Advanced Deep Learning Models for Accurate Retinal Disease State Detection

Hossein. Abbasi, Ahmed. Alshaeeb, Yasin Orouskhani, Behrouz. Rahimi, Mostafa Shomalzadeh
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Abstract

Retinal diseases are a significant challenge in the realm of medical diagnosis, with potential complications to vision and overall ocular health. This research endeavors to address the challenge of automating the detection of retinal disease states using advanced deep learning models, including VGG-19, ResNet-50, InceptionV3, and EfficientNetV2. Each model leverages transfer learning, drawing insights from a substantial dataset comprising optical coherence tomography (OCT) images and subsequently classifying images into four distinct retinal conditions: choroidal neovascularization, drusen, diabetic macular edema and a healthy state. The training dataset, sourced from repositories that are available to the public including OCT retinal images, spanning all four disease categories. Our findings reveal that among the models tested, EfficientNetV2 demonstrates superior performance, with a remarkable classification accuracy of 98.92%, precision of 99.6%, and a recall of 99.4%, surpassing the performance of the other models.
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用于准确检测视网膜疾病状态的高级深度学习模型
视网膜疾病是医学诊断领域的一大挑战,对视力和整体眼部健康具有潜在的并发症。这项研究致力于利用先进的深度学习模型(包括 VGG-19、ResNet-50、InceptionV3 和 EfficientNetV2)来应对视网膜疾病状态自动检测的挑战。每个模型都利用迁移学习,从包含光学相干断层扫描(OCT)图像的大量数据集中汲取洞察力,随后将图像分类为四种不同的视网膜状况:脉络膜新生血管、色素沉着、糖尿病性黄斑水肿和健康状态。训练数据集来自公共资源库,包括 OCT 视网膜图像,涵盖所有四种疾病类别。我们的研究结果表明,在所测试的模型中,EfficientNetV2 表现出卓越的性能,其分类准确率高达 98.92%,精确率高达 99.6%,召回率高达 99.4%,超过了其他模型。
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