Non-Invasive Retinal Pathology Assessment Using Haralick-Based Vascular Texture and Global Fundus Color Distribution Analysis.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Ouafa Sijilmassi
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Abstract

This study analyzes retinal fundus images to distinguish healthy retinas from those affected by diabetic retinopathy (DR) and glaucoma using a dual-framework approach: vascular texture analysis and global color distribution analysis. The texture-based approach involved segmenting the retinal vasculature and extracting eight Haralick texture features from the Gray-Level Co-occurrence Matrix. Significant differences in features such as energy, contrast, correlation, and entropy were found between healthy and pathological retinas. Pathological retinas exhibited lower textural complexity and higher uniformity, which correlates with vascular thinning and structural changes observed in DR and glaucoma. In parallel, the global color distribution of the full fundus area was analyzed without segmentation. RGB intensity histograms were calculated for each channel and averaged across groups. Statistical tests revealed significant differences, particularly in the green and blue channels. The Mahalanobis distance quantified the separability of the groups per channel. These results indicate that pathological changes in retinal tissue can also lead to detectable chromatic shifts in the fundus. The findings underscore the potential of both vascular texture and color features as non-invasive biomarkers for early retinal disease detection and classification.

基于haralick的血管纹理和全局眼底颜色分布分析的无创视网膜病理评估。
本研究采用双框架方法:血管纹理分析和全局颜色分布分析,分析视网膜眼底图像,以区分健康视网膜与糖尿病视网膜病变(DR)和青光眼的视网膜。基于纹理的方法包括分割视网膜血管并从灰度共现矩阵中提取8个哈拉里克纹理特征。健康视网膜和病变视网膜在能量、对比度、相关性和熵等特征上存在显著差异。病理性视网膜表现出较低的纹理复杂性和较高的均匀性,这与DR和青光眼中观察到的血管变薄和结构改变有关。同时,对整个眼底区域的全局颜色分布进行了不分割分析。计算每个通道的RGB强度直方图,并在组间取平均值。统计测试显示了显著的差异,特别是在绿色和蓝色通道中。马氏距离量化了每个通道中基团的可分离性。这些结果表明,视网膜组织的病理改变也可以导致眼底可检测的色差。这些发现强调了血管纹理和颜色特征作为早期视网膜疾病检测和分类的非侵入性生物标志物的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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