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Automatic prediction of Diabetic Retinopathy and Glaucoma through retinal image analysis and data mining techniques

机译:通过视网膜图像分析和数据挖掘技术自动预测糖尿病性视网膜病变和青光眼

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摘要

Application of computational techniques in the field of medicine has been an area of intense research in recent years. Diabetic Retinopathy and Glaucoma are two retinal diseases that are a major cause of blindness. Regular Screening for early disease detection has been a highly labor - and resource- intensive task. Hence automatic detection of these diseases through computational techniques would be a great remedy. In this paper, a novel computational approach for automatic disease detection is proposed that utilizes retinal image analysis and data mining techniques to accurately categorize the retinal images as Normal, Diabetic Retinopathy and Glaucoma affected. Three feature relevance and sixteen classification Algorithms were analyzed and used to identify the contributing features that gave better prediction results. Our results prove that C4.5 and random tree classification techniques generate the maximum multi-class categorization training accuracy of 100% in classifying 45 images from the Gold Standard Database. Moreover the Fisher's Ratio algorithm reveals the most minimal and optimal set of predictive features on the retinal image training data.
机译:近年来,计算技术在医学领域的应用一直是研究的热点。糖尿病性视网膜病和青光眼是造成失明的两个主要视网膜疾病。对早期疾病进行定期筛查是一项非常耗费人力和资源的工作。因此,通过计算技术自动检测这些疾病将是一个很好的解决方法。本文提出了一种新颖的自动疾病检测计算方法,该方法利用视网膜图像分析和数据挖掘技术将视网膜图像准确分类为正常,糖尿病性视网膜病变和青光眼感染。分析了三种特征相关性和十六种分类算法,并将其用于识别可提供更好预测结果的特征。我们的结果证明,在从“黄金标准数据库”中对45张图像进行分类时,C4.5和随机树分类技术可产生100%的最大多分类分类训练精度。此外,Fisher比率算法在视网膜图像训练数据上揭示了最小和最佳的预测特征集。

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