A Review on Deep Learning Models for Optic Disc Segmentation and Glaucoma Classification

C.A. Irfana Parveen, R. Sunder, R. S. Kumar
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Abstract

Due to the recent existence of large datasets and advancements in processing capabilities, deep learning has risen to the forefront of artificial intelligence on a variety of tasks, particularly those related to image classification and pattern recognition. Ophthalmology offers a chance to see how deep learning classifiers are used in medicine. Globally, glaucoma is the prime factor of chronic blindness and disability. Despite this, most patients are unsure whether they have glaucoma, and detecting glaucoma progression with present technology is challenging in clinical practice. We can detect glaucoma early with the help of deep learning technology. The segmentation of the optic disc and classification of glaucoma using retinal data will be examined using several deep structured learning approaches in this research. Also presented a basic understanding of deep learning. Finally, the difficulties that deep learning models face are highlighted.
视盘分割与青光眼分类的深度学习模型研究进展
由于最近大数据集的存在和处理能力的进步,深度学习在各种任务中已经上升到人工智能的最前沿,特别是那些与图像分类和模式识别相关的任务。眼科提供了一个机会来了解深度学习分类器是如何在医学中使用的。在全球范围内,青光眼是慢性失明和残疾的主要因素。尽管如此,大多数患者不确定他们是否患有青光眼,并且在临床实践中使用现有技术检测青光眼的进展是具有挑战性的。我们可以在深度学习技术的帮助下及早发现青光眼。视盘的分割和青光眼的分类使用视网膜数据将检查使用几个深度结构化的学习方法在本研究中。同时介绍了对深度学习的基本认识。最后,强调了深度学习模型面临的困难。
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