VISILAB, Engineering School, Universidad de Castilla-La Mancha, Spain.
RNASA-IMEDIR Group, Computer School, Universidade da Coruña, Spain.
Comput Methods Programs Biomed. 2014 Feb;113(2):569-84. doi: 10.1016/j.cmpb.2013.10.004. Epub 2013 Oct 28.
This paper describes a novel weighted voting tree classification scheme for breast density classification. Breast parenchymal density is an important risk factor in breast cancer. Moreover, it is known that mammogram interpretation is more difficult when dense tissue is involved. Therefore, automated breast density classification may aid in breast lesion detection and analysis. Several classification methods have been compared and a novel hierarchical classification procedure of combined classifiers with linear discriminant analysis (LDA) is proposed as the best solution to classify the mammograms into the four BIRADS tissue classes. The classification scheme is based on 298 texture features. Statistical analysis to test the normality and homoscedasticity of the data was carried out for feature selection. Thus, only features that are influenced by the tissue type were considered. The novel classification techniques have been incorporated into a CADe system to drive the detection algorithms and tested with 1459 images. The results obtained on the 322 screen-film mammograms (SFM) of the mini-MIAS dataset show that 99.75% of samples were correctly classified. On the 1137 full-field digital mammograms (FFDM) dataset results show 91.58% agreement. The results of the lesion detection algorithms were obtained from modules integrated within the CADe system developed by the authors and show that using breast tissue classification prior to lesion detection leads to an improvement of the detection results. The tools enhance the detectability of lesions and they are able to distinguish their local attenuation without local tissue density constraints.
本文提出了一种新的加权投票树分类方案,用于乳腺密度分类。乳腺实质密度是乳腺癌的一个重要危险因素。此外,众所周知,当涉及到致密组织时,乳腺 X 线摄影的解释更加困难。因此,自动乳腺密度分类可能有助于乳腺病变的检测和分析。已经比较了几种分类方法,并提出了一种新的分级分类程序,将线性判别分析(LDA)结合的分类器进行组合,作为将乳腺 X 线照片分类为四个 BI-RADS 组织类别的最佳解决方案。该分类方案基于 298 个纹理特征。进行了统计分析以测试数据的正态性和同方差性,以进行特征选择。因此,仅考虑受组织类型影响的特征。新的分类技术已被纳入 CADe 系统,以驱动检测算法,并使用 1459 张图像进行了测试。在 mini-MIAS 数据集的 322 张屏片乳腺 X 线摄影(SFM)上获得的结果表明,99.75%的样本被正确分类。在全数字化乳腺 X 线摄影(FFDM)数据集上的结果表明,有 91.58%的结果是一致的。使用作者开发的 CADe 系统集成的模块获得了病变检测算法的结果,表明在病变检测之前使用乳腺组织分类可以改善检测结果。这些工具提高了病变的可检测性,它们能够在没有局部组织密度限制的情况下区分病变的局部衰减。