Automation of Cluster Extraction in Fundus Autofluorescence Images of Geographic Atrophy

J. Arslan, K. Benke
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Abstract

The build-up of lipofuscin—an age-associated biomarker referred to as hyperfluorescence—is considered a precursor in the progression of geographic atrophy (GA). Prior studies have attempted to classify hyperfluorescent regions to explain varying rates of GA progression. In this study, digital image processing and unsupervised learning were used to (1) completely automate the extraction of hyperfluorescent regions from images, and (2) evaluate prospective patterns and groupings of hyperfluorescent areas associated with varying levels of GA progression. Patterns were determined by clustering methods, such as k-Means, and performance was evaluated using metrics such as the Silhouette Coefficient (SC), the Davies–Bouldin Index (DBI), and the Calinski–Harabasz Index (CHI). Automated extraction of hyperfluorescent regions was carried out using pseudocoloring techniques. The approach revealed three distinct types of hyperfluorescence based on color intensity changes: early-stage hyperfluorescence, intermediate-stage hyperfluorescence, and late-stage hyperfluorescence, with the early and late stages having three additional subclassifications that could explain varying levels of GA progression. The performance metrics for early-stage hyperfluorescence were SC = 0.597, DBI = 0.915, and CHI = 186.989. For late-stage hyperfluorescence, SC = 0.593, DBI = 1.013, and CHI = 217.325. No meaningful subclusters were identified for the intermediate-stage hyperfluorescence, possibly because it is a transitional phase of hyperfluorescence progression.
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地理萎缩眼底自荧光图像聚类提取的自动化
脂褐素(一种与年龄相关的生物标志物,称为高荧光)的积累被认为是地理萎缩(GA)进展的前兆。先前的研究试图对高荧光区进行分类,以解释GA进展的不同速率。在本研究中,使用数字图像处理和无监督学习来(1)完全自动化地从图像中提取高荧光区域,(2)评估与不同GA进展水平相关的高荧光区域的预期模式和分组。通过聚类方法(如k-Means)确定模式,并使用廓形系数(SC)、Davies-Bouldin指数(DBI)和Calinski-Harabasz指数(CHI)等指标评估绩效。利用伪着色技术自动提取高荧光区域。该方法根据颜色强度变化揭示了三种不同类型的高荧光:早期高荧光、中期高荧光和晚期高荧光,早期和晚期有三个额外的亚分类,可以解释不同程度的GA进展。早期高荧光性能指标SC = 0.597, DBI = 0.915, CHI = 186.989。晚期高荧光SC = 0.593, DBI = 1.013, CHI = 217.325。中期高荧光没有确定有意义的亚群,可能是因为它是高荧光进展的过渡阶段。
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