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Arteriovenous classification method using convolutional neural network for early detection of retinal vascular lesion

机译:基于卷积神经网络的动静脉分类方法及早发现视网膜血管病变

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摘要

Early detection of hypertension is important because hypertension leads to stroke and cardiovascular diseases.Hypertensive changes in the retina are diagnosed by measuring the arteriovenous ratio near the optic disc. Therefore,classification of arteries and veins is necessary for ratio measurement, and previous studies classified them by usingpixel-based features, such as pixel values, texture features, and shape features etc. For simplification of the classificationprocess, a convolutional neural network (CNN) was applied in this study. For evaluation of the classification process,CNN was tested using centerlines extracted manually in this study. As a result of a fourfold cross-validation with 40retinal images, the mean classification ratio of the arteries and veins was 98%. Furthermore, CNN was tested using thecenterlines of blood vessels automatically extracted using the CNN-based method for testing the fully automatic method.CNN classified 90% of blood vessels into arteries and veins in the arteriovenous ratio measurement zone. CNN had 30trained and 10 tested retinal images. This result may work as an important processing for abnormality detection.
机译:高血压的早期发现很重要,因为高血压会导致中风和心血管疾病。\ r \ n通过测量视盘附近的动静脉比率,可以诊断出视网膜的高血压变化。因此,\ r \ n对动脉和静脉进行分类对于比率测量是必要的,并且以前的研究使用\ r \ n基于像素的特征(例如像素值,纹理特征和形状特征等)对其进行了分类。为简化分类\在卷积过程中,使用了卷积神经网络(CNN)。为了评估分类过程,使用本研究中手动提取的中心线对\ r \ nCNN进行了测试。通过对40 \ r \视网膜图像进行四重交叉验证的结果,动脉和静脉的平均分类率为98%。此外,使用基于CNN的方法自动提取的血管中心线对CNN进行测试,以测试全自动方法。\ r \ nCNN在动静脉比率测量区域将90%的血管分类为动脉和静脉。 CNN有30个经过训练的视网膜图像和10个经过测试的视网膜图像。该结果可以用作异常检测的重要处理。

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  • 来源
    《International Forum on Medical Imaging in Asia 2019》|2019年|110501M.1-110501M.5|共5页
  • 会议地点 0277-786X;1996-756X
  • 作者单位

    Division of Electronic System Engineering, Graduate School of Engineering, the University of Shiga Prefecture, 2500 Hassaka-cho, Hikone, Shiga, Japan 522-8533 oh23hikawa@ec.usp.ac.jp;

    Department of Electronic System Engineering, School of Engineering, the University of Shiga Prefecture, 2500 Hassaka-cho, Hikone, Shiga, Japan 522-8533;

    Department of Electronic System Engineering, School of Engineering, the University of Shiga Prefecture, 2500 Hassaka-cho, Hikone, Shiga, Japan 522-8533;

    Department of Electronic System Engineering, School of Engineering, the University of Shiga Prefecture, 2500 Hassaka-cho, Hikone, Shiga, Japan 522-8533;

    Department Electrical, Electronic Computer Engineering, Faculty of Engineering, Gifu University, 1-1 Yanagido, Gifu, Japan 501-1194;

    Department Electrical, Electronic Computer Engineering, Faculty of Engineering, Gifu University, 1-1 Yanagido, Gifu, Japan 501-1194;

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  • 正文语种 eng
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