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首页> 外文期刊>Studies in Health Technology and Informatics >Diagnostic Support for Glaucoma Using Retinal Images: A Hybrid Image Analysis and Data Mining Approach
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Diagnostic Support for Glaucoma Using Retinal Images: A Hybrid Image Analysis and Data Mining Approach

机译:使用视网膜图像对青光眼的诊断支持:混合图像分析和数据挖掘方法

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摘要

The availability of modern imaging techniques such as Confocal Scanning Laser Tomography (CSLT)for capturing high-quality optic nerve images offer the potential for developing automatic and objective methods for diagnosing glaucoma. We present a hybrid approach that features the analysis of CSLT images using moment methods to derive abstract image defining features. The features are then used to train classifers for automatically distinguishing CSLT images of normal and glaucoma patient. As a first, in this paper, we present investigations in feature subset selction methods for reducing the relatively large input space produced by the moment methods. We use neural networks and support vector machines to determine a sub-set of moments that offer high classification accuracy. We demonstratee the efficacy of our methods tc discriminate between healthy and glaucomatous optic disks based on shape information automatically derived from optic disk topography and reflectance images.
机译:诸如共焦扫描激光断层扫描(CSLT)等现代成像技术可用于捕获高质量的视神经图像,为开发自动和客观的青光眼诊断方法提供了潜力。我们提出了一种混合方法,其特征在于使用矩量法分析CSLT图像,以得出抽象的图像定义特征。然后使用这些功能训练分类器,以自动区分正常和青光眼患者的CSLT图像。首先,本文介绍了特征子集选择方法的研究,以减少矩量法产生的相对较大的输入空间。我们使用神经网络和支持向量机来确定具有较高分类精度的矩子集。我们展示了我们的方法的有效性,该方法基于自动从视盘地形和反射图像得出的形状信息来区分健康眼和青光眼视盘。

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