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Improving the performance of machine learning classifiers for Breast Cancer diagnosis based on feature selection

机译:基于特征选择提高用于乳腺癌诊断的机器学习分类器的性能

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This paper proposed a comprehensive algorithm for building machine learning classifiers for Breast Cancer diagnosis based on the suitable combination of feature selection methods that provide high performance over the Area Under receiver operating characteristic Curve (AUC). The new developed method allows both for exploring and ranking search spaces of image-based features, and selecting subsets of optimal features for feeding Machine Learning Classifiers (MLCs). The method was evaluated using six mammography-based datasets (containing calcifications and masses lesions) with different configurations extracted from two public Breast Cancer databases. According to the Wilcoxon Statistical Test, the proposed method demonstrated to provide competitive Breast Cancer classification schemes reducing the number of employed features for each experimental dataset.
机译:本文基于特征选择方法的适当组合,提出了一种构建用于乳腺癌诊断的机器学习分类器的综合算法,该算法在接收器工作特征曲线(AUC)下提供了高性能。新开发的方法既可以浏览和排序基于图像的特征的搜索空间,又可以选择最佳特征的子集来填充机器学习分类器(MLC)。使用六个基于乳腺摄影的数据集(包含钙化和肿块病变)对方法进行了评估,这些数据集具有从两个公共乳腺癌数据库中提取的不同配置。根据Wilcoxon统计测试,所提出的方法证明可以提供竞争性的乳腺癌分类方案,从而减少每个实验数据集所采用特征的数量。

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