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Multiresolution local binary pattern texture analysis combined with variable selection for application to false-positive reduction in computer-aided detection of breast masses on mammograms

机译:多分辨率局部二值模式纹理分析与变量选择相结合,可应用于乳腺X线照片上的乳腺肿块计算机辅助检测中的假阳性减少

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摘要

In this paper, a new and novel approach is designed for extracting local binary pattern (LBP) texture features from the computer-identified mass regions, aiming to reduce false-positive (FP) detection in a computerized mass detection framework. The proposed texture feature, the so-called multiresolution LBP feature, is well able to characterize the regional texture patterns of coreand margin regions of a mass, as well as to preserve the spatial structure information of the mass. In addition, to maximize a complementary effect on improving classification accuracy, multiresolution texture analysis has been incorporated into the extraction of LBP features. Further, SVM-RFE-based variable selection strategy is applied for selecting an optimal subset of variables of multiresolution LBP texture features to maximize the separation between breast masses and normal tissues. Extensive and comparative experiments have been conducted to evaluate the proposed method on two public benchmark mammogram databases (DBs). Experimental results show that the proposed multiresolution LBP features (extracted from automatically segmented mass boundaries) outperform other state-of-the-art texture features developed for FP reduction. Our results also indicate that combining our multiresolution LBP features with variable selection strategy is an effective solution for reducing FP signals in computer-aided detection (CAD) of mammographic masses.
机译:本文设计了一种新颖的方法,用于从计算机识别的质量区域中提取局部二进制图案(LBP)纹理特征,旨在减少计算机化质量检测框架中的假阳性(FP)检测。所提出的纹理特征,即所谓的多分辨率LBP特征,能够很好地表征块体的核心区域和边缘区域的区域纹理图案,以及保留块体的空间结构信息。此外,为了最大程度地提高改进分类精度的互补效果,多分辨率纹理分析已纳入LBP特征的提取中。此外,基于SVM-RFE的变量选择策略可用于选择多分辨率LBP纹理特征变量的最佳子集,以最大程度地增大乳房肿块与正常组织之间的距离。已经进行了广泛和比较的实验,以在两个公共基准乳房X线照片数据库(DB)上评估所提出的方法。实验结果表明,所提出的多分辨率LBP特征(从自动分割的质量边界中提取)优于为减少FP而开发的其他最新纹理特征。我们的结果还表明,将我们的多分辨率LBP功能与变量选择策略相结合,是减少乳腺X线摄影质量计算机辅助检测(CAD)过程中FP信号的有效解决方案。

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