Early Detection of Glaucoma using Transfer Learning from Pre-trained CNN Models

A. Sallam, A. Gaid, W. Saif, Hana’a A.S Kaid, Reem A. Abdulkareem, K. Ahmed, Ahmed Y. A. Saeed, Abduljalil Radman
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引用次数: 7

Abstract

Glaucoma is one of the common diseases that might cause visual field loss, and typically affects elderly people. It is caused by fluid imbalance within the eye that leads to increase in intraocular pressure (IOP), and therefore a damage to the optic nerve head (ONH) which is responsible in transmitting visual neurological signals to the brain. Traditional methods for detecting Glaucoma disease either tedious and slow or too expensive. Hence, early detection of Glaucoma is essential to avoid permanent blindness which might be caused by the ONH failure. In this paper, an automated detection method on the basis of pre-trained Convolutional Neural Network (CNN) models is proposed to detect Glaucoma from fundus images. The proposed method not only contributes to early detection of Glaucoma disease, but also helps optometry doctors in making fast decision with inexpensive tools. Pre-trained AlexNet, VGG11, VGG16, VGG19, GoogleNet (Inception V1), ResNET-18, ResNET-50, ResNET-101 and ResNet-152 models were leveraged to develop the proposed Glaucoma detection method. The proposed method was evaluated by Large-scale Attention based Glaucoma (LAG) dataset. Satisfying results of 81.4%, 80%, 82.2%, 80.9%, 82.9%, 86.7%, 85.6%, 86.2%, and 86.9% were observed on LAG dataset using AlexNet, VGG11, VGG16, VGG19, GoogleNet (Inception V1), ResNET-18, ResNET-50, ResNET-101 and ResNet-152 models respectively. Out of these results, the ResNet-152 model found to be the best that achieved a high accuracy with precision 86.9% and recall 86.9%.
从预训练CNN模型中迁移学习的青光眼早期检测
青光眼是可能导致视野丧失的常见疾病之一,通常发生在老年人身上。它是由眼内液体失衡引起的,导致眼内压(IOP)升高,从而损害视神经头(ONH),视神经头负责向大脑传递视觉神经信号。传统的青光眼疾病检测方法要么繁琐、缓慢,要么过于昂贵。因此,早期发现青光眼对于避免ONH失败导致的永久性失明至关重要。本文提出了一种基于预训练卷积神经网络(CNN)模型的眼底图像青光眼自动检测方法。该方法不仅有助于青光眼疾病的早期发现,而且有助于验光医生使用廉价的工具快速决策。利用预训练的AlexNet、VGG11、VGG16、VGG19、GoogleNet(盗梦空间V1)、ResNET-18、ResNET-50、ResNET-101和ResNet-152模型开发所提出的青光眼检测方法。采用基于大规模注意力的青光眼(LAG)数据集对该方法进行了评价。使用AlexNet、VGG11、VGG16、VGG19、GoogleNet (Inception V1)、ResNET-18、ResNET-50、ResNET-101和ResNet-152模型在LAG数据集上分别获得了81.4%、80%、82.2%、80.9%、82.9%、86.7%、85.6%、86.2%和86.9%的满意结果。在这些结果中,ResNet-152模型的准确率最高,准确率为86.9%,召回率为86.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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