首页> 外文会议>IFIP 204; IFIP(International Federation for Information Processing) Conference on Artificial Intelligence Applications and Innovations(AIAI); 20060607-09; Athens(GR) >Computer Aided Diagnosis of CT Focal Liver Lesions based on Texture Features, Feature Selection and Ensembles of Classifiers
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Computer Aided Diagnosis of CT Focal Liver Lesions based on Texture Features, Feature Selection and Ensembles of Classifiers

机译:基于纹理特征,特征选择和分类器组合的CT局灶性肝病灶的计算机辅助诊断

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摘要

A computer aided diagnosis system aiming to classify liver tissue from computed tomography images is presented. For each region of interest five distinct sets of texture features were extracted. Two different ensembles of classifiers were constructed and compared. The first one consists of five Neural Networks (NNs), each using as input either one of the computed texture feature sets or its reduced version after feature selection. The second ensemble of classifiers was generated by combining five different type of primary classifiers, two NNs, and three k-nearest neighbor classifiers. The primary classifiers of the second ensemble used identical input vectors, which resulted from the combination of the five texture feature sets, either directly or after proper feature selection. The decision of each ensemble of classifiers was extracted by applying voting schemes.
机译:提出了一种计算机辅助诊断系统,旨在从计算机断层扫描图像对肝组织进行分类。对于每个感兴趣的区域,提取了五组不同的纹理特征。构造并比较了两个不同的分类器集合。第一个由五个神经网络(NN)组成,每个神经网络都使用计算出的纹理特征集之一或特征选择后的简化版本作为输入。分类器的第二集合是通过组合五个不同类型的主分类器,两个NN和三个k最近邻分类器而生成的。第二个集合的主要分类器使用相同的输入矢量,这些输入矢量是直接或在选择适当的特征之后将五个纹理特征集组合而成的。通过应用投票方案来提取每个分类器集合的决定。

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