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Automatic Generation of Digital Anthropomorphic Phantoms from Simulated MRI Acquisitions

机译:自动生成模拟MRI采集的数字拟人偶像

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In SPECT imaging, motion from patient respiration and body motion can introduce image artifacts that may reduce the diagnostic quality of the images. Simulation studies using numerical phantoms with precisely known motion can help to develop and evaluate motion correction algorithms. Previous methods for evaluating motion correction algorithms used either manual or semi-automated segmentation of MRI studies to produce patient models in the form of XCAT Phantoms, from which one calculates the transformation and deformation between MRI study and patient model. Both manual and semi-automated methods of XCAT Phantom generation require expertise in human anatomy, with the semi-automated method requiring up to 30 minutes and the manual method requiring up to eight hours. Although faster than manual segmentation, the semi-automated method still requires a significant amount of time, is not replicable, and is subject to errors due to the difficulty of aligning and deforming anatomical shapes in 3D. We propose a new method for matching patient models to MRI that extends the previous semi-automated method by eliminating the manual non-rigid transformation. Our method requires no user supervision and therefore does not require expert knowledge of human anatomy to align the NURBs to anatomical structures in the MR image. Our contribution is employing the SIMRI MRI simulator to convert the XCAT NURBs to a voxel-based representation that is amenable to automatic non-rigid registration. Then registration is used to transform and deform the NURBs to match the anatomy in the MR image. We show that our automated method generates XCAT Phantoms more robustly and significantly faster than the previous semi-automated method.
机译:在SPECT成像中,患者呼吸和身体运动的运动可以引入可以降低图像诊断质量的图像伪影。使用具有精确已知运动的数值幻像的模拟研究可以有助于开发和评估运动校正算法。以前用于评估运动校正算法的方法使用MRI研究的手动或半自动分割,以产生XCAT幻像形式的患者模型,从中计算MRI研究和患者模型之间的转化和变形。手动和半自动方法的XCAT幻影产生都需要人类解剖学的专业知识,半自动方法需要最多30分钟,手动方法需要多达8小时。虽然比手动分割更快,但是半自动方法仍然需要大量的时间,而不是复制,并且由于难以对准和变形3D的解剖结构而受到错误。我们提出了一种通过消除手动非刚性变换来匹配患者模型,将患者模型与MRI匹配,以延长先前的半自动方法。我们的方法不需要用户监督,因此不需要人类解剖学的专家知识,以将NURBS对先生图像中的解剖结构。我们的贡献正在采用SIMRI MRI模拟器将XCAT NURBS转换为基于体素的代表,可用于自动非刚性注册。然后使用注册来转换和变形NURB以匹配MR图像中的解剖结构。我们表明我们的自动化方法更强大地生成XCAT幻像,比以前的半自动方法更快地更快地产生。

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