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Measurement and Classification Retinal Blood Vessel Tortuosity in Digital Fundus Images

机译:数字基底图像中的测量和分类视网膜血管曲折

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Analysis and detection of retinal blood vessels structure changes is the most important for diagnosing and detecting retinal diseases. Retinal blood vessels are normally straight or curved gently, but they tend to dilate and expand into twisting with age or the number of retinal disease. Tortuosity is a qualitative parameter used by ophthalmologist to show how blood vessels tortuos such as mild, moderate, severe and extreme as the analysis result remain subjective. To establish the relationship between tortuosity and vascular pathology requires quantitative measurement of tortuosity. This research developed a computer aided diagnosis (CAD) to detect retinal blood vessels before measure the blood vessels tortuosity and classify them. A method of morphological reconstruction is proposed to detect retinal blood vessels. Retinal blood vessel tortuosity was calculated using relative length variation method to classify retinal images. This research is conducted two types classification using K nearest neighbor. The first classification is normal and tortuosity classes. The second classification is moderate and severe tortuosity classes. The evaluation result for retinal blood vessel detection is obtained accuracy of 96.2%. Calculation of retinal blood vessel tortuosity based on relative length variation method because it has the best correlation of 0.892 to grading. The results of retinal blood vessel tortuosity classification between normal and tortuosity classes is obtained the best accuracy of KNN by 93%. The classification between moderate and severe tortuosity classes using KNN obtains accuracy of 100%. The proposed method can assist the ophthalmologist to detect blood vessels and calculate tortuosity of blood vessels to diagnose retinal diseases.
机译:视网膜血管结构的分析和检测变化是诊断和检测视网膜疾病最重要的变化。视网膜血管通常是直的或轻轻弯曲的,但它们倾向于以年龄或视网膜疾病的年龄或数量扩张并扩张。曲折性是眼科医生使用的定性参数,以展示如何在分析结果保持主观的血管豆科犬等血管玉米饼。建立曲折症与血管病理学之间的关系需要定量测量曲折化。本研究开发了一种计算机辅助诊断(CAD),以检测视网膜血管,然后测量血管曲折,并对它们进行分类。提出了一种形态重建方法来检测视网膜血管。使用相对长度的变化方法计算视网膜血管浆化,以分类视网膜图像。该研究使用K最近邻居进行了两种类型的分类。第一个分类是正常的和曲折课程。第二分类是中等和严重的曲折课程。视网膜血管检测的评价结果​​得到96.2%的精度。基于相对长度变化法的视网膜血管浆化计算,因为它具有0.892分级的最佳相关性。正常和曲折类别之间的视网膜血管曲折分类结果获得了KNN的最佳精度为93%。使用KNN的中等和严重曲折类之间的分类获得100%的精度。该方法可以帮助眼科医生检测血管并计算血管的曲折性以诊断视网膜疾病。

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