基于U-Net结构和Logistic回归的青光眼眼底图像分类

V. Bajaj, Deepali M. Kotambkar Shelke
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引用次数: 0

摘要

青光眼是继白内障之后导致视力受损的主要原因,而对抗它的唯一方法就是及早发现。为了解决这一根本问题,迫切需要开发一种能够在没有大量设备和合格医务人员的情况下有效工作的系统,并花费更少的时间。计算机辅助诊断(CAD)系统采用不同的算法进行医学图像处理和分析,可以帮助实现这一目标。计算视杯与视盘之比(CDR)是诊断青光眼的方法之一,这可以借助CAD算法来实现。在医学图像处理中,主要是对图像进行分割和分类,从而得到相应的结果。本文探索了最著名的CNN模型,用于从眼底图像中分割视盘和视杯的U-Net模型和逻辑回归模型,这是一种确定这两个术语之间关系的分类模型,而不是以前使用的CDR公式。
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Fundus Image Classification for Glaucoma using U-Net Architecture and Logistic Regression
The leading cause of visual impairment after cataract, is glaucoma and the only way to combat it is to detect it early. It is imperative to develop a system that can work effectively without a lot of equipment, qualified medical personnel, and takes less time in order to address this fundamental issue. A Computer-Aided Diagnosis (CAD) system, which employs different algorithms for medical image processing and analysis, can assist in achieving this. One of the ways to diagnose glaucoma is to calculate Optic Cup to Optic Disc ratio (CDR) and this can be done with the help of CAD algorithms. In medical image processing the primary focus is on image segmentationand its classification in order to obtain a result. In this paper, the exploration the best-known CNN model, U-Net for image segmentation of Optic Disc and Optic Cup from a fundus image and Logistic Regression, a classification model to determine a relationship between these two terms rather than previously used CDR formulas.
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