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Two-Dimensional ARMA Modeling for Breast Cancer Detection and Classification

机译:乳腺癌检测和分类的二维arma建模

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Computer aided diagnosis (CAD) paradigms have gained currency for discriminating malignant from benign lesions in ultrasound breast images. But even the most sophisticated investigators often rely on one-dimensional representations of the image in terms of its scanlines. Such vector representations are convenient because of the mathematical tractability of one-dimensional time-series. However, they fail to take into account the spatial correlations between the pixels, which is crucial in tumor detection and classification in breast images. In this paper, we propose a CAD system for tumor detection and classification (cancerous v.s. benign) in ultrasound breast images based on a two-dimensional Auto-Regressive-Moving-Average (ARMA) model of the breast image. First, we show, using the Wold decomposition theorem, that ultrasound breast images can be accurately modeled by two-dimensional ARMA random fields. As in the 1D case, the 2D ARMA parameter estimation problem is much more difficult than its 2D AR counterpart, due to the non-linearity in estimating the 2D moving average (MA) parameters. We propose to estimate the 2D ARMA parameters using a two-stage Yule-Walker Least-Squares algorithm. The estimated parameters are then used as the basis for statistical inference and biophysical interpretation of the breast image. We evaluate the performance of the 2D ARMA vector features in real ultrasound images using a k-means classifier. Our results suggest that the proposed CAD system based on a two-dimensional ARMA model leads to parameters that can accurately segment the ultrasound breast image into three regions: healthy tissue, benign tumor, and cancerous tumor. Moreover, the specificity and sensitivity of the proposed two-dimensional CAD system is superior to its one-dimensional homologue.
机译:计算机辅助诊断(CAD)范式已经用于识别从良性病变的超声乳腺图像恶性上涨的货币。但即使是最复杂的调查往往在其扫描线方面依赖于图像的一维表示。这样的矢量表示是因为一维时间序列的数学易处理的方便。然而,他们未能考虑到像素,这是在肿瘤的检测和分类在乳房图像关键之间的空间相关性。在本文中,我们提出了肿瘤的检测和分类在超声乳腺图像基于乳房图像的二维自回归 - 移动平均(ARMA)模型的CAD系统(癌V.S.良性)。首先,我们证明,使用尔德分解定理,即超声乳腺图像可以精确地二维ARMA随机建模领域。如在一维情况下,2D ARMA参数估计问题是比其2D AR对应要困难得多,由于在估计2D移动平均(MA)参数的非线性。我们建议使用估计两阶段尤拉 - 沃克最小二乘法的二维ARMA参数。然后,将估计的参数被用作用于统计推断和乳房图像的生物物理解释的基础。我们评估二维ARMA载体的性能使用k均值分类实时超声图像特征。我们的研究结果表明,基于二维ARMA模型导致参数所提出的CAD系统,可以准确地细分超声波乳房图像分成三个区域:健康组织,良性肿瘤和癌症肿瘤。此外,特异性和灵敏度提出二维CAD系统优于其的一维同源物。

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