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Detection of microaneurysms using ant colony algorithm in the early diagnosis of diabetic retinopathy

机译:使用蚁群算法检测糖尿病视网膜病变的早期诊断中的微肿瘤

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Microaneurysms are lesions in the shape of small circular dilations which result from thinning in peripheral retinal blood vessels due to diabetes and increasing intra-retinal blood pressure. Because it is considered as the most important clinical finding in the diagnosis of diabetic retinopathy, accurate detection of these lesions bear utmost importance in the early diagnosis of diabetic retinopathy. The present study aims to accurately, effectively and automatically detect microaneurysms which are difficult to detect in color fundus images in early stage. To this aim, ant colony algorithm, which is an important optimization method, was used instead of conventional image processing techniques. First, retinal vascular structure was extracted from color fundus images in Messidor and DiaretDB1 data sets. Afterwards, the segmentation of microaneurysms was effectively carried out using ant colony algorithm. The same procedure was also applied to five different image processing and clustering algorithms (watershed, random walker, k-means, maximum entropy and region growing) in order to compare the performance of the proposed method with other methods. Microaneurysm images manually detected by a specialist eye doctor were used to measure the performances of above-mentioned methods. The similarities among microaneurysms which were automatically and manually segmented were tested using Dice and Jaccard similarity index values. Dice index values obtained from the study vary between 0.52 and 0.98 in maximum entropy, 0.55 and 0.88 in watershed, 0.75 and 0.86 in region growing, 0.55 and 0.78 in k-means, and 0.66 and 0.83 in random walker, and 0.81 and 0.9 in ant colony. Similar performance values were also obtained in Jaccard index. The results show that different performances were observed in the conventional segmentation of microaneurysms depending on the image quality. On the other hand, the ant colony based method proposed in this paper displays a more stabilized and higher performance irrespective of image contrast. Therefore, it is evident that the proposed method successfully detects microaneurysms even in low quality images, thus helping specialists diagnose them in an easier way.
机译:微生物瘤是小圆形扩张形状的病变,由于糖尿病和随着视网膜内血压增加而导致外周视网膜血管中的稀释。因为它被认为是糖尿病视网膜病变诊断中最重要的临床发现,因此在糖尿病视网膜病变的早期诊断中,这些病变的准确检测至关重要。本研究旨在精确,有效地和自动地检测微安瘤,这在早期难以检测彩色眼底图像。为此目的,使用作为重要优化方法的蚁群算法代替传统的图像处理技术。首先,从Messidor和DiaRetdB1数据集中从彩色眼底图像中提取视网膜血管结构。然后,使用蚁群算法有效地进行微安瘤的分割。相同的程序也应用于五种不同的图像处理和聚类算法(流域,随机步行者,K均值,最大熵和区域生长),以便比较所提出的方法与其他方法的性能。专业眼科医生手动检测到的微型肌肤图像用于测量上述方法的性能。使用骰子和Jaccard相似性指数值测试自动和手动分段的微安瘤中的相似性。从研究中获得的骰子指数值在最大熵,0.55和0.88中在0.55和0.88中,0.75和0.86在区域生长,0.55和0.78,随机助行器中的0.66和0.83,0.81和0.9蚁群。在Jaccard指数中也获得了类似的性能值。结果表明,根据图像质量,在微安瘤的常规分段中观察到不同的性能。另一方面,本文提出的基于蚁群的方法显示出更稳定的和更高的性能,而不管图像对比如何。因此,显而易见的是,即使在低质量的图像中,所提出的方法也成功地检测了微安瘤,因此帮助专家以更简单的方式诊断它们。

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