首页> 外文期刊>Multimedia Tools and Applications >A hybrid hierarchical framework for classification of breast density using digitized film screen mammograms
【24h】

A hybrid hierarchical framework for classification of breast density using digitized film screen mammograms

机译:使用数字化胶片屏幕乳房X光照片对乳房密度进行分类的混合层次框架

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

In the present work, a hybrid hierarchical framework for classification of breast density using digitized film screen mammograms has been proposed. For designing of an efficient classification framework 480 MLO view digitized screen film mammographic images are taken from DDSM dataset. The ROIs of fixed size i.e. 128 x 128 pixels are cropped from the center area of the breast (i.e. the area where glandular ducts are prominent). A total of 292 texture features based on statistical methods, signal processing based methods and transform domain based methods are computed for each ROI. The computed feature vector is subjected to PCA for dimensionality reduction. The reduced feature space is fed to the classification module. In this work 4-class breast density classification has been conducted using hierarchical framework where the first classifier is used to classify an unknown test ROI into B-I/other class. If the test ROI is predicted as other class, it is inputted to second classifier for the classification into B-II/dense class. If the test ROI is predicted as belonging to dense class, it is inputted to classifier for the classification into B-III/B-IV class. In this work five hierarchical classifiers designs consisting of 3 PCA-kNN, 3 PCA-PNN, 3 PCA-ANN, 3 PCA-NFC and 3 PCA-SVM classifiers has been proposed. The obtained maximum OCA value is 80.4% using PCA-NFC in hierarchical approach. Further, the best performing individual classifiers are clubbed together in a hierarchical framework to design hybrid hierarchical framework for classification of breast density using digitized screen film mammograms. The proposed hybrid hierarchical framework yields the OCA value of 84.1%. The result achieved by the proposed hybrid hierarchical framework is quite promising and can be used in clinical environment for differentiation between different breast density patterns.
机译:在目前的工作中,已经提出了使用数字化胶片屏幕乳房X光照片对乳房密度进行分类的混合层次框架。为了设计有效的分类框架,从DDSM数据集中获取480 MLO视图的数字化屏幕胶片乳房X线照片。从乳房的中心区域(即腺管突出的区域)裁剪固定大小的ROI(即128 x 128像素)。基于统计方法,基于信号处理的方法和基于变换域的方法,总共为每个ROI计算了292个纹理特征。对计算出的特征向量进行PCA降维。减少的特征空间将馈送到分类模块。在这项工作中,已经使用分层框架进行了4级乳房密度分类,其中第一个分类器用于将未知测试ROI分类为B-1 /其他类。如果测试ROI被预测为其他类别,则将其输入到第二分类器以用于分类为B-II /密集类别。如果测试ROI被预测为属于密集类,则将其输入到分类器以用于分类为B-III / B-IV类。在这项工作中,提出了由3个PCA-kNN,3个PCA-PNN,3个PCA-ANN,3个PCA-NFC和3个PCA-SVM分类器组成的五个分层分类器设计。使用PCA-NFC分层方法获得的最大OCA值为80.4%。此外,性能最好的单个分类器在分层框架中组合在一起,以设计混合的分层框架,以使用数字化的屏幕胶片X线照片对乳房密度进行分类。提出的混合层次结构框架的OCA值为84.1%。所提出的混合分层框架所实现的结果是非常有希望的,并且可以在临床环境中用于区分不同的乳房密度模式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号