Selection of optimal parameters for ECG diagnostic classification

P. de Chazal, B. Celler
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引用次数: 11

Abstract

The authors investigated the problem of selecting parameters for inclusion in neural networks for diagnostic classification of the Frank lead ECG as normal or one of six disease conditions. A database of 486 100% accurate classified cases was randomly divided into a training set (67%) and a test set (33%). Using a total of 274 parameters as well as the age and sex data the authors determined the discriminating power of each parameter with receiver operator characteristic analysis as well as the rank correlation of all possible parameter pairs. On the basis of the discriminating power and rank correlation, a number of different parameter selection schemes were considered. The authors achieved best classification rates on the test data set by selecting parameters which were maximally discriminating and non correlated.
心电诊断分类的最佳参数选择
作者研究了将Frank导联心电图诊断分类为正常或六种疾病之一的神经网络参数选择问题。数据库中486例100%准确的分类病例被随机分为训练集(67%)和测试集(33%)。作者利用274个参数以及年龄和性别数据,通过接收算子特征分析和所有可能参数对的秩相关来确定每个参数的判别能力。在区分能力和等级相关性的基础上,考虑了多种不同的参数选择方案。作者通过选择最具判别性且不相关的参数,在测试数据集上获得了最佳的分类率。
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