基于深度学习的OCT图像视网膜疾病识别

Abdelhafid Errabih, Mohyeddine Boussarhane, B. Nsiri, A. Sadiq, My Hachem El yousfi Alaoui, R. Thami, Brahim Benaji
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引用次数: 0

摘要

计算机辅助诊断有可能取代或至少支持医务人员的日常工作,如诊断、治疗和手术。在眼科领域,人工智能方法已被纳入最常见的眼部疾病的诊断,如脉络膜新生血管(CNV)、糖尿病性黄斑水肿(DMO)和DRUSEN;这些疾病会造成严重的视力丧失风险。光学相干断层扫描(OCT)是一种用于诊断上述眼部疾病的成像技术。它使眼科医生能够看到眼睛的后部,并拍摄视网膜的各种切片。本研究的目的是实现视网膜病变的自动诊断,包括CNV、DME和DRUSEN。所采用的方法是一种基于深度学习和迁移学习的技术,应用于OCT图像的公共数据集和两个相关的神经网络模型VGG16和InceptionV3,这两个模型是在大型数据库“ImageNet”上训练的。这使得他们能够从数百万张图像中提取出主要特征。此外,通过修改超参数,采用微调方法来优于特征提取方法。结果表明,VGG16模型的分类准确率为0.93,优于InceptionV3架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Retinal Diseases on OCT Image Based on Deep Learning
Computer-aided diagnosis has the potential to replace or at least support medical personnel in their everyday responsibilities such as diagnosis, therapy, and surgery. In the area of ophthalmology, artificial intelligence approaches have been incorporated in the diagnosis of the most frequent ocular disorders, such as choroidal neovascularization (CNV), diabetic macular oedema (DMO), and DRUSEN; these illnesses pose a significant risk of vision loss. Optical coherence tomography (OCT) is an imaging technology used to diagnose the aforementioned eye disorders. It enables ophthalmologists to see the back of the eye and take various slices of the retina. The goal of this research is to automate the diagnosis of retinopathy, which includes CNV, DME, and DRUSEN. The approach employed is a deep learning-based, and transfer learning technique, applying to a public dataset of OCT pictures and two pertained neural network models VGG16 and InceptionV3, which are trained on the big database "ImageNet." That allows them to be able to extract the main features of millions of images. Furthermore, fine-tuning approaches are applied to outperform the feature extraction method, by modifying the hyperparameters. The findings showed that the VGG16 model performed better in classification than the InceptionV3 architecture, with a 0.93 accuracy.
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