Glaucoma leads to permanent vision disability by damaging the optical nerve that transmits visual images to the brain. The fact that glaucoma does not show any symptoms as it progresses and cannot be stopped at the later stages, makes it critical to be diagnosed in its early stages. Although various deep learning models have been applied for detecting glaucoma from digital fundus images, due to the scarcity of labeled data, their generalization performance was limited along with high computational complexity and special hardware requirements. In this study, compact Self-Organized Operational Neural Networks (Self- ONNs) are proposed for early detection of glaucoma in fundus images and their performance is compared against the conventional (deep) Convolutional Neural Networks (CNNs) over three benchmark datasets: ACRIMA, RIM-ONE, and ESOGU. The experimental results demonstrate that Self-ONNs not only achieve superior detection performance but can also significantly reduce the computational complexity making it a potentially suitable network model for biomedical datasets especially when the data is scarce.
翻译:Glaucoma通过破坏将视觉图像传送给大脑的光神经导致永久视力残疾。青光眼没有表现出任何症状,而且不能在后期停止,这一事实使得在早期诊断至关重要。虽然由于标签数据稀少,应用了各种深层次学习模型从数字基体图像中探测青光眼,但由于缺少标签数据,它们的概括性性性能有限,同时具有高计算复杂性和特殊硬件要求。在这项研究中,提议在Fundus图像中早期检测青光眼,并将这些图像的性能与传统(深层)革命神经网络(CNNs)相比,超过三个基准数据集:ACRIMA、RIM-ONE和ESOGU。实验结果表明,自我网络不仅能够取得较高的检测性能,而且能够显著降低计算性复杂性,使其成为生物医学数据集的潜在适当网络模型,特别是在数据稀缺的情况下。