自动渗出液提取用于糖尿病视网膜病变的早期检测

Syna Sreng, Noppadol Maneerat, D. Isarakorn, B. Pasaya, J. Takada, Ronakorn Panjaphongse, R. Varakulsiripunth
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引用次数: 27

摘要

糖尿病视网膜病变(DR)是糖尿病患者致盲的最常见原因,但早期发现和及时治疗可以预防这一问题。分泌物被认为是严重的DR异常的标志之一,因此应立即正确发现这些病变并进行治疗,以防止视力丧失。本研究的目的是在眼底图像中自动检测这些病变。为了实现这一目标,该方法首先对眼底图像进行预处理,提高图像质量,然后结合3种方法对视盘(OD)进行检测和消除,防止对渗出物检测结果的干扰;图像二值化,基于感兴趣区域(ROI)的分割和形态重建(MR)。其次,利用最大熵阈值法从OD区域消除的结果中过滤出明亮像素,检测渗出物。由于检测结果中含有一些噪声,在某些图像中,这些噪声在眼底区域边缘表现为明亮的光,因此考虑并消除了噪声的影响,提高了假阳性的检测结果。最后,利用磁共振技术提取渗出物,并在100张医院眼底图像上进行了实验。实验结果表明,以平均3.92秒/幅的处理速度,对91%的渗出物进行了正确的提取。
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Automatic exudate extraction for early detection of Diabetic Retinopathy
Diabetic Retinopathy (DR) is the most common cause of blindness in diabetic patients, but early detection and timely treatment can prevent this problem. Exudates have been found to be one of the signs and serious DR anomalies so the proper detection of these lesions and the treatment should be done immediately to prevent loss of vision. The aim of this study is to automatically detect these lesions in fundus images. To achieve this goal, the proposed method first preprocesses to improve the quality of fundus image, and then Optic Disc (OD) is detected and eliminated to prevent the interference to the result of exudate detection by combination of 3 methods; image binarization, Region Of Interest (ROI) based segmentation and Morphological Reconstruction (MR). Next, exudates are detected by applying the maximum entropy thresholding to filter out the bright pixels from the result of OD region eliminated. Since the result contains some noises which appear as bright light at the edge of fundus area in some images, that affect is considered and eliminated to improve the result of false positive. Finally, exudates are extracted by using MR. The proposed technique has been tested on 100 fundus images from hospital. Experimental results show that 91 % of exudate is extracted correctly with the average process of 3.92 second per image.
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