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首页> 外文期刊>Computers in Biology and Medicine >Fast and efficient lung disease classification using hierarchical one-against-all support vector machine and cost-sensitive feature selection
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Fast and efficient lung disease classification using hierarchical one-against-all support vector machine and cost-sensitive feature selection

机译:使用分层的对抗所有支持向量机和成本敏感的特征选择,快速有效地进行肺疾病分类

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摘要

To improve time and accuracy in differentiating diffuse interstitial lung disease for computer-aided quantification, we introduce a hierarchical support vector machine which selects a class by training a binary classifier at each node in a hierarchy, thus allowing each classifier to use a class-specific quasi-optimal feature set. In addition, the computational cost-sensitive group-feature selection criterion combined with the sequential forward selection is applied in order to obtain a useful and computationally inexpensive quasi-optimal feature set for the purpose of accelerating the classification time. The classification time was reduced by up to 57 and the overall accuracy was significantly improved in comparison with the one-against-all and one-against-one support vector machine methods with sequential forward selection (paired t-test, p<0.001). The reduction of classification time as well as the improvement of overall accuracy demonstrates promise for the proposed classification method to be adopted in various real-time and on-line image-based clinical applications.
机译:为了提高区分弥漫性间质性肺疾病以进行计算机辅助量化的时间和准确性,我们引入了一种层次支持向量机,该机器通过在层次结构的每个节点上训练二元分类器来选择一个类别,从而允许每个分类器使用特定于类别的准最佳特征集。另外,应用计算成本敏感的组特征选择标准与顺序前向选择相结合,以便获得有用且计算便宜的准最佳特征集,以加速分类时间。与采用顺序正向选择(配对t检验,p <0.001)的一对一支持向量法和一对一支持向量机方法相比,分类时间减少了多达57个,并且整体准确性显着提高。分类时间的减少以及整体准确性的提高证明了所提出的分类方法有望在各种基于实时和在线图像的临床应用中被采用。

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