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基于大鼠群优化算法的增强胶囊生成对抗网络实现糖尿病视网膜病变和糖尿病黄斑水肿分级的同步

Coinciding Diabetic Retinopathy and Diabetic Macular Edema Grading With Rat Swarm Optimization Algorithm for Enhanced Capsule Generation Adversarial Network.

作者信息

Ramshankar N, Murugesan S, K V Praveen, Prathap P M Joe

机构信息

Department of Computer Science and Engineering, R.M.D. Engineering College, Tiruvallur, Tamil Nadu, India.

Department of Information Technology, St. Peter's College of Engineering and Technology, Avadi, Tamil Nadu, India.

出版信息

Microsc Res Tech. 2025 Feb;88(2):555-563. doi: 10.1002/jemt.24709. Epub 2024 Nov 2.

DOI:10.1002/jemt.24709
PMID:39487733
Abstract

In the worldwide working-age population, visual disability and blindness are common conditions caused by diabetic retinopathy (DR) and diabetic macular edema (DME). Nowadays, due to diabetes, many people are affected by eye-related issues. Among these, DR and DME are the two foremost eye diseases, the severity of which may lead to some eye-related problems and blindness. Early detection of DR and DME is essential to preventing vision loss. Therefore, an enhanced capsule generation adversarial network (ECGAN) optimized with the rat swarm optimization (RSO) approach is proposed in this article to coincide with DR and DME grading (DR-DME-ECGAN-RSO-ISBI 2018 IDRiD). The input images are obtained from the ISBI 2018 unbalanced DR grading data set. Then, the input fundus images are preprocessed using the Savitzky-Golay (SG) filter filtering technique, which reduces noise from the input image. The preprocessed image is fed to the discrete shearlet transform (DST) for feature extraction. The extracting features of DR-DME are given to the ECGAN-RSO algorithm to categorize the grading of DR and DME disorders. The proposed approach is implemented in Python and achieves better accuracy by 7.94%, 36.66%, and 4.88% compared to the existing models, such as the combined DR with DME grading for the cross-disease attention network (DR-DME-CANet-ISBI 2018 IDRiD), category attention block for unbalanced grading of DR (DR-DME-HDLCNN-MGMO-ISBI 2018 IDRiD), combined DR-DME classification with a deep learning-convolutional neural network-based modified gray-wolf optimizer with variable weights (DR-DME-ANN-ISBI 2018 IDRiD).

摘要

在全球劳动年龄人口中,视力残疾和失明是由糖尿病视网膜病变(DR)和糖尿病性黄斑水肿(DME)引起的常见病症。如今,由于糖尿病,许多人受到与眼睛相关问题的影响。其中,DR和DME是两种最主要的眼部疾病,其严重程度可能导致一些与眼睛相关的问题和失明。DR和DME的早期检测对于预防视力丧失至关重要。因此,本文提出了一种采用大鼠群优化(RSO)方法优化的增强胶囊生成对抗网络(ECGAN),以用于DR和DME分级(DR-DME-ECGAN-RSO-ISBI 2018 IDRiD)。输入图像取自ISBI 2018不平衡DR分级数据集。然后,使用Savitzky-Golay(SG)滤波器滤波技术对输入的眼底图像进行预处理,该技术可减少输入图像中的噪声。将预处理后的图像输入离散剪切波变换(DST)进行特征提取。将提取的DR-DME特征输入ECGAN-RSO算法,以对DR和DME病症的分级进行分类。所提出的方法用Python实现,与现有模型相比,准确率提高了7.94%、36.66%和4.88%,这些现有模型包括用于跨疾病注意力网络的DR与DME联合分级(DR-DME-CANet-ISBI 2018 IDRiD)、用于DR不平衡分级的类别注意力块(DR-DME-HDLCNN-MGMO-ISBI 2018 IDRiD)、结合基于深度学习卷积神经网络的可变权重改进灰狼优化器的DR-DME联合分类(DR-DME-ANN-ISBI 2018 IDRiD)。

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