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Analysing Vascular Structure to Determine Intra Retinal MicroVascular Abnormalities (IRMA)

机译:分析血管结构以确定视网膜内微血管异常(IRMA)

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Retinal fundus images are coloured images obtained through specially designed cameras through a dilated pupil of the patient. Analysis of these images is being used to detect retinal vascular abnormalities to provide insight into onset or severity of retinopathies specially hypertensive or diabetic retinopathy. One of the common yet significant change that occurs is the change in vascular shape; in that the vessel(s) becomes non-periodically twisted; more generally termed as an increase in tortuosity. This paper presents a simple and reasonably accurate algorithm to classify a vessel as abnormal or not through determining a set of features. A new set of features is proposed in this paper for reliable detection of vascular changes. The proposed method uses One Class SVM (OC-SVM), commonly used for anomaly detection. The reason of using OC-SVM is that the ratio of tortuous vessels as compared to normal ones is very low and they mostly appear as anomaly when compared with normal vessels. A local dataset of 100 fundus images is used for evaluation. The dataset has normally extracted vessels, veins and arteries as ground truth and also contains annotation with respect to vessel tortuosity. The experiments are conducted by randomly dividing data into 60 percent for training and 40 percent for testing. The experiments are repeated 10 times and average results are reported. The results show that the proposed system provides an efficient non-invasive technique to detect tortuous vessels and an important step towards detecting IRMA.
机译:视网膜眼底图像是通过专门设计的摄像机通过患者扩张的瞳孔获得的彩色图像。对这些图像的分析用于检测视网膜血管异常,以欣赏到特殊高血压或糖尿病视网膜病变的视网膜病变或严重程度。发生的常见又一次发生变化之一是血管形状的变化;因为血管不定期扭曲;更普遍称为曲折的增加。本文介绍了一种简单且合理的准确算法,可以通过确定一组特征来将船只分类为异常。本文提出了一种新的特征,以可靠地检测血管变化。所提出的方法使用一类SVM(OC-SVM),通常用于异常检测。使用OC-SVM的原因是与正常血管相比,曲折血管与曲折血管比率非常低,并且与正常血管相比,它们主要出现异常。 100个USFUS图像的本地数据集用于评估。数据集通常将血管,脉和动脉提取,作为地面真理,并且还包含关于血管曲折的注释。实验是通过将数据随机分割为60%进行培训,40%进行测试。重复该实验10次,并报告了平均结果。结果表明,该系统提供了一种有效的非侵入性技术来检测曲折的船舶和朝着检测IRMA的重要一步。

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