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Particle filtering methods for motion analysis in tagged MRI

机译:用于标记MRI的运动分析的粒子滤波方法

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Myocardial tagging using magnetic resonance imaging (MRI) is a well-known noninvasive method for studying regional heart dynamics. While it offers great potential for quantitative analysis of a variety of kinematic and kinetic parameters, its clinical use has so far been limited, mainly due to mediocre performance of existing tag tracking algorithms under poor imaging conditions. In this paper we propose a new approach to tracking of MRI tag intersections. It is based on a Bayesian estimation framework, implemented by means of particle filtering, and combines information about heart dynamics, the imaging process, and tag appearance. Since at any time point it optimally incorporates all available information, it can be expected to be more robust and accurate. This is demonstrated by results of preliminary experiments on image sequences from (small) animal imaging studies.
机译:使用磁共振成像(MRI)进行心肌标记是研究区域心脏动力学的一种众所周知的非侵入性方法。尽管它为各种运动学和动力学参数的定量分析提供了巨大的潜力,但迄今为止,其临床应用受到了限制,这主要是由于现有标签跟踪算法在较差的成像条件下性能中等。在本文中,我们提出了一种跟踪MRI标签交叉点的新方法。它基于贝叶斯估计框架,通过粒子滤波实现,并结合了有关心脏动力学,成像过程和标签外观的信息。由于它在任何时间点都可以最佳地合并所有可用信息,因此可以期望它更加健壮和准确。通过(小型)动物成像研究的图像序列的初步实验结果证明了这一点。

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