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首页> 外文期刊>Journal of analytical research in clinical medicine. >Automatic detection of retinal exudates in fundus images of diabetic retinopathy patients
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Automatic detection of retinal exudates in fundus images of diabetic retinopathy patients

机译:糖尿病视网膜病变患者眼底图像中视网膜渗出液的自动检测

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Introduction: Diabetic retinopathy (DR) is the most frequent microvascular complication of diabetes and can lead to several retinal abnormalities including microaneurysms, exudates, dot and blot hemorrhages, and cotton wool spots. Automated early detection of these abnormalities could limit the severity of the disease and assist ophthalmologists in investigating and treating the disease more efficiently. Segmentation of retinal image features provides the basis for automated assessment. In this study, exudates lesion on retinopathy retinal images was segmented by different image processing techniques. The objective of this study is detection of the exudates regions on retinal images of retinopathy patients by different image processing techniques. Methods: A total of 30 color images from retinopathy patients were selected for this study. The images were taken by Topcon TRC-50 IX mydriatic camera and saves with TIFF format with a resolution of 500 × 752 pixels. The morphological function was applied on intensity components of hue saturation intensity (HSI) space. To detect the exudates regions, thresholding was performed on all images and the exudates region was segmented. To optimize the detection efficiency, the binary morphological functions were applied. Finally, the exudates regions were quantified and evaluated for further statistical purposes. Results: The average of sensitivity of 76%, specificity of 98%, and accuracy of 97% was obtained. Conclusion: The results showed that our approach can identify the exudate regions in retinopathy images.
机译:简介:糖尿病性视网膜病(DR)是糖尿病中最常见的微血管并发症,可导致多种视网膜异常,包括微动脉瘤,渗出液,斑点和斑点出血以及棉斑点。这些异常的自动早期检测可以限制疾病的严重程度,并帮助眼科医生更有效地调查和治疗疾病。视网膜图像特征的分割为自动评估提供了基础。在这项研究中,通过不同的图像处理技术对视网膜病变视网膜图像上的渗出液病变进行了分割。这项研究的目的是通过不同的图像处理技术来检测视网膜病变患者视网膜图像上的渗出液区域。方法:从视网膜病变患者中选择总共30幅彩色图像用于这项研究。图像由Topcon TRC-50 IX散瞳相机拍摄,并以TIFF格式保存,分辨率为500×752像素。将形态函数应用于色调饱和强度(HSI)空间的强度分量。为了检测渗出液区域,对所有图像进行阈值化,并对渗出液区域进行分割。为了优化检测效率,应用了二进制形态函数。最后,对渗出液区域进行定量和评估,以用于进一步的统计目的。结果:平均灵敏度为76%,特异性为98%,准确性为97%。结论:结果表明我们的方法可以识别出视网膜病变图像中的渗出液区域。

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