基于深度学习方法的数字眼底图像视网膜青光眼检测

S. S, D. V. Babu
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引用次数: 0

摘要

一种叫做青光眼的疾病会损害视神经,导致部分或全部视力丧失。因此,在年轻时开始青光眼筛查是至关重要的。青光眼症状直到病情发展到晚期,患者已经经历了相当大的视力丧失时才会出现。大部分早期诊断方法依赖于仔细的特征工程。眼底图像在早期发现视力问题的临床环境中特别有用。由于其优越的性能,在图像合成、疾病分割、生物标志物分割、疾病识别等相关领域,深度学习的应用越来越广泛。卷积神经网络最近被用于诊断青光眼和其他眼科问题。它们对几种疾病的早期诊断是有效的。多层高度连接的神经网络。该研究方法利用了之前在ImageNet上使用dristi数据集训练的模型,准确率接近97%,显然所建立的分类模型可以准确地诊断青光眼。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retinal Glaucoma Detection from Digital Fundus Images using Deep Learning Approach
A disorder called glaucoma that damages the optic nerve can result in either a partial or whole loss of vision. As a reason, it is critical to start glaucoma screening at a young age. Glaucoma symptoms do not manifest until the condition is advanced and the patient has already experienced considerable vision loss. The bulk of early diagnostic methods rely on careful feature engineering. Fundus images are particularly useful in the clinical context for the early detection of vision problems.Because of its superior performance, In related fields including image synthesis, disease segmentation, biomarker segmentation, and illness identification, deep learning is being employed more and more often. Convolutional neural networks have lately been used to diagnose glaucoma and other eye problems in ophthalmology. They have been effective in the early diagnosis of several disorders. Many layers of highly connected neural networks. The study approach makes use of models that were previously trained on ImageNet using the dristi dataset with the accuracy of almost 97% that was achieved, it is evident that the built classification model can accurately diagnose glaucoma.
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