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首页> 外文期刊>Journal of biomedical informatics. >Neural network-based system for early keratoconus detection from corneal topography.
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Neural network-based system for early keratoconus detection from corneal topography.

机译:基于神经网络的角膜地形图早期圆锥角膜检测系统。

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摘要

Some automatic methods have been proposed to identify keratoconus from corneal maps; among these methods, neural networks have proved to be useful. However, the identification of the early cases of this ocular disease remains a problem from both a diagnostic and a screening point of view. Another problem is whether a keratoconus screening must be performed taking into account both eyes of the same subject or each eye separately; hitherto, neural networks have only been used in the second alternative. In order to examine the differences of the two screening alternatives in terms of discriminative capability, several combinations of the number of input, hidden and output nodes and of learning rates have been examined in this study. The best results have been achieved by using as input the parameters of both eyes of the same subject and as output the three categories of clinical classification (normal, keratoconus, other alterations) for each subject, a low number of neurons in the hidden layer (lower than 10) and a learning rate of 0.1. In this case a global sensitivity of 94.1% (with a keratoconus sensitivity of 100%) in the test set as well as a global specificity of 97.6% (98.6% for keratoconus alone) have been reached.
机译:已经提出了一些自动方法来从角膜图识别圆锥角膜。在这些方法中,神经网络已被证明是有用的。然而,从诊断和筛查的角度来看,这种眼病的早期病例的鉴定仍然是一个问题。另一个问题是是否必须考虑同一对象的两只眼睛或分别考虑每只眼睛来进行圆锥角膜检查。迄今为止,仅在第二种选择中使用了神经网络。为了研究两种筛选方法在判别能力方面的差异,本研究研究了输入,隐藏和输出节点数量以及学习率的几种组合。通过使用同一受试者的两只眼睛的参数作为输入并输出每个受试者的三类临床分类(正常,圆锥角膜,其他改变),隐藏层中的神经元数量较少(低于10)和0.1的学习率。在这种情况下,测试集中的整体敏感性达到94.1%(圆锥角膜敏感性为100%),整体特异性达到97.6%(仅圆锥角膜为98.6%)。

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