Recognition of Glaucomatous Fundus Images Using Machine Learning Methods Based on Optic Nerve Head Topographic Features.

IF 2 4区 医学 Q2 OPHTHALMOLOGY Journal of Glaucoma Pub Date : 2024-08-01 Epub Date: 2024-03-29 DOI:10.1097/IJG.0000000000002379
Chao-Wei Wu, Tzu-Yu Huang, Yeong-Cheng Liou, Shih-Hsin Chen, Kwou-Yeung Wu, Han-Yi Tseng
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Abstract

Prcis: Machine learning classifiers are an effective approach to detecting glaucomatous fundus images based on optic disc topographic features making it a straightforward and effective approach.

Study design: Retrospective case-control study.

Objective: The aim was to compare the effectiveness of clinical discriminant rules and machine learning classifiers in identifying glaucomatous fundus images based on optic disc topographic features.

Methods: The study used a total of 800 fundus images, half of which were glaucomatous cases and the other half non-glaucomatous cases obtained from an open database and clinical work. The images were randomly divided into training and testing sets with equal numbers of glaucomatous and non-glaucomatous images. An ophthalmologist framed the edge of the optic cup and disc, and the program calculated five features, including the vertical cup-to-disc ratio and the width of the optic rim in four quadrants in pixels, used to create machine learning classifiers. The discriminative ability of these classifiers was compared with clinical discriminant rules.

Results: The machine learning classifiers outperformed clinical discriminant rules, with the extreme gradient boosting method showing the best performance in identifying glaucomatous fundus images. Decision tree analysis revealed that the cup-to-disc ratio was the most important feature for identifying glaucoma fundus images. At the same time, the temporal width of the optic rim was the least important feature.

Conclusions: Machine learning classifiers are an effective approach to detecting glaucomatous fundus images based on optic disc topographic features and integration with an automated program for framing and calculating the required parameters would make it a straightforward and effective approach.

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利用基于视神经头地形特征的机器学习方法识别青光眼眼底图像。
目的:比较临床判别规则和机器学习分类器在根据视盘地形特征识别青光眼眼底图像方面的有效性:设计:回顾性病例对照研究:研究共使用了 800 张眼底图像,其中一半为青光眼病例,另一半为非青光眼病例,这些图像均来自开放数据库和临床工作。这些图像被随机分为训练集和测试集,其中青光眼和非青光眼图像的数量相等。眼科医生对视杯和视盘的边缘进行取景,程序计算出五个特征,包括垂直视杯与视盘的比率和视缘在四个象限中的宽度(以像素为单位),用于创建机器学习分类器。这些分类器的判别能力与临床判别规则进行了比较:结果:机器学习分类器的表现优于临床判别规则,其中极梯度增强方法在识别青光眼眼底图像方面表现最佳。决策树分析显示,杯盘比是识别青光眼眼底图像的最重要特征。结论:机器学习分类器是识别青光眼眼底图像的有效方法:机器学习分类器是根据视盘地形特征检测青光眼眼底图像的有效方法,与自动程序整合后,可自动设置和计算所需参数,是一种直接有效的方法。
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来源期刊
Journal of Glaucoma
Journal of Glaucoma 医学-眼科学
CiteScore
4.20
自引率
10.00%
发文量
330
审稿时长
4-8 weeks
期刊介绍: The Journal of Glaucoma is a peer reviewed journal addressing the spectrum of issues affecting definition, diagnosis, and management of glaucoma and providing a forum for lively and stimulating discussion of clinical, scientific, and socioeconomic factors affecting care of glaucoma patients.
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