Medical image analysis an attempt for mammogram classification using texture based association rule mining

D. Deshpande, A. Rajurkar, R. Manthalkar
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引用次数: 12

Abstract

Breast cancer, the most common type of cancer in women is one of the leading causes of cancer deaths. Due to this, early detection of cancer is the major concern for cancer treatment. The most common screening test called mammography is useful for early detection of cancer. It has been proven that there is potential raise in the cancers detected due to consecutive reading of mammograms. But this approach is not monetarily viable. Therefore there is a significant need of computer aided detection systems which can produce intended results and assist medical staff for accurate diagnosis. In this research we made an attempt to build classification system for mammograms using association rule mining based on texture features. The proposed system uses most relevant GLCM based texture features of mammograms. New method is proposed to form associations among different texture features by judging the importance of different features. Resultant associations can be used for classification of mammograms. Experiments are carried out using MIAS Image Database. The performance of the proposed method is compared with standard Apriori algorithm. It is found that performance of proposed method is better due to reduction in multiple times scanning of database which results in less computation time. We also investigated the use of association rules in the field of medical image analysis for the problem of mammogram classification.
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医学图像分析:基于纹理的关联规则挖掘对乳房x光片分类的尝试
乳腺癌是妇女中最常见的癌症类型,也是癌症死亡的主要原因之一。因此,癌症的早期发现是癌症治疗的主要关注点。最常见的乳房x光检查对早期发现癌症很有用。已经证明,连续阅读乳房x光检查可能会增加发现癌症的几率。但这种方法在资金上并不可行。因此,迫切需要能够产生预期结果并协助医务人员进行准确诊断的计算机辅助检测系统。在这项研究中,我们尝试使用基于纹理特征的关联规则挖掘来构建乳房x线照片的分类系统。该系统使用了最相关的基于GLCM的乳房x线照片纹理特征。提出了一种通过判断不同纹理特征的重要性来形成纹理特征之间关联的新方法。由此产生的关联可用于乳房x线照片的分类。实验采用MIAS图像数据库进行。将该方法的性能与标准Apriori算法进行了比较。结果表明,该方法减少了对数据库的多次扫描,从而减少了计算时间,提高了算法的性能。我们还研究了在医学图像分析领域使用关联规则来解决乳房x线照片分类问题。
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