Efficient Diabetic Retinopathy Detection using Machine Learning Techniques

P. A, V. Dhanakoti
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引用次数: 1

Abstract

The medical technology has seen a tremendous growth in this century. Innovative high- end technologies that are created for health care benefits the patients as well as the medical professional in a wider perspective. Diabetes mellitus is a medical complaint among all age groups which occurs due to the increase in the blood sugar level. Diabetic retinopathy is said to be a symptomless diabetic eye illness which affects the retina of human eye and leads to blindness. It affects the retinal blood vessels. There is a growth of abnormal blood vessels in the retinal surface. Diabetic retinopathy can be detected using Ridge based vessel segmentation, Computer Driven Tracing of Vessel Network, Adaptive Local Thresholding it does not have uniform illuminations. Latest technological advancements in image processing provide a more efficient diagnosis of diabetic retinopathy with the help of feature extraction. The retinal scanned image is first pre-processed and feature extraction is done using HAAR wavelet Transform for the quantitative measure of the accuracy of the disease. The image is segmented and classified based on the training sets of data using SVM classifier. This process tends to provides more accuracy and about 98% sensitivity in+ the retinal classification.
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利用机器学习技术高效检测糖尿病视网膜病变
医学技术在本世纪有了巨大的发展。为医疗保健而创造的创新高端技术使患者和医疗专业人员在更广阔的视野中受益。糖尿病是所有年龄组的一种因血糖水平升高而发生的医学主诉。糖尿病视网膜病变是一种无症状的糖尿病性眼部疾病,它影响人眼的视网膜,导致失明。它影响视网膜血管。视网膜表面有异常血管生长。糖尿病视网膜病变的检测方法主要有基于Ridge的血管分割、计算机驱动的血管网络跟踪、自适应局部阈值分割等。最新的技术进步在图像处理提供了一个更有效的诊断糖尿病视网膜病变与特征提取的帮助。首先对视网膜扫描图像进行预处理,利用HAAR小波变换进行特征提取,定量衡量疾病的准确性。基于数据训练集,使用SVM分类器对图像进行分割和分类。这个过程倾向于提供更高的准确性和98%左右的视网膜分类灵敏度。
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