解决有序替代品的分类问题——以眼科应用为例

R. R. Islamova
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引用次数: 0

摘要

本研究旨在以确定原发性开角型青光眼的发展阶段为例,提出一种解决眼科领域中有序替代品分类问题的方法。材料和方法:该方法的开发是根据在乌法“优化”激光视力恢复中心观察的患者的详细病史进行的。该数据库代表了793名独特的患者。纳入分析的主要标准是诊断为“原发性开角型青光眼”(POAG) (H40.1)并符合相应的疾病分期。模型的训练采用有序回归的方法,其中运用了逆向选择的原则:先将所有变量纳入回归方程,然后按倒序排除统计不显著的变量。最佳模型的选择是基于信息标准的最小值。在分析预测精度时,对共轭矩阵进行了分析,并计算了每一类预测的精度度量。分类器的总体精度度量被定义为测试样本中代表的每个类的体积的加权平均值。此外,根据眼科医生的意见,每个类别的误差加权为0.9。结果:与原发性开角型青光眼的分期有显著相关性。该模型最能预测青光眼的第二阶段。这可以通过样本的大小来证明,因为超过40%的样本包括被诊断为二度青光眼的患者。青光眼分期分类器的总体加权准确率为0.602。结论:开发的解决方案可以加快和改进青光眼分期的确定程序,但需要进一步改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving classification problems for ordered alternatives on the example of application in ophthalmology
The aim of this study is to develop a solution to classification problems for ordered alternatives in the field of ophthalmology by the example of determining the stages of development of primary open-angle glaucoma. Materials and methods: the development of the method was carried out based on a detailed medical history of patients who were under observation at the Center for Laser Vision Restoration “Optimed”, Ufa. The database represents 793 unique patients. The main criterion for inclusion in the analysis was the diagnosis of “Primary open-angle glaucoma” (POAG) (H40.1) with the appropriate stage of the disease. The model was trained by the method of ordered regressions, in which the principle of reverse selection was used:__ all variables were included in the regression equation, and then statistically insignificant variables were excluded in the reverse order. The selection of the best model was made based on the minimum values of the information criteria Akaike, Schwartz. When analyzing the accuracy of the prediction, the conjugacy matrix was analyzed and the accuracy metric for each class was calculated. The overall accuracy metric of the classifier was defined as the weighted average of the volumes of each class represented in the test sample. Also, based on the ophthalmologists’ opinion, errors for each class were weighted by 0.9. Results: significantly associated with the stage of primary open-angle glaucoma disease were identified. The model best predicts the second stage of glaucoma. This can be justified by the size of the sample, since more than 40 percent of the sample included patients who were diagnosed with second-degree glaucoma. The overall weighted accuracy of the glaucoma stage classifier is 0.602. Conclusion: the developed solution allows you to speed up and improve the procedure for determining the stage of glaucoma but requires further improvement.
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