Combination of different texture features for mammographic breast density classification

Gregoris Liasis, C. Pattichis, S. Petroudi
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引用次数: 25

Abstract

Mammographic breast density refers to the prevalence of fibroglandular tissue as it appears on a mammogram. Breast density is not only an important risk for developing breast cancer but can also mask abnormalities. Breast density information can be used for planning individualized screening and treatment. In this work, statistical distributions of different texture descriptors and their combination are investigated with Support Vector Machines (SVMs) for objective breast density classification: Scale Invariant Feature Transforms (SIFT), Local Binary Patterns (LBP) and texton histograms. SIFT is an approach for detecting and extracting local feature descriptors that are reasonably invariant to changes in illumination, image noise, rotation, scaling and small changes in viewpoint. The SIFT descriptor is a coarse descriptor of the edges found in the keypoints. LBPs provide a robust and computationally simple way for describing pure local binary patterns in a texture. They provide information regarding the prevalence of different edge patterns and uniformity. Textons are defined under the operational definition of clustered filter responses and provide a statistical and structural unifying approach for texture characterization. The breast density classification accuracy of the SVM classifiers modeled on the histograms of the three different sets of texture features separately and their combination is evaluated on the Medical Image Analysis Society (MIAS) mammographic database and the results are presented. The combination of the statistical distributions of all the different texture features allows for the highest classification accuracy, reaching over 93%.
结合不同纹理特征进行乳腺密度分级
乳房x线摄影的乳腺密度是指在乳房x线摄影上出现的纤维腺组织的患病率。乳腺密度不仅是患乳腺癌的重要风险因素,还可能掩盖异常情况。乳腺密度信息可用于规划个体化筛查和治疗。在这项工作中,研究了不同纹理描述符的统计分布及其组合,并使用支持向量机(svm)进行客观乳腺密度分类:尺度不变特征变换(SIFT)、局部二值模式(LBP)和纹理直方图。SIFT是一种检测和提取局部特征描述符的方法,这些特征描述符对光照、图像噪声、旋转、缩放和视点的微小变化具有一定的不变性。SIFT描述符是在关键点中找到的边缘的粗描述符。lbp提供了一种鲁棒且计算简单的方法来描述纹理中的纯局部二进制模式。它们提供了关于不同边缘模式和均匀性的流行情况的信息。在聚类滤波器响应的操作定义下定义纹理,为纹理表征提供了统计和结构上的统一方法。在美国医学图像分析学会(MIAS)乳腺图像数据库上,分别对三组不同纹理特征的直方图及其组合建模的SVM分类器的乳腺密度分类精度进行了评估,并给出了结果。所有不同纹理特征的统计分布的组合使得分类准确率最高,达到93%以上。
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