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Glaucoma Classification Model Based on GDx VCC Measured Parameters by Decision Tree

机译:基于决策树的GDx VCC测量参数的青光眼分类模型

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摘要

This study is to propose and evaluate the diagnostic accuracy of decision tree classifiers using the full set of standard GDx VCC measurements for classifying glaucoma in a Taiwan Chinese population. The classifiers were trained and tested using standard GDx VCC parameters from examinations of 74 subjects with glaucoma and 72 normal subjects. Six promising decision rules were generated from decision tree methods and the overall accuracy from tenfold cross validation was 0.801. Classification tree based on GDx VCC data promises to be a diagnostic tool in glaucoma disease. However, its exact clinical application in glaucoma practice should be retested. Further longitudinal study should address this issue.
机译:本研究旨在提出和评估决策树分类器的诊断准确性,该决策树分类器使用全套标准GDx VCC测量来对台湾华裔人群的青光眼进行分类。使用74例青光眼受试者和72例正常受试者的GDx VCC标准参数对分类器进行了训练和测试。通过决策树方法生成了六个很有希望的决策规则,十倍交叉验证的总体准确性为0.801。基于GDx VCC数据的分类树有望成为青光眼疾病的诊断工具。但是,应重新测试其在青光眼实践中的确切临床应用。进一步的纵向研究应解决这个问题。

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