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Feature subset selection for classification of malignant and benign breast masses in digital mammography

机译:数字乳腺摄影中特征子集选择用于对恶性和良性乳腺肿块进行分类

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摘要

Computer-aided diagnosis of breast cancer is becoming increasingly a necessity given the exponential growth of performed mammograms. In particular, the breast mass diagnosis and classification arouse nowadays a great interest. Texture and shape are the most important criteria for the discrimination between benign and malignant masses. Various features have been proposed in the literature for the characterization of breast masses. The performance of each feature is related to its ability to discriminate masses from different classes. The feature space may include a large number of irrelevant ones which occupy a lot of storage space and decrease the classification accuracy. Therefore, a feature selection phase is usually needed to avoid these problems. The main objective of this paper is to select an optimal subset of features in order to improve masses classification performance. First, a study of various descriptors which are commonly used in the breast cancer field is conducted. Then, selection techniques are used in order to determine the most relevant features. A comparative study between selected features is performed in order to test their ability to discriminate between malignant and benign masses. The database used for experiments is composed of mammograms from the MiniMIAS database. Obtained results show that Gray-Level Run-Length Matrix features provide the best result.
机译:鉴于已执行的乳房X线照片呈指数增长,因此计算机辅助诊断乳腺癌变得越来越有必要。特别地,当今引起乳房肿块的诊断和分类。纹理和形状是区分良恶性肿块的最重要标准。在文献中已经提出了各种特征来表征乳腺肿块。每个特征的性能都与它区分不同类别的质量的能力有关。特征空间可能包括大量不相关的特征,这些不相关的特征占据了大量的存储空间并降低了分类精度。因此,通常需要特征选择阶段来避免这些问题。本文的主要目的是选择特征的最佳子集,以改善质量分类性能。首先,对乳腺癌领域中常用的各种描述符进行了研究。然后,使用选择技术以确定最相关的特征。为了测试所选特征区分恶性肿块和良性肿块的能力,进行了比较研究。用于实验的数据库由MiniMIAS数据库的乳房X线照片组成。获得的结果表明,灰度游程矩阵功能可提供最佳结果。

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