深度CNN网络在眼部疾病检测中的应用

Khaia Mohinuddin Shaik, C. Anupama, Supraja Paluru, Sarath Chandra Pedada, Balaram Krishna Attuluri
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引用次数: 1

摘要

目前,全世界有数百万人患有眼疾。用常规方法诊断眼部疾病是具有挑战性的,劳动密集型的,容易出错。不幸的是,延误的诊断和治疗常常导致失明。因此,一种眼部疾病的自动检测方法是刻不容缓的。眼底图像被广泛用于识别眼部疾病。然而,患者也有可能患有多种眼部疾病。在这种情况下,眼科医生不能从眼底图像有效地识别疾病。为了帮助眼科医生,本工作旨在开发一种革命性的多类别分类模型,用于从眼底图像诊断眼部疾病。模型的性能通过DenseNet、Inception ResNet、EfficientNetB4和EfficientNetB6在损失、准确性和精度方面进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Deep CNN Networks in Ocular Disease Detection
Currently millions of individuals worldwide are suffering from ocular diseases. Diagnosis of ocular diseases by conventional methods is challenging, labor-intensive and prone to mistakes. Unfortunately, delayed diagnosis and treatment frequently results in blindness. Therefore, an automatic ocular illness detection method is the need of the hour. Fundus images are widely used for identifying ocular diseases. However, there is a chance that the patient may be suffering from multiple ocular diseases. In such cases the ophthalmologist cannot effectively identify the disease from the fundus images. To aid the ophthalmologist, this work aims to develop a revolutionary multi-class classification model for diagnosing ocular diseases from fundus images. The model's performance is assessed with DenseNet, Inception ResNet, EfficientNetB4, and EfficientNetB6, in terms of losses, accuracy, and precision.
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