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A population-based tissue probability map-driven level set method for fully automated mammographic density estimations

机译:基于人口的组织概率图驱动的水平集方法,用于全自动乳腺X射线摄影密度估计

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Purpose: A major challenge when distinguishing glandular tissues on mamrnograms, especially for area-based estimations, lies in determining a boundary on a hazy transition zone from adipose to glandular tissues. This stems from the nature of mammography, which is a projection of superimposed tissues consisting of different structures. In this paper, the authors present a novel segmentation scheme which incorporates the learned prior knowledge of experts into a level set framework for fully automated mammographic density estimations.Methods: The authors modeled the learned knowledge as a population-based tissue probability map (PTPM) that was designed to capture the classification of experts' visual systems. The PTPM was constructed using an image database of a selected population consisting of 297 cases. Three mam-mogram experts extracted regions for dense and fatty tissues on digital mammograms, which was an independent subset used to create a tissue probability map for each ROI based on its local statistics. This tissue class probability was taken as a prior in the Bayesian formulation and was incorporated into a level set framework as an additional term to control the evolution and followed the energy surface designed to reflect experts' knowledge as well as the regional statistics inside and outside of the evolving contour.Results: A subset of 100 digital mammograms, which was not used in constructing the PTPM, was used to validate the performance. The energy was minimized when the initial contour reached the boundary of the dense and fatty tissues, as defined by experts. The correlation coefficient between mammographic density measurements made by experts and measurements by the proposed method was 0.93, while that with the conventional level set was 0.47.Conclusions: The proposed method showed a marked improvement over the conventional level set method in terms of accuracy and reliability. This result suggests that the proposed method successfully incorporated the learned knowledge of the experts' visual systems and has potential to be used as an automated and quantitative tool for estimations of mammographic breast density levels.
机译:目的:区分乳房X线照片上的腺组织时,尤其是对于基于区域的估计而言,主要挑战在于确定从脂肪组织到腺组织的朦胧过渡带上的边界。这源于乳房X线照相术的本质,这是由不同结构组成的叠加组织的投影。在本文中,作者提出了一种新颖的分割方案,该方案将专家的学到的先验知识整合到用于全自动乳房X线密度估计的水平集框架中。方法:作者将学到的知识建模为基于人群的组织概率图(PTPM)旨在捕获专家视觉系统的分类。 PTPM是使用包含297例病例的选定人群的图像数据库构建的。三位乳房X线照片专家在数字乳房X线照片上提取了密集和脂肪组织的区域,这是一个独立的子集,用于基于其本地统计信息为每个ROI创建组织概率图。该组织类别概率在贝叶斯公式中被视为先验,并被并入到一个水平集框架中,作为控制进化的附加术语,并遵循了能反映专家知识以及内部和外部区域统计信息的能量面。结果:使用100幅数字化乳腺X线照片的一个子集(未用于构建PTPM)来验证性能。根据专家的定义,当初始轮廓到达密集和脂肪组织的边界时,能量被最小化。专家进行的乳房X线密度测量与该方法测量的相关系数为0.93,而常规水平设置的相关系数为0.47。结论:与传统水平设置方法相比,该方法显示出显着改进。该结果表明,所提出的方法成功地融合了专家视觉系统的学习知识,并有可能被用作自动和定量的工具,以估计乳房X光检查的乳房密度。

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