Yang Lei, Zhang Minxuan, Cheng Jing, Zhang Tiegang, Lu Feng
School of Mechatronic Engineering and Automation, Shanghai University, China.
College of Electrical Engineering, Sichuan University, China.
Heliyon. 2024 Mar 4;10(6):e27391. doi: 10.1016/j.heliyon.2024.e27391. eCollection 2024 Mar 30.
Diabetic retinopathy is an ocular disease caused by long-term damage to the retina due to high blood sugar levels. Elevated blood sugar can impair the microvasculature in the retina, leading to vascular abnormalities and the formation of abnormal new blood vessels. These changes can manifest in the retina as hemorrhages, leaks, vessel dilation, retinal edema, and retinal detachment. The retinas of individuals with diabetes exhibit different morphologies compared to those without the condition. Most histological images cannot be accurately described using traditional geometric shapes or methods. Therefore, this study aims to evaluate and classify the morphology of retinas with varying degrees of severity using multifractal geometry. In the initial experiments, two-dimensional empirical mode decomposition was employed to extract high-frequency detailed features, and the classification process was based on the most relevant features in the multifractal spectrum associated with disease factors. To eliminate less significant features, the random forest algorithm was utilized. The proposed method achieved an accuracy of 96%, sensitivity of 96%, and specificity of 95%.
糖尿病视网膜病变是一种由于高血糖水平导致视网膜长期受损而引起的眼部疾病。血糖升高会损害视网膜中的微血管系统,导致血管异常并形成异常的新生血管。这些变化在视网膜上可表现为出血、渗漏、血管扩张、视网膜水肿和视网膜脱离。与非糖尿病患者相比,糖尿病患者的视网膜呈现出不同的形态。大多数组织学图像无法用传统的几何形状或方法准确描述。因此,本研究旨在使用多重分形几何对不同严重程度的视网膜形态进行评估和分类。在初步实验中,采用二维经验模态分解来提取高频细节特征,分类过程基于与疾病因素相关的多重分形谱中最相关的特征。为了消除不太重要的特征,使用了随机森林算法。所提出的方法准确率达到96%,灵敏度为96%,特异性为95%。