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Automatic segmentation of blood vessels from retinal fundus images through image processing and data mining techniques

机译:通过图像处理和数据挖掘技术从视网膜眼底图像自动分割血管

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Machine Learning techniques have been useful in almost every field of concern. Data Mining, a branch of Machine Learning is one of the most extensively used techniques. The ever-increasing demands in the field of medicine are being addressed by computational approaches in which Big Data analysis, image processing and data mining are on top priority. These techniques have been exploited in the domain of ophthalmology for better retinal fundus image analysis. Blood vessels, one of the most significant retinal anatomical structures are analysed for diagnosis of many diseases like retinopathy, occlusion and many other vision threatening diseases. Vessel segmentation can also be a pre-processing step for segmentation of other retinal structures like optic disc, fovea, microneurysms, etc. In this paper, blood vessel segmentation is attempted through image processing and data mining techniques. The retinal blood vessels were segmented through color space conversion and color channel extraction, image pre-processing, Gabor filtering, image postprocessing, feature construction through application of principal component analysis, k-means clustering and first level classification using Na?ve–Bayes classification algorithm and second level classification using C4.5 enhanced with bagging techniques. Association of every pixel against the feature vector necessitates Big Data analysis. The proposed methodology was evaluated on a publicly available database, STARE. The results reported 95.05% accuracy on entire dataset; however the accuracy was 95.20% on normal images and 94.89% on pathological images. A comparison of these results with the existing methodologies is also reported. This methodology can help ophthalmologists in better and faster analysis and hence early treatment to the patients.
机译:机器学习技术在几乎所有关注领域中都非常有用。数据挖掘是机器学习的一个分支,是应用最广泛的技术之一。通过计算方法来满足医学领域不断增长的需求,其中大数据分析,图像处理和数据挖掘是重中之重。这些技术已经在眼科学领域得到了利用,以进行更好的视网膜眼底图像分析。分析了作为最重要的视网膜解剖结构之一的血管,以诊断许多疾病,例如视网膜病变,闭塞和许多其他视力威胁疾病。血管分割也可以是分割其他视网膜结构(如视盘,中央凹,微神经突等)的预处理步骤。在本文中,通过图像处理和数据挖掘技术尝试进行血管分割。视网膜血管通过颜色空间转换和颜色通道提取,图像预处理,Gabor滤波,图像后处理,通过应用主成分分析,k均值聚类和使用Naveve-Bayes分类进行的一级分类进行特征构建而进行了细分使用袋装技术增强的C4.5算法和二级分类。每个像素与特征向量的关联都需要大数据分析。在公共数据库STARE上评估了所建议的方法。结果报告整个数据集的准确度为95.05%;然而,正常图像的准确度为95.20%,病理图像的准确度为94.89%。还报告了这些结果与现有方法的比较。这种方法可以帮助眼科医生更好,更快地进行分析,从而对患者进行早期治疗。

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