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Reconstruction of Coronary Artery Centrelines from X-ray Rotational Angiography using a Probabilistic Mixture Model

机译:使用概率混合模型从X射线旋转血管造影术重建冠状动脉中心线

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Three-dimensional reconstructions of coronary arterial trees from X-ray rotational angiography (RA) images have the potential to compensate the limitations of RA due to projective imaging. Most of the existing model based reconstruction algorithms are either based on forward-projection of a 3D deformable model onto X-ray angiography images or back-projection of 2D information extracted from X-ray angiography images to 3D space for further processing. All of these methods have their shortcomings such as dependency on accurate 2D centreline segmentations. In this paper, the reconstruction is approached from a novel perspective, and is formulated as a probabilistic reconstruction method based on mixture model (MM) representation of point sets describing the coronary arteries. Specifically, it is assumed that the coronary arteries could be represented by a set of 3D points, whose spatial locations denote the Gaussian components in the MM. Additionally, an extra uniform distribution is incorporated in the mixture model to accommodate outliers (noise, over-segmentation etc.) in the 2D centreline segmentations. Treating the given 2D centreline segmentations as data points generated from MM, the 3D means, isotropic variance, and mixture weights of the Gaussian components are estimated by maximizing a likelihood function. Initial results from a phantom study show that the proposed method is able to handle outliers in 2D centreline segmentations, which indicates the potential of our formulation. Preliminary reconstruction results in the clinical data are also presented.
机译:通过X射线旋转血管造影(RA)图像对冠状动脉树进行三维重建,有可能补偿射影成像对RA的局限性。大多数现有的基于模型的重建算法都是基于3D变形模型在X射线血管造影图像上的正向投影,或者是从X射线血管造影图像提取的2D信息向3D空间的反投影以进行进一步处理。所有这些方法都有其缺点,例如依赖于精确的2D中心线分割。本文从新颖的角度进行重建,并将其描述为基于描述冠状动脉的点集的混合模型(MM)表示的概率重建方法。具体而言,假设冠状动脉可以由一组3D点表示,这些点的空间位置表示MM中的高斯分量。此外,混合模型中还加入了额外的均匀分布,以适应2D中心线分割中的离群值(噪声,过度分割等)。将给定的2D中心线分割视为由MM生成的数据点,可通过最大化似然函数来估算3D均值,各向同性方差和高斯分量的混合权重。幻像研究的初步结果表明,所提出的方法能够处理2D中心线分割中的离群值,这表明了我们公式化的潜力。还介绍了临床数据的初步重建结果。

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