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DcardNet: Diabetic Retinopathy Classification at Multiple Levels Based on Structural and Angiographic Optical Coherence Tomography

机译:DCARDNET:基于结构和血管造影光学相干性断层扫描的多级糖尿病视网膜病分类

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Objective: Optical coherence tomography (OCT) and its angiography (OCTA) have several advantages for the early detection and diagnosis of diabetic retinopathy (DR). However, automated, complete DR classification frameworks based on both OCT and OCTA data have not been proposed. In this study, a convolutional neural network (CNN) based method is proposed to fulfill a DR classification framework using en face OCT and OCTA. Methods: A densely and continuously connected neural network with adaptive rate dropout (DcardNet) is designed for the DR classification. In addition, adaptive label smoothing was proposed and used to suppress overfitting. Three separate classification levels are generated for each case based on the International Clinical Diabetic Retinopathy scale. At the highest level the network classifies scans as referable or non-referable for DR. The second level classifies the eye as non-DR, non-proliferative DR (NPDR), or proliferative DR (PDR). The last level classifies the case as no DR, mild and moderate NPDR, severe NPDR, and PDR. Results: We used 10-fold cross-validation with 10% of the data to assess the network's performance. The overall classification accuracies of the three levels were 95.7%, 85.0%, and 71.0% respectively. Conclusion/Significance: A reliable, sensitive and specific automated classification framework for referral to an ophthalmologist can be a key technology for reducing vision loss related to DR.
机译:目的:光学相干断层扫描(OCT)及其血管造影(OctA)对早期检测和诊断糖尿病视网膜病变(DR)具有若干优点。但是,自动化,完成基于OCT和Octa数据的完整DR分类框架。在本研究中,提出了一种基于卷积神经网络(CNN)的方法,用于使用EN Face和Octa来满足DR分类框架。方法:设计具有自适应速率差差(DCARDNET)的密集和连续连接的神经网络,用于DR分类。此外,提出了自适应标签平滑并用于抑制过度拟合。基于国际临床糖尿病视网膜病变规模的每种情况产生三种单独的分类水平。在最高级别,网络将扫描分类为博士的可引用或非可参考。第二级将眼睛分类为非博士,非增殖性DR(NPDR)或增殖性DR(PDR)。最后一个级别将案例分类为否DR,MILD和中等NPDR,严重的NPDR和PDR。结果:我们使用10%的数据使用10%的数据来评估网络的性能。三个级别的整体分类准确性分别为95.7%,85.0%和71.0%。结论/意义:用于转诊到眼科医生的可靠,敏感和特定的自动分类框架可以是减少与DR相关视力损失的关键技术。

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