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Multi-parametric optic disc segmentation using superpixel based feature classification

机译:基于超像素特征分类的多参数光盘分割

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Glaucoma along with diabetic retinopathy is a major cause of vision blindness and is projected to affect over 80 million people by 2020. Recently, expert systems have matched human performance in disease diagnosis and proven to be highly useful in assisting medical experts in the diagnosis and detection of diseases. Hence, automated optic disc detection through intelligent systems is vital for early diagnosis and detection of Glaucoma. This paper presents a multi-parametric optic disk detection and localization method for retinal fundus images using region-based statistical and textural features. Highly discriminative features are selected based on the mutual information criterion and a comparative analysis of four benchmark classifiers: Support Vector Machine, Random Forest (RF), AdaBoost and RusBoost is presented. The results of the proposed RF classifier based pipeline demonstrate its highly competitive performance (accuracies of 0.993, 0.988 and 0.993 on the DRIONS, MESSIDOR and ONHSD databases) with the stateof-the-art, thus making it a suitable candidate for patient management systems for early diagnosis of the Glaucoma. (C) 2018 Elsevier Ltd. All rights reserved.
机译:青光眼与糖尿病性视网膜病是视力失明的主要原因,预计到2020年将影响8000万人。近来,专家系统已经与人类在疾病诊断中的表现相匹配,并被证明在协助医学专家进行诊断和检测方面非常有用疾病。因此,通过智能系统进行自动光盘检测对于青光眼的早期诊断和检测至关重要。本文提出了一种基于区域的统计和纹理特征的视网膜眼底图像多参数光盘检测和定位方法。根据互信息标准选择具有高度区分性的特征,并比较了四个基准分类器:支持向量机,随机森林(RF),AdaBoost和RusBoost。拟议中的基于RF分类器的管道的结果证明了其具有最新技术的高度竞争性能(在DRIONS,MESSIDOR和ONHSD数据库上的精度为0.993、0.988和0.993),因此使其非常适合用于以下患者管理系统青光眼的早期诊断。 (C)2018 Elsevier Ltd.保留所有权利。

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