Zhang Xin-Sheng
School of Management, Xi'an University of Architecture and Technology, Xi'an, Shaanxi 710055, China.
ScientificWorldJournal. 2014 Feb 9;2014:970287. doi: 10.1155/2014/970287. eCollection 2014.
In digital mammograms, an early sign of breast cancer is the existence of microcalcification clusters (MCs), which is very important to the early breast cancer detection. In this paper, a new approach is proposed to classify and detect MCs. We formulate this classification problem as sparse feature learning based classification on behalf of the test samples with a set of training samples, which are also known as a "vocabulary" of visual parts. A visual information-rich vocabulary of training samples is manually built up from a set of samples, which include MCs parts and no-MCs parts. With the prior ground truth of MCs in mammograms, the sparse feature learning is acquired by the l(P)-regularized least square approach with the interior-point method. Then we designed the sparse feature learning based MCs classification algorithm using twin support vector machines (TWSVMs). To investigate its performance, the proposed method is applied to DDSM datasets and compared with support vector machines (SVMs) with the same dataset. Experiments have shown that performance of the proposed method is more efficient or better than the state-of-art methods.
在数字乳腺钼靶图像中,微钙化簇(MCs)的存在是乳腺癌的早期迹象,这对早期乳腺癌检测非常重要。本文提出了一种新的方法来对MCs进行分类和检测。我们将这个分类问题表述为基于稀疏特征学习的分类,利用一组训练样本(也称为视觉部分的“词汇表”)来代表测试样本。从一组样本中手动构建一个视觉信息丰富的训练样本词汇表,这些样本包括MCs部分和非MCs部分。借助乳腺钼靶图像中MCs的先验真实情况,通过内点法的l(P)正则化最小二乘法获得稀疏特征学习。然后我们使用孪生支持向量机(TWSVMs)设计了基于稀疏特征学习的MCs分类算法。为了研究其性能,将所提出的方法应用于数字数据库乳房影像存档和通信系统(DDSM)数据集,并与同一数据集上的支持向量机(SVMs)进行比较。实验表明,所提出方法的性能比现有方法更高效或更好。