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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Analysis of Co-Occurrence Texture Statistics as a Function of Gray-Level Quantization for Classifying Breast Ultrasound
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Analysis of Co-Occurrence Texture Statistics as a Function of Gray-Level Quantization for Classifying Breast Ultrasound

机译:同时出现的纹理统计数据作为灰度量化对乳腺超声分类的函数分析

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In this paper, we investigated the behavior of 22 co-occurrence statistics combined to six gray-scale quantization levels to classify breast lesions on ultrasound (BUS) images. The database of 436 BUS images used in this investigation was formed by 217 carcinoma and 219 benign lesions images. The region delimited by a minimum bounding rectangle around the lesion was employed to calculate the gray-level co-occurrence matrix (GLCM). Next, 22 co-occurrence statistics were computed regarding six quantization levels (8, 16, 32, 64, 128, and 256), four orientations (0$^{circ}$ , 45$^{circ}$ , 90$^{circ}$ , and 135$^{circ}$ ), and ten distances (1, 2,...,10 pixels). Also, to reduce feature space dimensionality, texture descriptors of the same distance were averaged over all orientations, which is a common practice in the literature. Thereafter, the feature space was ranked using mutual information technique with minimal-redundancy-maximal-relevance (mRMR) criterion. Fisher linear discriminant analysis (FLDA) was applied to assess the discrimination power of texture features, by adding the first $m$-ranked features to the classification procedure iteratively until all of them were considered. The area under ROC curve (AUC) was used as figure of merit to measure the performance of the classifier. It was observed that averaging texture descriptors of a same distance impacts negatively the classification performance, since the best AUC of 0.81 was achieved with 32 gray levels and 109 features. On the other hand, regarding the single texture features (i.e., without averaging procedure), the quantization level does not impact the discrimination power- since AUC=0.87 was obtained for the six quantization levels. Moreover, the number of features was reduced (between 17 and 24 features). The texture descriptors that contributed notably to distinguish breast lesions were contrast and correlation computed from GLCMs with orientation of 90$^{circ}$ and distance more than five pixels.
机译:在本文中,我们调查了22种共现统计数据的行为,并结合六个灰度量化级别对超声(BUS)图像上的乳腺病变进行分类。本研究中使用的436张BUS图像的数据库由217例癌和219例良性病变图像组成。使用病变周围最小边界矩形所界定的区域来计算灰度共现矩阵(GLCM)。接下来,针对六个量化级别(8、16、32、64、128和256),四个方向(0 $ ^ {circ} $,45 $ ^ {circ} $,90 $ ^)计算了22个共现统计信息{circ} $和135 $ ^ {circ} $),以及十个距离(1、2,...,10像素)。另外,为了减小特征空间的维数,将相同距离的纹理描述符在所有方向上取平均值,这在文献中是一种普遍的做法。然后,使用互信息技术以最小冗余最大相关性(mRMR)准则对特征空间进行排序。 Fisher线性判别分析(FLDA)用于评估纹理特征的辨别力,方法是在分类过程中反复添加第一个$ m $等级的特征,直到所有特征都考虑在内。 ROC曲线下的面积(AUC)用作衡量分类器性能的指标。可以观察到,对相同距离的纹理描述符求平均会对分类性能产生负面影响,因为使用32个灰度级和109个特征可以达到0.81的最佳AUC。另一方面,关于单个纹理特征(即,没有平均过程),由于对于六个量化级别获得了AUC = 0.87,因此量化级别不影响鉴别能力。此外,减少了特征数量(在17和24个特征之间)。明显有助于区分乳腺病变的纹理描述符是从GLCM计算出的对比度和相关性,其方向为90°,距离超过五个像素。

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