blood vascular network architecture is found to be a fractal system. Multifractal geometry describes the irregularity and gaps distribution in the retina. We extracted seven features from the studied images. The features were the generalized dimensions Dsub0/sub , Dsub1/sub , Dsub2/sub , α at the maximum f(α) singularity spectrum, the spectrum width, the spectrum symmetrical shift point and lacunarity. The ANN obtains a single value decision with classification accuracy 97.78%, with minimum sensitivity 96.67%. Conclusion: Early stages of DR could be noninvasively detected using high-resolution OCTA images that?were?analysed by multifractal geometry parameterization and implemented by?the sophisticated artificial neural network with classification accuracy 96.67%. This approach could promote risk stratification for the decision of early diagnosis of diabetic retinopathy.
机译:糖尿病视网膜病变(DR)是视力丧失的主要原因之一。它引起常规小血管的血管形成。早期检测有助于眼科医生在患者治疗中并防止或延迟视力丧失。在这项工作中,在一些细节中使用了多法分析,以自动诊断糖尿病而没有糖尿病视网膜病变和非增殖博士。关于使用多重术后几何方法的数量,作为必要的第二步,对复杂的人工神经网络的执行是顾问,以提高所获得的结果的准确性。患者和方法:三十例正常病例的眼睛,30例糖尿病没有博士的眼睛和30个不增殖的糖尿病视网膜病变(轻度至中等)?眼睛暴露于光学相干断层造影血管造影(OctA)以获得图像的图像浅层所有病例。这些图像在埃及曼索拉大学的眼科中心批准,医学诊断为眼科医生。我们提取与形态视网膜血管网络交替相关的最具变化的功能。七种提取的特征与多法分析结果有关,描述了血管网络架构和间隙分布。监督的人工神经网络(ANN)用于将图像分为三类:正常,糖尿病没有糖尿病视网膜病变和非增殖博士。结果:发现人视网膜血管网络架构是分形系统。多重术几何形状描述了视网膜中的不规则性和间隙分布。我们从研究的图像中提取了七个功能。该特征是广义尺寸D 0 ,d 1 ,d 2 ,α在最大f(α)奇异谱,光谱宽度,频谱对称换档点和拉长度。 ANN获得单一价值决定,分类精度为97.78%,最低灵敏度为96.67%。结论:使用高分辨率Octa图像可以不完全检测到DR的早期阶段?由多法几何参数化分析并由α分析,并通过?分类精度的复杂的人工神经网络96.67%。这种方法可以促进糖尿病视网膜病变的早期诊断决定的风险分层。

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