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Transforming Retinal Photographs to Entropy Images in Deep Learning to Improve Automated Detection for Diabetic Retinopathy

机译:在深度学习中将视网膜照片转换为熵图像,以改善糖尿病性视网膜病变的自动检测

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Entropy images, representing the complexity of original fundus photographs, may strengthen the contrast between diabetic retinopathy (DR) lesions and unaffected areas. The aim of this study is to compare the detection performance for severe DR between original fundus photographs and entropy images by deep learning. A sample of 21,123 interpretable fundus photographs obtained from a publicly available data set was expanded to 33,000 images by rotating and flipping. All photographs were transformed into entropy images using block size 9 and downsized to a standard resolution of 100?×?100 pixels. The stages of DR are classified into 5 grades based on the International Clinical Diabetic Retinopathy Disease Severity Scale Grade 0 (no DR), Grade 1 (mild nonproliferative DR), Grade 2 (moderate nonproliferative DR), Grade 3 (severe nonproliferative DR), and Grade 4 (proliferative DR). Of these 33,000 photographs, 30,000 images were randomly selected as the training set, and the remaining 3,000 images were used as the testing set. Both the original fundus photographs and the entropy images were used as the inputs of convolutional neural network (CNN), and the results of detecting referable DR (Grades 2–4) as the outputs from the two data sets were compared. The detection accuracy, sensitivity, and specificity of using the original fundus photographs data set were 81.80%, 68.36%, 89.87%, respectively, for the entropy images data set, and the figures significantly increased to 86.10%, 73.24%, and 93.81%, respectively (all values 0.001). The entropy image quantifies the amount of information in the fundus photograph and efficiently accelerates the generating of feature maps in the CNN. The research results draw the conclusion that transformed entropy imaging of fundus photographs can increase the machinery detection accuracy, sensitivity, and specificity of referable DR for the deep learning-based system.
机译:代表原始眼底照片复杂性的熵图像可能会增强糖尿病性视网膜病变(DR)病变与未受影响区域之间的对比。这项研究的目的是通过深度学习比较原始眼底照片和熵图像对严重DR的检测性能。通过旋转和翻转,将从公共可用数据集中获得的21,123张可解释眼底照片的样本扩展为33,000张图像。使用块大小9将所有照片转换为熵图像,并缩小为100?×?100像素的标准分辨率。根据国际糖尿病性视网膜病变疾病严重程度评分等级0(无DR),等级1(轻度非增殖性DR),等级2(中度非增殖性DR),等级3(严重性非增殖性DR),DR的阶段分为5个等级。和4级(增生性DR)。在这33,000张照片中,随机选择30,000张图像作为训练集,其余3,000张图像用作测试集。将原始眼底照片和熵图像都用作卷积神经网络(CNN)的输入,并比较了两个数据集的输出作为参考DR(2-4级)的检测结果。对于熵图像数据集,使用原始眼底照片数据集的检测准确性,灵敏度和特异性分别为81.80%,68.36%,89.87%,并且该数字显着增加至86.10%,73.24%和93.81%。 ,(所有值<0.001)。熵图像量化了眼底照片中的信息量,并有效地加速了CNN中特征图的生成。研究结果得出的结论是,对眼底照片进行变换的熵成像可以提高基于深度学习的系统的机械检测准确性,灵敏性和参考DR的特异性。

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