Multimodal inference of articulated spine models from higher order energy functions of discrete MRFS

S. Kadoury, N. Paragios
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引用次数: 5

Abstract

In this paper, we introduce a novel approach based on higher order energy functions which have the ability to encode global structural dependencies to infer articulated 3D spine models to CT volume data. A personalized geometrical model is reconstructed from biplanar X-rays before spinal surgery in order to create a spinal column representation which is modeled by a series of intervertebral transformations based on rotation and translation parameters. The shape transformation between the standing and lying poses is then achieved through a Markov Random Field optimization graph, where the unknown variables are 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 are introduced to integrate consistency in regional curves. Optimization of model parameters in a multi-modal context is achieved using efficient linear programming and duality. A qualitative evaluation of the vertebra model alignment obtained from the proposed method gave promising results while the quantitative comparison to expert identification yields an accuracy of 1.8 ± 0.7 mm based on the localization of surgical landmarks.
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基于离散MRFS高阶能量函数的铰接脊柱模型多模态推断
在本文中,我们介绍了一种基于高阶能量函数的新方法,该方法具有编码全局结构依赖关系的能力,可以推断出关节三维脊柱模型到CT体积数据。在脊柱手术前,从双平面x射线重建个性化几何模型,以创建脊柱表示,该表示由一系列基于旋转和平移参数的椎间转换建模。然后通过马尔科夫随机场优化图实现站立和躺姿之间的形状转换,其中未知变量是应用于椎间转换的变形。单点电位和成对电位分别衡量数据的支持度和相邻椎骨之间的几何依赖性,而高阶团块则被引入到区域曲线的一致性积分中。利用有效的线性规划和对偶性实现了多模态环境下模型参数的优化。从该方法获得的椎体模型对齐的定性评价给出了令人满意的结果,而基于手术标志定位的定量比较与专家识别的准确性为1.8±0.7 mm。
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