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Parameter Estimation in Stochastic Mammogram Model by Heuristic Optimization Techniques

机译:基于启发式优化技术的随机乳腺X线照片模型参数估计

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The appearance of disproportionately large amounts of high-density breast parenchyma in mammograms has been found to be a strong indicator of the risk of developing breast cancer. Hence, the breast density model is popular for risk estimation or for monitoring breast density change in prevention or intervention programs. However, the efficiency of such a stochastic model depends on the accuracy of estimation of the model''s parameter set. We propose a new approach—heuristic optimization—to estimate more accurately the model parameter set as compared to the conventional and popular expectation-maximization (EM) algorithm. After initial segmentation of a given mammogram, the finite generalized Gaussian mixture (FGGM) model is constructed by computing the statistics associated with different image regions. The model parameter set thus obtained is estimated by particle swarm optimization (PSO) and evolutionary programming (EP) techniques, where the objective function to be minimized is the relative entropy between the image histogram and the estimated density distributions. When our heuristic approach was applied to different categories of mammograms from the Mini-MIAS database, it yielded lower floor of estimation error in 109 out of 112 cases (97.3%), and 101 out of 102 cases (99.0%), for the number of image regions being five and eight, respectively, with the added advantage of faster convergence rate, when compared to the EM approach. Besides, the estimated density model preserves the number of regions specified by the information-theoretic criteria in all the test cases, and the assessment of the segmentation results by radiologists is promising.
机译:在乳房X光照片中出现了不成比例的大量高密度乳腺实质,这是发生乳腺癌风险的有力指标。因此,在预防或干预计划中,乳房密度模型可用于风险评估或监测乳房密度变化。但是,这种随机模型的效率取决于模型参数集估计的准确性。我们提出了一种新的方法-启发式优化-与传统的和流行的期望最大化(EM)算法相比,可以更准确地估算模型参数集。在对给定的乳房X光照片进行初步分割之后,通过计算与不同图像区域相关的统计数据来构建有限广义高斯混合(FGGM)模型。这样获得的模型参数集通过粒子群优化(PSO)和进化规划(EP)技术进行估计,其中要最小化的目标函数是图像直方图和估计的密度分布之间的相对熵。当我们的启发式方法应用于Mini-MIAS数据库中的不同类别的乳房X线照片时,该数字在112例中的109例(97.3%)和102例中的101例(99.0%)中产生了较低的估计误差下限与EM方法相比,图像区域数量分别为5和8,具有收敛速度更快的优势。此外,估计的密度模型在所有测试案例中都保留了信息理论标准指定的区域数量,放射线医师对分割结果的评估是有希望的。

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