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A New Feature Ensemble with a Multistage Classification Scheme for Breast Cancer Diagnosis

机译:具有多级乳腺癌诊断的多级分类方案的新功能集合

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摘要

A new and effective feature ensemble with a multistage classification is proposed to be implemented in a computer-aided diagnosis (CAD) system for breast cancer diagnosis. A publicly available mammogram image dataset collected during the Image Retrieval in Medical Applications (IRMA) project is utilized to verify the suggested feature ensemble and multistage classification. In achieving the CAD system, feature extraction is performed on the mammogram region of interest (ROI) images which are preprocessed by applying a histogram equalization followed by a nonlocal means filtering. The proposed feature ensemble is formed by concatenating the local configuration pattern-based, statistical, and frequency domain features. The classification process of these features is implemented in three cases: a one-stage study, a two-stage study, and a three-stage study. Eight well-known classifiers are used in all cases of this multistage classification scheme. Additionally, the results of the classifiers that provide the top three performances are combined via a majority voting technique to improve the recognition accuracy on both two- and three-stage studies. A maximum of 85.47%, 88.79%, and 93.52% classification accuracies are attained by the one-, two-, and three-stage studies, respectively. The proposed multistage classification scheme is more effective than the single-stage classification for breast cancer diagnosis.
机译:提出了一种具有多级分类的新且有效的功能集合,用于在乳腺癌诊断的计算机辅助诊断(CAD)系统中实现。在医疗应用程序(IRMA)项目中收集的公共乳房X线图像数据集(IRMA)项目中收集,以验证建议的功能集合和多级分类。在实现CAD系统时,在通过应用直方图均衡之后的乳房X线图(ROI)图像的乳房X线图(ROI)图像上进行特征提取,然后是非识别均衡。所提出的特征集合是通过连接基于本地配置模式的,统计和频域特征来形成的。这些特征的分类过程是在三种情况下实施的:一阶段研究,两阶段的研究和三阶段的研究。在这种多级分类方案的所有情况下使用了八种着名的分类器。另外,提供前三种性能的分类器的结果通过大多数投票技术组合,以提高两阶段和三阶段研究的识别准确性。一阶段和三阶段的研究,最多可达85.47%,88.79%和93.52%的分类准确性。所提出的多级分类方案比乳腺癌诊断的单阶段分类更有效。

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