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首页> 外文期刊>Computers in Biology and Medicine >Globally supported radial basis function based collocation method for evolution of level set in mass segmentation using mammograms
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Globally supported radial basis function based collocation method for evolution of level set in mass segmentation using mammograms

机译:基于全球支持的径向基函数基于乳房X线照片分段级别的水平演化的搭配方法

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Computer-aided detection systems play an important role for the detection of breast abnormalities using mammograms. Global segmentation of mass in mammograms is a complex process due to low contrast mammogram images, irregular shape of mass, speculated margins, and the presence of intensity variations of pixels. This work presents a new approach for mass detection in mammograms, which is based on the variational level set function. Mesh-free based radial basis function (RBF) collocation approach is employed for the evolution of level set function for segmentation of breast as well as suspicious mass region. The mesh-based finite difference method (FDM) is used in literature for evolution of level set function. This work also showcases a comparative study of mesh-free and mesh based approaches. An anisotropic diffusion filter is employed for enhancement of mammograms. The performance of mass segmentation is analyzed by computing statistical measures. Binarized statistical image features (BSIF) and variants of local binary pattern (LBP) are computed from the segmented suspicious mass regions. These features are given as input to the supervised support vector machine (SVM) classifier to classify suspicious mass region as mass (abnormal) or non-mass (normal) region. Validation of the proposed algorithm is done on sample mammograms taken from publicly available Mini-mammographic image analysis society (MIAS) and Digital Database for Screening Mammography (DDSM) datasets. Combined BSIF features perform better as compared to LBP variants with the performance reported as 97.12% sensitivity, 92.43% specificity, and 98% AUC with 5.12 FP/I on DDSM dataset; and 95.12% sensitivity, 92.41% specificity, and 95% AUC with 4.01FP/I on MIAS dataset.
机译:计算机辅助检测系统在使用乳房X线照片对乳房异常的检测起到重要作用。由于低对比度乳房X线图图像,不规则的质量,推测边缘以及像素的强度变化的存在,因此乳房X线图中的全局分割是一种复杂的过程。这项工作提出了一种新方法,用于乳房X线图中的质量检测,基于变分级别函数。基于网眼的径向基函数(RBF)搭配方法用于乳房分割的水平设定功能的演变和可疑质量区域。基于网格的有限差分方法(FDM)用于文献中的水平集功能的演变。这项工作还展示了基于网眼和基于网格的方法的比较研究。各向异性扩散滤波器用于增强乳房X线照片。通过计算统计措施来分析质量分割性能。二值化统计图像特征(BSIF)和局部二进制模式(LBP)的变体从分段的可疑质量区域计算。这些特征作为输入到监督支持向量机(SVM)分类器的输入,以将可疑质量区域分类为质量(异常)或非质量(正常)区域。验证所提出的算法在来自公开的迷你乳房X线图(MIS)和用于筛选乳房X线摄影(DDSM)数据集的数字数据库所采取的样本乳房X线照片上完成。组合的BSIF特征与LBP变体相比,性能报告为97.12%的灵敏度,92.43%的特异性和98%AUC,在DDSM数据集中的5.12 FP / i; 95.12%的灵敏度,92.41%的特异性和95%AUC,在MIS数据集上有4.01fp / i。

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