Automatic cataract detection and grading using Deep Convolutional Neural Network

Linglin Zhang, Jianqiang Li, Yi Zhang, Hern-soo Han, Bo Liu, Jijiang Yang, Qing Wang
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引用次数: 74

Abstract

Cataract is one of the most prevalent causes of blindness in the industrialized world, accounting for more than 50% of blindness. Early detection and treatment can reduce the suffering of cataract patients and prevent visual impairment from turning into blindness. But the expertise of trained eye specialists is necessary for clinical cataract detection and grading, which may cause difficulties to everybody's early intervention due to the underlying costs. Existing studies on automatic cataract detection and grading based on fundus images utilize a predefined set of image features that may provide an incomplete, redundant, or even noisy representation. This paper aims to investigate the performance and efficiency by using Depp Convolutional Neural Network (DCNN) to detect and grad cataract automatically, it also visualize some of the feature maps at pool5 layer with their high-order empirical semantic meaning, providing a explanation to the feature representation extracted by DCNN. The proposed DCNN classification system is cross validated on different number of population-based clinical retinal fundus images collected from hospital, up to 5620 images. There are two conclusions suggested in this paper: The first one is, the interference of local uneven illumination and the reflection of eyes were overcome by using the retinal fundus images after G-filter, which makes an significant contribution to DCNN classification. The second one is, with the increase of the amount of available samples, the DCNN classification accuracies are increasing, and the fluctuation range of accuracies are more stable. The best accuracy, our method achieved, is 93.52% and 86.69% in cataract detection and grading tasks separately. It is demonstrated in this paper that the DCNN classifier outperforms state-of-the-art in the performance. Further more, The proposed method has the potential to be applied to other eye diseases in future.
基于深度卷积神经网络的白内障自动检测与分级
白内障是工业化国家最常见的致盲原因之一,占致盲人数的50%以上。早期发现和治疗可以减少白内障患者的痛苦,防止视力障碍变成失明。但是,训练有素的眼科专家的专业知识对于临床白内障检测和分级是必要的,由于潜在的成本,这可能会给每个人的早期干预带来困难。现有的基于眼底图像的白内障自动检测和分级研究利用了一组预定义的图像特征,这些特征可能会提供不完整、冗余甚至有噪声的表示。本文旨在研究德普卷积神经网络(Depp Convolutional Neural Network, DCNN)自动检测和分级白内障的性能和效率,并将pool5层的一些特征映射及其高阶经验语义可视化,为DCNN提取的特征表示提供解释。在医院收集的不同数量的基于人群的临床视网膜眼底图像上交叉验证了所提出的DCNN分类系统,多达5620张图像。本文得出两个结论:一是利用经过g滤光处理的视网膜眼底图像克服了局部光照不均匀和眼睛反射的干扰,为DCNN分类做出了重要贡献。二是随着可用样本数量的增加,DCNN分类准确率不断提高,准确率的波动范围更加稳定。该方法在白内障检测和分级任务中的准确率分别为93.52%和86.69%。本文证明了DCNN分类器在性能上优于最先进的分类器。此外,该方法在未来还具有应用于其他眼病的潜力。
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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