乳房x光照片中乳腺组织密度的建模和分类

Anna Bosch, X. Muñoz, A. Oliver, J. Martí
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引用次数: 104

摘要

我们提出了一种新的方法来建模和分类乳腺实质组织。给定一张乳房x光片,首先,我们将以一种无监督的方式发现不同组织密度的分布,其次,我们将使用这种组织分布来进行分类。我们使用基于局部描述符和概率潜在语义分析(pLSA)的分类器来实现这一点,pLSA是一种来自统计文本文献的生成模型。我们研究了不同描述符如纹理和SIFT特征在分类阶段的影响,结果表明纹理在所有情况下都优于SIFT。此外,我们证明了pLSA自动提取有意义的潜在方面,根据它们的密度生成紧凑的组织表示,有助于区分乳房x线照片分类。我们展示了在MIAS和DDSM数据集上的组织分类结果。我们将我们的方法与对这些相同数据集进行分类的方法进行比较,显示出我们的建议的更好性能。
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Modeling and Classifying Breast Tissue Density in Mammograms
We present a new approach to model and classify breast parenchymal tissue. Given a mammogram, first, we will discover the distribution of the different tissue densities in an unsupervised manner, and second, we will use this tissue distribution to perform the classification. We achieve this using a classifier based on local descriptors and probabilistic Latent Semantic Analysis (pLSA), a generative model from the statistical text literature. We studied the influence of different descriptors like texture and SIFT features at the classification stage showing that textons outperform SIFT in all cases. Moreover we demonstrate that pLSA automatically extracts meaningful latent aspects generating a compact tissue representation based on their densities, useful for discriminating on mammogram classification. We show the results of tissue classification over the MIAS and DDSM datasets. We compare our method with approaches that classified these same datasets showing a better performance of our proposal.
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