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Thalassemic patient classification using a neural network and genetic programming

机译:使用神经网络和遗传程序对地中海贫血症患者进行分类

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This paper presents the use of a genetic programming (GP) system called STROGANOFF and a multilayer perceptron for thalassemic patient classification. The interested problem covers the test samples from normal subjects and that from different types of thalassemic patient and thalassemic trait. The features, which are the characteristics of red blood cell, reticulocyte and blood platelet extracted from the blood samples, are used as input to the classifiers. The results indicate that the performance of the GP-generated classification trees is approximately equal to that of the multilayer perceptrons with one hidden layer. In contrast, the multilayer perceptrons with two hidden layers outperform GP-generated classification trees. Nonetheless, the structure of the classification trees reveals that the characteristics of blood platelet have no effects on the classification performance. This helps to reduce the required input features for the task and make further improvements possible.
机译:本文介绍了遗传编程(GP)系统STROGANOFF和多层感知器在地中海贫血患者分类中的用途。感兴趣的问题包括来自正常受试者的测试样品以及来自不同类型的地中海贫血患者和地中海贫血性状的测试样品。从血样中提取的红细胞,网状细胞和血小板的特征即特征被用作分类器的输入。结果表明,GP生成的分类树的性能大约等于具有一个隐藏层的多层感知器的性能。相反,具有两个隐藏层的多层感知器的性能优于GP生成的分类树。尽管如此,分类树的结构表明血小板的特性对分类性能没有影响。这有助于减少任务所需的输入功能,并使进一步的改进成为可能。

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