Department of Electronics and Communication Engineering, Chandigarh University, Mohali, India.
Department of Electrical and Instrumentation Engineering, Thapar Institute of Engineering & Technology, Patiala, India.
Microvasc Res. 2023 Jul;148:104477. doi: 10.1016/j.mvr.2023.104477. Epub 2023 Feb 4.
Diabetic Retinopathy is a persistent disease of eyes that may lead to permanent loss of sight. In this paper, methodology is proposed to segment region of interest (ROI) i.e. new blood vessels in fundus images of retina of Diabetic Retinopathy (DR). The database of 50 fundus retinal images of healthy subjects and DR patients is fetched from Post Graduate Institute of Medical Education and Research (PGIMER), Chandigarh, India. The experimental set up consists of three set of experiments for the disease. For DR, in the first stage of automated blood vessel segmentation, gray-scale image is produced from the colored image using Principal Component Analysis (PCA) in the preprocessing step. The contrast enhancement by the Contrast Limited Adaptive Histogram Equalization (CLAHE) highlights the retinal blood vessels in the gray-scale image i.e. it unsheathed newly formed retinal blood vessels whereas PCA preserved their texture and color discrimination in DR images. The expert ophthalmologist(s) scrutiny on both internet repository and real time data acted as the gold standard for further analysis and formation of the proposed method. Further, ophthalmologists ascertained the forming of new blood vessels only on the disc region and divulging them, which were impossible with the naked eye. These operations help in extracting retinal blood vessels present on the disc and non-disc region of the image. The comparison of the results are done with the state of art methods like watershed transform. It is observed from the results that the new blood vessels are better segmented by the proposed methodology and are marked by the experienced ophthalmologist for validation. Further, for quantitative analysis, the features are extracted from new blood vessels as they are crucial for scientific interpretation. The results of the features lie in permissible limits such as no. of segments vary from 2 to 5 and length of segments varies from 49 to 164 pixels. Similarly, other features such as gray level of new blood vessels lie in 0.296-0.935 normalized range, coefficient with variations in gray level in the range of 0.658-10.10 and distance from vessel origin lie in the range of 56-82 pixels respectively. Both quantitative and qualitative results show that the methodologies proposed boosted the ophthalmic and clinical diagnosis. The developed method further handled the false detection of vessels near the optic disk boundary, under-segmentation of thin vessels, detection of pathological anomalies such as exudates, micro-aneurysms and cotton wool spots. From the numerical analysis, ophthalmologist extracted the information of number of vessels formed, length of the new vessels, observation that the new vessels appearing are less homogenous than the normal vessels. Also about the new vessels, whether they lie on the centre of disc region or towards its edges. These parameters lie as per the findings of the ophthalmologists on retinal images and automated detection helped in monitoring and comprehensive patient assessment. The experimental results show case that the proposed method has higher sensitivity, specificity and accuracy as compared to state of art methods i.e. 0.9023, 0.9610 and 0.9921, respectively. Similar results are obtained on retinal fundus images of PGIMER Chandigarh with sensitivity-0.9234, specificity-0.9955 and accuracy-0.9682.
糖尿病视网膜病变是一种可能导致永久性失明的眼部慢性疾病。本文提出了一种从糖尿病视网膜病变(DR)眼底图像中分割感兴趣区域(ROI)即新血管的方法。从印度昌迪加尔的 PGIMER 获得了 50 张健康受试者和 DR 患者的眼底视网膜图像数据库。实验设置由针对该疾病的三组实验组成。对于 DR,在自动血管分割的第一阶段,使用主成分分析(PCA)在预处理步骤中从彩色图像生成灰度图像。对比度限制自适应直方图均衡化(CLAHE)的对比度增强突出了灰度图像中的视网膜血管,即它揭示了新形成的视网膜血管,而 PCA 保留了 DR 图像中它们的纹理和颜色辨别。互联网存储库和实时数据上的专家眼科医生检查充当了进一步分析和形成所提出方法的金标准。此外,眼科医生仅在盘区确定新血管的形成,并将其揭示出来,这是肉眼无法做到的。这些操作有助于提取图像的盘区和非盘区上存在的视网膜血管。将结果与诸如分水岭变换等现有技术方法进行了比较。结果表明,所提出的方法可以更好地分割新血管,并由经验丰富的眼科医生进行标记以进行验证。此外,对于定量分析,从新血管中提取特征,因为它们对于科学解释至关重要。特征的结果处于允许的范围内,例如段数从 2 到 5 不等,段的长度从 49 到 164 像素不等。同样,其他特征,如新血管的灰度值在 0.296-0.935 归一化范围内,灰度变化的系数在 0.658-10.10 范围内,以及距血管起点的距离在 56-82 像素范围内。定量和定性结果均表明,所提出的方法提高了眼科和临床诊断水平。所开发的方法进一步处理了在视盘边界附近检测到的血管的假阳性,薄血管的过度分割,病理性异常(渗出物,微动脉瘤和棉绒斑)的检测。从数值分析中,眼科医生提取了形成的血管数量,新血管长度的信息,观察到新血管的出现不如正常血管均匀。还包括关于新血管的信息,即它们位于盘区的中心还是其边缘。这些参数符合眼科医生对视网膜图像的发现,并且自动化检测有助于监测和全面的患者评估。实验结果表明,与现有的基于艺术方法相比,所提出的方法具有更高的敏感性,特异性和准确性,分别为 0.9023、0.9610 和 0.9921。在 PGIMER 昌迪加尔的眼底视网膜图像上也获得了相似的结果,其敏感性为 0.9234、特异性为 0.9955 和准确性为 0.9682。