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首页> 外文期刊>IEEE Transactions on Medical Imaging >Segmentation in Ultrasonic B-Mode Images of Healthy Carotid Arteries Using Mixtures of Nakagami Distributions and Stochastic Optimization
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Segmentation in Ultrasonic B-Mode Images of Healthy Carotid Arteries Using Mixtures of Nakagami Distributions and Stochastic Optimization

机译:使用Nakagami分布和随机优化混合物对健康颈动脉超声B型图像进行分割

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摘要

The goal of this work is to perform a segmentation of the intimamedia thickness (IMT) of carotid arteries in view of computing various dynamical properties of that tissue, such as the elasticity distribution (elastogram). The echogenicity of a region of interest comprising the intima-media layers, the lumen, and the adventitia in an ultrasonic B-mode image is modeled by a mixture of three Nakagami distributions. In a first step, we compute the maximum a posteriori estimator of the proposed model, using the expectation maximization (EM) algorithm. We then compute the optimal segmentation based on the estimated distributions as well as a statistical prior for disease-free IMT using a variant of the exploration/selection (ES) algorithm. Convergence of the ES algorithm to the optimal solution is assured asymptotically and is independent of the initial solution. In particular, our method is well suited to a semi-automatic context that requires minimal manual initialization. Tests of the proposed method on 30 sequences of ultrasonic B-mode images of presumably disease-free control subjects are reported. They suggest that the semi-automatic segmentations obtained by the proposed method are within the variability of the manual segmentations of two experts.
机译:这项工作的目的是对颈动脉的中膜厚度(IMT)进行分割,以计算该组织的各种动力学特性,例如弹性分布(弹性图)。超声B型图像中包含内膜中层,内腔和外膜的目标区域的回声性是由三种Nakagami分布的混合物建模的。第一步,我们使用期望最大化(EM)算法计算所提出模型的最大后验估计量。然后,我们使用估计/选择(ES)算法的变体,根据估计的分布以及无病IMT的统计先验来计算最佳分割。渐近确​​保ES算法收敛到最优解,并且与初始解无关。特别是,我们的方法非常适合需要最少手动初始化的半自动环境。报告了该方法对大概无病对照对象的30幅超声B型图像序列的测试结果。他们认为,通过所提出的方法获得的半自动分割在两名专家的手动分割的可变性之内。

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