Zedan Mohammad J M, Zulkifley Mohd Asyraf, Ibrahim Ahmad Asrul, Moubark Asraf Mohamed, Kamari Nor Azwan Mohamed, Abdani Siti Raihanah
Department of Electrical, Electronic and Systems Engineering, Faculty of Engineering and Built Environment, Universiti Kebangsaan Malaysia, Bangi 43600, Selangor, Malaysia.
Computer and Information Engineering Department, College of Electronics Engineering, Ninevah University, Mosul 41002, Iraq.
Diagnostics (Basel). 2023 Jun 26;13(13):2180. doi: 10.3390/diagnostics13132180.
Glaucoma is a chronic eye disease that may lead to permanent vision loss if it is not diagnosed and treated at an early stage. The disease originates from an irregular behavior in the drainage flow of the eye that eventually leads to an increase in intraocular pressure, which in the severe stage of the disease deteriorates the optic nerve head and leads to vision loss. Medical follow-ups to observe the retinal area are needed periodically by ophthalmologists, who require an extensive degree of skill and experience to interpret the results appropriately. To improve on this issue, algorithms based on deep learning techniques have been designed to screen and diagnose glaucoma based on retinal fundus image input and to analyze images of the optic nerve and retinal structures. Therefore, the objective of this paper is to provide a systematic analysis of 52 state-of-the-art relevant studies on the screening and diagnosis of glaucoma, which include a particular dataset used in the development of the algorithms, performance metrics, and modalities employed in each article. Furthermore, this review analyzes and evaluates the used methods and compares their strengths and weaknesses in an organized manner. It also explored a wide range of diagnostic procedures, such as image pre-processing, localization, classification, and segmentation. In conclusion, automated glaucoma diagnosis has shown considerable promise when deep learning algorithms are applied. Such algorithms could increase the accuracy and efficiency of glaucoma diagnosis in a better and faster manner.
青光眼是一种慢性眼病,如果不及早诊断和治疗,可能会导致永久性视力丧失。该疾病源于眼睛引流的异常,最终导致眼压升高,在疾病的严重阶段会使视神经乳头恶化并导致视力丧失。眼科医生需要定期进行医学随访以观察视网膜区域,这需要高度的技能和经验才能正确解读结果。为了改善这一问题,基于深度学习技术设计了算法,用于根据眼底图像输入来筛查和诊断青光眼,并分析视神经和视网膜结构的图像。因此,本文的目的是对52项关于青光眼筛查和诊断的最新相关研究进行系统分析,其中包括算法开发中使用的特定数据集、性能指标以及每篇文章采用的模态。此外,本综述分析和评估了所使用的方法,并以有条理的方式比较了它们的优缺点。它还探讨了广泛的诊断程序,如图像预处理、定位、分类和分割。总之,应用深度学习算法时,自动化青光眼诊断已显示出相当大的前景。此类算法可以更好、更快地提高青光眼诊断的准确性和效率。