首页> 外文期刊>Journal of mechanics in medicine and biology >COMPUTER-BASED IDENTIFICATION OF CATARACT AND CATARACT SURGERY EFFICACY USING OPTICAL IMAGES
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COMPUTER-BASED IDENTIFICATION OF CATARACT AND CATARACT SURGERY EFFICACY USING OPTICAL IMAGES

机译:使用光学图像基于计算机的眼压和眼压手术识别

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摘要

The eyes are complex sensory organs, they are designed to capture images under varying light conditions. Eye disorders, such as cataract, among the elderly are a major health problem. Cataract is a painless clouding of the eye lens which develops over a long period of time. During this time, the eyesight gradually worsens. It can eventually lead to blindness and, is common in older people. In fact, about a third of people over 65 have cataracts in one or both eyes.In this paper, we made use of two types of classifiers for identification of normal, cataract (early and developed stage), and post-cataract eyes using features extracted from optical images. These classifiers are artificial neural network and support vector machine. A database of 174 subjects, using the cross-validation strategy, is used to test the effectiveness of both classifiers. We demonstrate a sensitivity of more than 90% for both of these classifiers. Furthermore, they have a specificity of 100% and, as such, the results obtained are very promising.The proposed feature extraction and classification systems are ready clinically to run on a large amount of data sets.
机译:眼睛是复杂的感觉器官,它们旨在在变化的光照条件下捕获图像。老年人中的眼睛疾病,例如白内障是主要的健康问题。白内障是一种很长一段时间内无痛的浑浊的晶状体。在此期间,视力逐渐恶化。它最终会导致失明,并且在老年人中很常见。实际上,在65岁以上的人中,约有三分之一的人的一只或两只眼睛患有白内障。在本文中,我们使用两种类型的分类器使用特征来识别正常,白内障(早期和发达阶段)和白内障后眼从光学图像中提取。这些分类器是人工神经网络和支持向量机。使用交叉验证策略的174个受试者的数据库用于测试两个分类器的有效性。我们证明这两个分类器的灵敏度均超过90%。此外,它们具有100%的特异性,因此,获得的结果非常有希望。拟议的特征提取和分类系统在临床上已准备好在大量数据集上运行。

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