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A convolutional neural network for the screening and staging of diabetic retinopathy

机译:糖尿病视网膜病变筛查和分期的卷积神经网络

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Diabetic retinopathy (DR) is a serious retinal disease and is considered as a leading cause of blindness in the world. Ophthalmologists use optical coherence tomography (OCT) and fundus photography for the purpose of assessing the retinal thickness, and structure, in addition to detecting edema, hemorrhage, and scars. Deep learning models are mainly used to analyze OCT or fundus images, extract unique features for each stage of DR and therefore classify images and stage the disease. Throughout this paper, a deep Convolutional Neural Network (CNN) with 18 convolutional layers and 3 fully connected layers is proposed to analyze fundus images and automatically distinguish between controls (i.e. no DR), moderate DR (i.e. a combination of mild and moderate Non Proliferative DR (NPDR)) and severe DR (i.e. a group of severe NPDR, and Proliferative DR (PDR)) with a validation accuracy of 88%-89%, a sensitivity of 87%-89%, a specificity of 94%-95%, and a Quadratic Weighted Kappa Score of 0.91–0.92 when both 5-fold, and 10-fold cross validation methods were used respectively. A prior pre-processing stage was deployed where image resizing and a class-specific data augmentation were used. The proposed approach is considerably accurate in objectively diagnosing and grading diabetic retinopathy, which obviates the need for a retina specialist and expands access to retinal care. This technology enables both early diagnosis and objective tracking of disease progression which may help optimize medical therapy to minimize vision loss.
机译:糖尿病视网膜病变(DR)是严重的视网膜疾病,被认为是世界上失明的主要原因。眼科医生使用光学相干断层扫描(OCT)和眼底摄影,以评估视网膜厚度和结构,除了检测水肿,出血和疤痕外。深度学习模型主要用于分析OCT或眼底图像,提取DR的每个阶段的独特功能,因此对疾病进行分类和阶段。在本文中,提出了一种具有18个卷积层和3个完全连接层的深卷积神经网络(CNN),以分析眼底图像并自动区分对照(即NO DR),中等DR(即轻度和中等非增殖性的组合博士(NPDR))和严重博士(即一组严重的NPDR,和增殖性DR(PDR)),验证精度为88%-89%,灵敏度为87%-89%,特异性为94%-95分别使用5倍和10倍交叉验证方法,分别使用0.91-0.92的二次加权Kappa得分。部署了现有的预处理阶段,其中使用图像调整大小和类别的数据增强。在客观诊断和评分糖尿病视网膜病变方面,该方法具有大幅准确,这消除了视网膜专家的需求,并扩大了对视网膜护理的途径。该技术能够进行早期诊断和客观跟踪疾病进展,这可能有助于优化医疗疗法以尽量减少视力丧失。

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