A P Sunija, Kar Saikat, S Gayathri, Gopi Varun P, Palanisamy P
Department of Electronics and Communication Engineering, National Institute of Technology Tiruchirappalli, Tamilnadu-620015, India.
Comput Methods Programs Biomed. 2021 Mar;200:105877. doi: 10.1016/j.cmpb.2020.105877. Epub 2020 Nov 28.
Retinal diseases are becoming a major health problem in recent years. Their early detection and ensuing treatment are essential to prevent visual damage, as the number of people affected by diabetes is expected to grow exponentially. Retinal diseases progress slowly, without any discernible symptoms. Optical Coherence Tomography (OCT) is a diagnostic tool capable of analyzing and identifying the quantitative discrimination in the disease affected retinal layers with high resolution. This paper proposes a deep neural network-based classifier for the computer-aided classification of Diabetic Macular Edema (DME), drusen, Choroidal NeoVascularization (CNV) from normal OCT images of the retina.
In the proposed method, we demonstrate the feasibility of classifying and detecting severe retinal pathologies from OCT images using a deep convolutional neural network having six convolutional blocks. The classification results are explained using a gradient-based class activation mapping algorithm.
Training and validation of the model are performed on a public dataset of 83,484 images with expert-level disease grading of CNV, DME, and drusen, in addition to normal retinal image. We achieved a precision of 99.69%, recall of 99.69%, and accuracy of 99.69% with only three misclassifications out of 968 test cases.
In the proposed work, downsampling and weight sharing were introduced to improve the training efficiency and were found to reduce the trainable parameters significantly. The class activation mapping was also performed, and the output image was similar to the retina's actual color OCT images. The proposed network used only 6.9% of learnable parameters compared to the existing ResNet-50 model and yet outperformed it in classification. The proposed work can be potentially employed in real-time applications due to reduced complexity and fewer learnable parameters over other models.
近年来,视网膜疾病正成为一个主要的健康问题。随着糖尿病患者数量预计呈指数级增长,其早期检测及后续治疗对于预防视力损害至关重要。视网膜疾病进展缓慢,没有任何明显症状。光学相干断层扫描(OCT)是一种能够以高分辨率分析和识别受疾病影响的视网膜层的定量差异的诊断工具。本文提出一种基于深度神经网络的分类器,用于从视网膜的正常OCT图像中对糖尿病性黄斑水肿(DME)、玻璃膜疣、脉络膜新生血管(CNV)进行计算机辅助分类。
在所提出的方法中,我们展示了使用具有六个卷积块的深度卷积神经网络从OCT图像中分类和检测严重视网膜病变的可行性。使用基于梯度的类激活映射算法对分类结果进行解释。
该模型在一个包含83484张图像的公共数据集上进行训练和验证,该数据集除了正常视网膜图像外,还具有专家级的CNV、DME和玻璃膜疣疾病分级。在968个测试案例中,我们仅出现了3次错误分类,精度达到99.69%,召回率达到99.69%,准确率达到99.69%。
在本研究中,引入了下采样和权重共享以提高训练效率,并发现可显著减少可训练参数。还进行了类激活映射,输出图像与视网膜实际的彩色OCT图像相似。与现有的ResNet - 50模型相比,所提出的网络仅使用了6.9%的可学习参数,但在分类方面却优于它。由于与其他模型相比复杂度降低且可学习参数更少,所提出的研究有可能应用于实时应用中。