利用灰色共生矩阵、决策树分类和进化特征选择进行乳腺癌诊断

Hanif Yaghoobi, Alireza Ghahramani Barandagh, Zhila Mohammadi
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引用次数: 2

摘要

乳腺癌是女性中最普遍的癌症。乳腺癌是妇女癌症死亡的第二大原因。每年每10万名妇女中有124.8例新发乳腺癌病例。每年每10万名妇女中有21.9人死亡。这些比率是根据2008-2012年的病例和死亡进行年龄调整的。这占所有新发癌症病例的12%,占所有女性癌症病例的25%。传统的乳腺癌诊断方法包括活检、乳房x线摄影、热成像和超声成像。在这些方法中,乳房x光检查是早期诊断乳腺癌最有效的方法。检测乳腺癌和对乳房x光影像进行分类是诊断乳腺癌的标准临床程序。为了对乳房x线摄影进行分类,提供了基于计算机的自动检测方法。本研究使用灰度共生矩阵和累积直方图特征。我们还使用决策树作为分类器系统。然后,我们引入了一种称为“帝国主义竞争算法的离散版本”的新算法作为离散空间中的全局优化算法,并使用该算法从提取的特征中寻找最佳特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breast Cancer diagnosis using, grey-level co-occurrence matrices, decision tree classification and evolutionary feature selection
Breast Cancer is the most widespread Cancer among women. Breast cancer is the second leading cause of cancer death in women. The number of new cases of breast cancer was 124.8 per 100,000 women per year. The number of deaths was 21.9 per 100,000 women per year. These rates are age-adjusted and based on 2008-2012 cases and deaths. This represents about 12% of all new cancer cases and 25% of all cancers in women. Conventional diagnosis methods of Breast Cancer include biopsy, mammography thermography, and Ultrasound imaging. Among these methods, mammography is the most efficient method for the early diagnosis of Breast Cancer. Detecting Breast Cancer and classifying mammography images are the standard clinical procedures for the diagnosis of Breast Cancer. In order to classify mammography, is provided automated computer-based detection methods. In this study, Gray-Level Co-occurrence Matrix and Cumulative Histogram features were used. We also use a Decision Tree as a classifier system. Then we introduce a new algorithm that called "Discrete Version of Imperialist Competitive Algorithm" as a global optimization algorithm in discrete space, and we use this algorithm for finding the best features of the extracted features.
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