Rehman Aziz Ur, Taj Imtiaz A, Sajid Muhammad, Karimov Khasan S
Faculty of Electrical Engineering, GIK Institute of Engineering Sciences and Technology, Topi 23640, District Swabi, KPK, Pakistan.
Department of Electrical Engineering, Capital University of Science and Technology Islamabad Expressway, Kahuta Road, Zone-V Islamabad, Pakistan.
Math Biosci Eng. 2021 Jun 16;18(5):5321-5346. doi: 10.3934/mbe.2021270.
Glaucoma is a chronic ocular degenerative disease that can cause blindness if left untreated in its early stages. Deep Convolutional Neural Networks (Deep CNNs) and its variants have provided superior performance in glaucoma classification, segmentation, and detection. In this paper, we propose a two-staged glaucoma classification scheme based on Deep CNN architectures. In stage one, four different ImageNet pre-trained Deep CNN architectures, i.e., AlexNet, InceptionV3, InceptionResNetV2, and NasNet-Large are used and it is observed that NasNet-Large architecture provides superior performance in terms of sensitivity (99.1%), specificity (99.4%), accuracy (99.3%), and area under the receiver operating characteristic curve (97.8%) metrics. A detailed performance comparison is also presented among these on public datasets, i.e., ACRIMA, ORIGA-Light, and RIM-ONE as well as locally available datasets, i.e., AFIO, and HMC. In the second stage, we propose an ensemble classifier with two novel ensembling techniques, i.e., accuracy based weighted voting, and accuracy/score based weighted averaging to further improve the glaucoma classification results. It is shown that ensemble with accuracy/score based scheme improves the accuracy (99.5%) for diverse databases. As an outcome of this study, it is presented that the NasNet-Large architecture is a feasible option in terms of its performance as a single classifier while ensemble classifier further improves the generalized performance for automatic glaucoma classification.
青光眼是一种慢性眼部退行性疾病,如果在早期不进行治疗,可能会导致失明。深度卷积神经网络(深度卷积神经网络)及其变体在青光眼分类、分割和检测方面表现出色。在本文中,我们提出了一种基于深度卷积神经网络架构的两阶段青光眼分类方案。在第一阶段,使用了四种不同的在ImageNet上预训练的深度卷积神经网络架构,即AlexNet、InceptionV3、InceptionResNetV2和NasNet-Large,并且观察到NasNet-Large架构在灵敏度(99.1%)、特异性(99.4%)、准确率(99.3%)和受试者工作特征曲线下面积(97.8%)指标方面表现出色。还在公共数据集(即ACRIMA、ORIGA-Light和RIM-ONE)以及本地可用数据集(即AFIO和HMC)上对这些架构进行了详细的性能比较。在第二阶段,我们提出了一种集成分类器,采用两种新颖的集成技术,即基于准确率的加权投票和基于准确率/分数的加权平均,以进一步提高青光眼分类结果。结果表明,基于准确率/分数的方案进行集成可以提高不同数据库的准确率(99.5%)。作为本研究的结果,表明NasNet-Large架构作为单个分类器在性能方面是一个可行的选择,而集成分类器进一步提高了自动青光眼分类的泛化性能。