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首页> 外文期刊>Medical image analysis >Automatic inference of articulated spine models in CT images using high-order Markov Random Fields.
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Automatic inference of articulated spine models in CT images using high-order Markov Random Fields.

机译:使用高阶马尔可夫随机场自动推断CT图像中的脊柱模型。

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摘要

In this paper, we introduce a novel and efficient approach for inferring articulated 3D spine models from operative images. The problem is formulated as a Markov Random Field which has the ability to encode global structural dependencies to align CT volume images. A personalized geometrical model is first reconstructed from preoperative images before surgery, and subsequently decomposed as a series of intervertebral transformations based on rotation and translation parameters. The shape transformation between the standing and lying poses is achieved by optimizing the deformations applied to the intervertebral transformations. Singleton and pairwise potentials measure the support from the data and geometrical dependencies between neighboring vertebrae respectively, while higher-order cliques (groups of vertebrae) are introduced to integrate consistency in regional curves. Local vertebra modifications are achieved through a constrained mesh relaxation technique. Optimization of model parameters in a multimodal context is achieved using efficient linear programming and duality. Experimental and clinical evaluation of the vertebra model alignment obtained from the proposed method gave promising results. Quantitative comparison to expert identification yields an accuracy of 1.8+/-0.7mm based on the localization of surgical landmarks.
机译:在本文中,我们介绍了一种新颖且有效的方法,可从手术图像中推断出关节式3D脊柱模型。该问题被表述为马尔可夫随机场,它具有对全局结构依赖性进行编码以对齐CT体积图像的能力。首先从术前的术前图像重建个性化的几何模型,然后基于旋转和平移参数将其分解为一系列椎间变换。站立和躺姿之间的形状转换是通过优化应用于椎间转换的变形来实现的。单态势和成对势分别测量数据的支持和相邻椎骨之间的几何相关性,同时引入了高阶团(椎骨组)以在区域曲线中整合一致性。通过约束的网格松弛技术可实现局部椎骨修饰。使用高效的线性规划和对偶性可以实现多模式环境中模型参数的优化。从提出的方法获得的椎骨模型对准的实验和临床评估给出了可喜的结果。与专家鉴定的定量比较基于手术标志的定位,可得出1.8 +/- 0.7mm的精度。

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