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Segmentation of Plaques in Sequences of Ultrasonic B-Mode Images of Carotid Arteries Based on Motion Estimation and a Bayesian Model

机译:基于运动估计和贝叶斯模型的颈动脉超声B型图像序列斑块分割

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The goal of this paper is to perform a segmentation of atherosclerotic plaques in view of evaluating their burden and to provide boundaries for computing properties such as the plaque deformation and elasticity distribution (elastogram and modulogram). The echogenicity of a region of interest comprising the plaque, the vessel lumen, and the adventitia of the artery wall in an ultrasonic B-mode image was modeled by mixtures of three Nakagami distributions, which yielded the likelihood of a Bayesian segmentation model. The main contribution of this paper is the estimation of the motion field and its integration into the prior of the Bayesian model that included a local geometrical smoothness constraint, as well as an original spatiotemporal cohesion constraint. The Maximum A Posteriori of the proposed model was computed with a variant of the exploration/selection algorithm. The starting point is a manual segmentation of the first frame. The proposed method was quantitatively compared with manual segmentations of all frames by an expert technician. Various measures were used for this evaluation, including the mean point-to-point distance and the Hausdorff distance. Results were evaluated on $94$ sequences of $33$ patients (for a total of $8988$ images). We report a mean point-to-point distance of $0.24pm 0.08$ mm and a Hausdorff distance of $1.24pm 0.40$ mm. Our tests showed that the algorithm was not sensitive to the degree of stenosis or calcification.
机译:本文的目的是对动脉粥样硬化斑块进行分割,以评估其负担,并为计算斑块变形和弹性分布(弹性图和模量图)等属性提供边界。通过三个Nakagami分布的混合物对超声B型图像中包含斑块,血管腔和动脉壁外膜的目标区域的回声性进行建模,得出贝叶斯分割模型的可能性。本文的主要贡献是对运动场的估计,并将其整合到贝叶斯模型的先验中,该模型包括局部几何平滑度约束以及原始的时空内聚约束。使用探索/选择算法的变体计算了所提出模型的最大后验概率。起点是第一帧的手动分割。专家技术人员将提出的方法与所有帧的手动分割进行了定量比较。评估使用了各种方法,包括平均点对点距离和Hausdorff距离。对$ 33 $患者的$ 94 $序列进行了评估(总共$ 8988 $图像)。我们报告的平均点到点距离为$ 0.24pm 0.08 $ mm和Hausdorff距离为$ 1.24pm 0.40 $ mm。我们的测试表明,该算法对狭窄或钙化程度不敏感。

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